Chapter 2. Know Your Data.ppt

Subrata Kumer Paul
Subrata Kumer PaulAssistant Professor, Dept. of CSE, BAUET em Subrata Kumer Paul
1
Data Mining:
Concepts and Techniques
Chapter 2
Subrata Kumer Paul
Assistant Professor, Dept. of CSE, BAUET
sksubrata96@gmail.com
2
Chapter 2: Getting to Know Your Data
 Data Objects and Attribute Types
 Basic Statistical Descriptions of Data
 Data Visualization
 Measuring Data Similarity and Dissimilarity
 Summary
3
Types of Data Sets
 Record
 Relational records
 Data matrix, e.g., numerical matrix,
crosstabs
 Document data: text documents: term-
frequency vector
 Transaction data
 Graph and network
 World Wide Web
 Social or information networks
 Molecular Structures
 Ordered
 Video data: sequence of images
 Temporal data: time-series
 Sequential Data: transaction sequences
 Genetic sequence data
 Spatial, image and multimedia:
 Spatial data: maps
 Image data:
 Video data:
Document 1
season
timeout
lost
wi
n
game
score
ball
pla
y
coach
team
Document 2
Document 3
3 0 5 0 2 6 0 2 0 2
0
0
7 0 2 1 0 0 3 0 0
1 0 0 1 2 2 0 3 0
TID Items
1 Bread, Coke, Milk
2 Beer, Bread
3 Beer, Coke, Diaper, Milk
4 Beer, Bread, Diaper, Milk
5 Coke, Diaper, Milk
4
Important Characteristics of Structured
Data
 Dimensionality
 Curse of dimensionality
 Sparsity
 Only presence counts
 Resolution
 Patterns depend on the scale
 Distribution
 Centrality and dispersion
5
Data Objects
 Data sets are made up of data objects.
 A data object represents an entity.
 Examples:
 sales database: customers, store items, sales
 medical database: patients, treatments
 university database: students, professors, courses
 Also called samples , examples, instances, data points,
objects, tuples.
 Data objects are described by attributes.
 Database rows -> data objects; columns ->attributes.
6
Attributes
 Attribute (or dimensions, features, variables):
a data field, representing a characteristic or feature
of a data object.
 E.g., customer _ID, name, address
 Types:
 Nominal
 Binary
 Numeric: quantitative
 Interval-scaled
 Ratio-scaled
7
Attribute Types
 Nominal: categories, states, or “names of things”
 Hair_color = {auburn, black, blond, brown, grey, red, white}
 marital status, occupation, ID numbers, zip codes
 Binary
 Nominal attribute with only 2 states (0 and 1)
 Symmetric binary: both outcomes equally important
 e.g., gender
 Asymmetric binary: outcomes not equally important.
 e.g., medical test (positive vs. negative)
 Convention: assign 1 to most important outcome (e.g., HIV
positive)
 Ordinal
 Values have a meaningful order (ranking) but magnitude between
successive values is not known.
 Size = {small, medium, large}, grades, army rankings
8
Numeric Attribute Types
 Quantity (integer or real-valued)
 Interval
 Measured on a scale of equal-sized units
 Values have order
 E.g., temperature in C˚or F˚, calendar dates
 No true zero-point
 Ratio
 Inherent zero-point
 We can speak of values as being an order of
magnitude larger than the unit of measurement
(10 K˚ is twice as high as 5 K˚).
 e.g., temperature in Kelvin, length, counts,
monetary quantities
9
Discrete vs. Continuous Attributes
 Discrete Attribute
 Has only a finite or countably infinite set of values
 E.g., zip codes, profession, or the set of words in a
collection of documents
 Sometimes, represented as integer variables
 Note: Binary attributes are a special case of discrete
attributes
 Continuous Attribute
 Has real numbers as attribute values
 E.g., temperature, height, or weight
 Practically, real values can only be measured and
represented using a finite number of digits
 Continuous attributes are typically represented as
floating-point variables
10
Chapter 2: Getting to Know Your Data
 Data Objects and Attribute Types
 Basic Statistical Descriptions of Data
 Data Visualization
 Measuring Data Similarity and Dissimilarity
 Summary
11
Basic Statistical Descriptions of Data
 Motivation
 To better understand the data: central tendency,
variation and spread
 Data dispersion characteristics
 median, max, min, quantiles, outliers, variance, etc.
 Numerical dimensions correspond to sorted intervals
 Data dispersion: analyzed with multiple granularities
of precision
 Boxplot or quantile analysis on sorted intervals
 Dispersion analysis on computed measures
 Folding measures into numerical dimensions
 Boxplot or quantile analysis on the transformed cube
12
Measuring the Central Tendency
 Mean (algebraic measure) (sample vs. population):
Note: n is sample size and N is population size.
 Weighted arithmetic mean:
 Trimmed mean: chopping extreme values
 Median:
 Middle value if odd number of values, or average of
the middle two values otherwise
 Estimated by interpolation (for grouped data):
 Mode
 Value that occurs most frequently in the data
 Unimodal, bimodal, trimodal
 Empirical formula:



n
i
i
x
n
x
1
1




 n
i
i
n
i
i
i
w
x
w
x
1
1
width
freq
l
freq
n
L
median
median
)
)
(
2
/
(
1




)
(
3 median
mean
mode
mean 



N
x



September 24, 2023 Data Mining: Concepts and Techniques 13
Symmetric vs. Skewed
Data
 Median, mean and mode of
symmetric, positively and
negatively skewed data
positively skewed negatively skewed
symmetric
14
Measuring the Dispersion of Data
 Quartiles, outliers and boxplots
 Quartiles: Q1 (25th percentile), Q3 (75th percentile)
 Inter-quartile range: IQR = Q3 – Q1
 Five number summary: min, Q1, median, Q3, max
 Boxplot: ends of the box are the quartiles; median is marked; add
whiskers, and plot outliers individually
 Outlier: usually, a value higher/lower than 1.5 x IQR
 Variance and standard deviation (sample: s, population: σ)
 Variance: (algebraic, scalable computation)
 Standard deviation s (or σ) is the square root of variance s2 (or σ2)
 
  







n
i
n
i
i
i
n
i
i x
n
x
n
x
x
n
s
1 1
2
2
1
2
2
]
)
(
1
[
1
1
)
(
1
1

 





n
i
i
n
i
i x
N
x
N 1
2
2
1
2
2 1
)
(
1



15
Boxplot Analysis
 Five-number summary of a distribution
 Minimum, Q1, Median, Q3, Maximum
 Boxplot
 Data is represented with a box
 The ends of the box are at the first and third
quartiles, i.e., the height of the box is IQR
 The median is marked by a line within the
box
 Whiskers: two lines outside the box extended
to Minimum and Maximum
 Outliers: points beyond a specified outlier
threshold, plotted individually
September 24, 2023 Data Mining: Concepts and Techniques 16
Visualization of Data Dispersion: 3-D Boxplots
17
Properties of Normal Distribution Curve
 The normal (distribution) curve
 From μ–σ to μ+σ: contains about 68% of the
measurements (μ: mean, σ: standard deviation)
 From μ–2σ to μ+2σ: contains about 95% of it
 From μ–3σ to μ+3σ: contains about 99.7% of it
18
Graphic Displays of Basic Statistical
Descriptions
 Boxplot: graphic display of five-number summary
 Histogram: x-axis are values, y-axis repres. frequencies
 Quantile plot: each value xi is paired with fi indicating
that approximately 100 fi % of data are  xi
 Quantile-quantile (q-q) plot: graphs the quantiles of
one univariant distribution against the corresponding
quantiles of another
 Scatter plot: each pair of values is a pair of coordinates
and plotted as points in the plane
19
Histogram Analysis
 Histogram: Graph display of
tabulated frequencies, shown as
bars
 It shows what proportion of cases
fall into each of several categories
 Differs from a bar chart in that it is
the area of the bar that denotes the
value, not the height as in bar
charts, a crucial distinction when the
categories are not of uniform width
 The categories are usually specified
as non-overlapping intervals of
some variable. The categories (bars)
must be adjacent
0
5
10
15
20
25
30
35
40
10000 30000 50000 70000 90000
20
Histograms Often Tell More than Boxplots
 The two histograms
shown in the left may
have the same boxplot
representation
 The same values
for: min, Q1,
median, Q3, max
 But they have rather
different data
distributions
Data Mining: Concepts and Techniques 21
Quantile Plot
 Displays all of the data (allowing the user to assess both
the overall behavior and unusual occurrences)
 Plots quantile information
 For a data xi data sorted in increasing order, fi
indicates that approximately 100 fi% of the data are
below or equal to the value xi
22
Quantile-Quantile (Q-Q) Plot
 Graphs the quantiles of one univariate distribution against the
corresponding quantiles of another
 View: Is there is a shift in going from one distribution to another?
 Example shows unit price of items sold at Branch 1 vs. Branch 2 for
each quantile. Unit prices of items sold at Branch 1 tend to be lower
than those at Branch 2.
23
Scatter plot
 Provides a first look at bivariate data to see clusters of
points, outliers, etc
 Each pair of values is treated as a pair of coordinates and
plotted as points in the plane
24
Positively and Negatively Correlated Data
 The left half fragment is positively
correlated
 The right half is negative correlated
25
Uncorrelated Data
26
Chapter 2: Getting to Know Your Data
 Data Objects and Attribute Types
 Basic Statistical Descriptions of Data
 Data Visualization
 Measuring Data Similarity and Dissimilarity
 Summary
27
Data Visualization
 Why data visualization?
 Gain insight into an information space by mapping data onto graphical
primitives
 Provide qualitative overview of large data sets
 Search for patterns, trends, structure, irregularities, relationships among
data
 Help find interesting regions and suitable parameters for further
quantitative analysis
 Provide a visual proof of computer representations derived
 Categorization of visualization methods:
 Pixel-oriented visualization techniques
 Geometric projection visualization techniques
 Icon-based visualization techniques
 Hierarchical visualization techniques
 Visualizing complex data and relations
28
Pixel-Oriented Visualization Techniques
 For a data set of m dimensions, create m windows on the screen, one
for each dimension
 The m dimension values of a record are mapped to m pixels at the
corresponding positions in the windows
 The colors of the pixels reflect the corresponding values
(a) Income (b) Credit Limit (c) transaction volume (d) age
29
Laying Out Pixels in Circle Segments
 To save space and show the connections among multiple dimensions,
space filling is often done in a circle segment
(a) Representing a data record
in circle segment
(b) Laying out pixels in circle segment
30
Geometric Projection Visualization
Techniques
 Visualization of geometric transformations and projections
of the data
 Methods
 Direct visualization
 Scatterplot and scatterplot matrices
 Landscapes
 Projection pursuit technique: Help users find meaningful
projections of multidimensional data
 Prosection views
 Hyperslice
 Parallel coordinates
Data Mining: Concepts and Techniques 31
Direct Data Visualization
Ribbons
with
Twists
Based
on
Vorticity
32
Scatterplot Matrices
Matrix of scatterplots (x-y-diagrams) of the k-dim. data [total of (k2/2-k) scatterplots]
Used
by
ermission
of
M.
Ward,
Worcester
Polytechnic
Institute
33
news articles
visualized as
a landscape
Used
by
permission
of
B.
Wright,
Visible
Decisions
Inc.
Landscapes
 Visualization of the data as perspective landscape
 The data needs to be transformed into a (possibly artificial) 2D
spatial representation which preserves the characteristics of the data
34
Attr. 1 Attr. 2 Attr. k
Attr. 3
• • •
Parallel Coordinates
 n equidistant axes which are parallel to one of the screen axes and
correspond to the attributes
 The axes are scaled to the [minimum, maximum]: range of the
corresponding attribute
 Every data item corresponds to a polygonal line which intersects each
of the axes at the point which corresponds to the value for the
attribute
35
Parallel Coordinates of a Data Set
36
Icon-Based Visualization Techniques
 Visualization of the data values as features of icons
 Typical visualization methods
 Chernoff Faces
 Stick Figures
 General techniques
 Shape coding: Use shape to represent certain
information encoding
 Color icons: Use color icons to encode more information
 Tile bars: Use small icons to represent the relevant
feature vectors in document retrieval
37
Chernoff Faces
 A way to display variables on a two-dimensional surface, e.g., let x be
eyebrow slant, y be eye size, z be nose length, etc.
 The figure shows faces produced using 10 characteristics--head
eccentricity, eye size, eye spacing, eye eccentricity, pupil size,
eyebrow slant, nose size, mouth shape, mouth size, and mouth
opening): Each assigned one of 10 possible values, generated using
Mathematica (S. Dickson)
 REFERENCE: Gonick, L. and Smith, W. The
Cartoon Guide to Statistics. New York:
Harper Perennial, p. 212, 1993
 Weisstein, Eric W. "Chernoff Face." From
MathWorld--A Wolfram Web Resource.
mathworld.wolfram.com/ChernoffFace.html
38
Two attributes mapped to axes, remaining attributes mapped to angle or length of limbs”. Look at texture pattern
A census data
figure showing
age, income,
gender,
education, etc.
Stick Figure
A 5-piece stick
figure (1 body
and 4 limbs w.
different
angle/length)
39
Hierarchical Visualization Techniques
 Visualization of the data using a hierarchical
partitioning into subspaces
 Methods
 Dimensional Stacking
 Worlds-within-Worlds
 Tree-Map
 Cone Trees
 InfoCube
40
Dimensional Stacking
attribute 1
attribute 2
attribute 3
attribute 4
 Partitioning of the n-dimensional attribute space in 2-D
subspaces, which are ‘stacked’ into each other
 Partitioning of the attribute value ranges into classes. The
important attributes should be used on the outer levels.
 Adequate for data with ordinal attributes of low cardinality
 But, difficult to display more than nine dimensions
 Important to map dimensions appropriately
41
Used by permission of M. Ward, Worcester Polytechnic Institute
Visualization of oil mining data with longitude and latitude mapped to the
outer x-, y-axes and ore grade and depth mapped to the inner x-, y-axes
Dimensional Stacking
42
Worlds-within-Worlds
 Assign the function and two most important parameters to innermost
world
 Fix all other parameters at constant values - draw other (1 or 2 or 3
dimensional worlds choosing these as the axes)
 Software that uses this paradigm
 N–vision: Dynamic
interaction through data
glove and stereo
displays, including
rotation, scaling (inner)
and translation
(inner/outer)
 Auto Visual: Static
interaction by means of
queries
43
Tree-Map
 Screen-filling method which uses a hierarchical partitioning
of the screen into regions depending on the attribute values
 The x- and y-dimension of the screen are partitioned
alternately according to the attribute values (classes)
MSR Netscan Image
Ack.: http://www.cs.umd.edu/hcil/treemap-history/all102001.jpg
44
Tree-Map of a File System (Schneiderman)
45
InfoCube
 A 3-D visualization technique where hierarchical
information is displayed as nested semi-transparent
cubes
 The outermost cubes correspond to the top level
data, while the subnodes or the lower level data
are represented as smaller cubes inside the
outermost cubes, and so on
46
Three-D Cone Trees
 3D cone tree visualization technique works
well for up to a thousand nodes or so
 First build a 2D circle tree that arranges its
nodes in concentric circles centered on the
root node
 Cannot avoid overlaps when projected to
2D
 G. Robertson, J. Mackinlay, S. Card. “Cone
Trees: Animated 3D Visualizations of
Hierarchical Information”, ACM SIGCHI'91
 Graph from Nadeau Software Consulting
website: Visualize a social network data set
that models the way an infection spreads
from one person to the next
Ack.: http://nadeausoftware.com/articles/visualization
Visualizing Complex Data and Relations
 Visualizing non-numerical data: text and social networks
 Tag cloud: visualizing user-generated tags
 The importance of
tag is represented
by font size/color
 Besides text data,
there are also
methods to visualize
relationships, such as
visualizing social
networks
Newsmap: Google News Stories in 2005
48
Chapter 2: Getting to Know Your Data
 Data Objects and Attribute Types
 Basic Statistical Descriptions of Data
 Data Visualization
 Measuring Data Similarity and Dissimilarity
 Summary
49
Similarity and Dissimilarity
 Similarity
 Numerical measure of how alike two data objects are
 Value is higher when objects are more alike
 Often falls in the range [0,1]
 Dissimilarity (e.g., distance)
 Numerical measure of how different two data objects
are
 Lower when objects are more alike
 Minimum dissimilarity is often 0
 Upper limit varies
 Proximity refers to a similarity or dissimilarity
50
Data Matrix and Dissimilarity Matrix
 Data matrix
 n data points with p
dimensions
 Two modes
 Dissimilarity matrix
 n data points, but
registers only the
distance
 A triangular matrix
 Single mode


















np
x
...
nf
x
...
n1
x
...
...
...
...
...
ip
x
...
if
x
...
i1
x
...
...
...
...
...
1p
x
...
1f
x
...
11
x
















0
...
)
2
,
(
)
1
,
(
:
:
:
)
2
,
3
(
)
...
n
d
n
d
0
d
d(3,1
0
d(2,1)
0
51
Proximity Measure for Nominal Attributes
 Can take 2 or more states, e.g., red, yellow, blue,
green (generalization of a binary attribute)
 Method 1: Simple matching
 m: # of matches, p: total # of variables
 Method 2: Use a large number of binary attributes
 creating a new binary attribute for each of the
M nominal states
p
m
p
j
i
d 

)
,
(
52
Proximity Measure for Binary Attributes
 A contingency table for binary data
 Distance measure for symmetric
binary variables:
 Distance measure for asymmetric
binary variables:
 Jaccard coefficient (similarity
measure for asymmetric binary
variables):
 Note: Jaccard coefficient is the same as “coherence”:
Object i
Object j
53
Dissimilarity between Binary Variables
 Example
 Gender is a symmetric attribute
 The remaining attributes are asymmetric binary
 Let the values Y and P be 1, and the value N 0
Name Gender Fever Cough Test-1 Test-2 Test-3 Test-4
Jack M Y N P N N N
Mary F Y N P N P N
Jim M Y P N N N N
75
.
0
2
1
1
2
1
)
,
(
67
.
0
1
1
1
1
1
)
,
(
33
.
0
1
0
2
1
0
)
,
(















mary
jim
d
jim
jack
d
mary
jack
d
54
Standardizing Numeric Data
 Z-score:
 X: raw score to be standardized, μ: mean of the population, σ:
standard deviation
 the distance between the raw score and the population mean in
units of the standard deviation
 negative when the raw score is below the mean, “+” when above
 An alternative way: Calculate the mean absolute deviation
where
 standardized measure (z-score):
 Using mean absolute deviation is more robust than using standard
deviation
.
)
...
2
1
1
nf
f
f
f
x
x
(x
n
m 



|)
|
...
|
|
|
(|
1
2
1 f
nf
f
f
f
f
f
m
x
m
x
m
x
n
s 






f
f
if
if s
m
x
z





 x
z
55
Example:
Data Matrix and Dissimilarity Matrix
point attribute1 attribute2
x1 1 2
x2 3 5
x3 2 0
x4 4 5
Dissimilarity Matrix
(with Euclidean Distance)
x1 x2 x3 x4
x1 0
x2 3.61 0
x3 5.1 5.1 0
x4 4.24 1 5.39 0
Data Matrix
56
Distance on Numeric Data: Minkowski
Distance
 Minkowski distance: A popular distance measure
where i = (xi1, xi2, …, xip) and j = (xj1, xj2, …, xjp) are two
p-dimensional data objects, and h is the order (the
distance so defined is also called L-h norm)
 Properties
 d(i, j) > 0 if i ≠ j, and d(i, i) = 0 (Positive definiteness)
 d(i, j) = d(j, i) (Symmetry)
 d(i, j)  d(i, k) + d(k, j) (Triangle Inequality)
 A distance that satisfies these properties is a metric
57
Special Cases of Minkowski Distance
 h = 1: Manhattan (city block, L1 norm) distance
 E.g., the Hamming distance: the number of bits that are
different between two binary vectors
 h = 2: (L2 norm) Euclidean distance
 h  . “supremum” (Lmax norm, L norm) distance.
 This is the maximum difference between any component
(attribute) of the vectors
)
|
|
...
|
|
|
(|
)
,
( 2
2
2
2
2
1
1 p
p j
x
i
x
j
x
i
x
j
x
i
x
j
i
d 






|
|
...
|
|
|
|
)
,
(
2
2
1
1 p
p j
x
i
x
j
x
i
x
j
x
i
x
j
i
d 






58
Example: Minkowski Distance
Dissimilarity Matrices
point attribute 1 attribute 2
x1 1 2
x2 3 5
x3 2 0
x4 4 5
L x1 x2 x3 x4
x1 0
x2 5 0
x3 3 6 0
x4 6 1 7 0
L2 x1 x2 x3 x4
x1 0
x2 3.61 0
x3 2.24 5.1 0
x4 4.24 1 5.39 0
L x1 x2 x3 x4
x1 0
x2 3 0
x3 2 5 0
x4 3 1 5 0
Manhattan (L1)
Euclidean (L2)
Supremum
59
Ordinal Variables
 An ordinal variable can be discrete or continuous
 Order is important, e.g., rank
 Can be treated like interval-scaled
 replace xif by their rank
 map the range of each variable onto [0, 1] by replacing
i-th object in the f-th variable by
 compute the dissimilarity using methods for interval-
scaled variables
1
1



f
if
if M
r
z
}
,...,
1
{ f
if
M
r 
60
Attributes of Mixed Type
 A database may contain all attribute types
 Nominal, symmetric binary, asymmetric binary, numeric,
ordinal
 One may use a weighted formula to combine their effects
 f is binary or nominal:
dij
(f) = 0 if xif = xjf , or dij
(f) = 1 otherwise
 f is numeric: use the normalized distance
 f is ordinal
 Compute ranks rif and
 Treat zif as interval-scaled
)
(
1
)
(
)
(
1
)
,
( f
ij
p
f
f
ij
f
ij
p
f
d
j
i
d







1
1



f
if
M
r
zif
61
Cosine Similarity
 A document can be represented by thousands of attributes, each
recording the frequency of a particular word (such as keywords) or
phrase in the document.
 Other vector objects: gene features in micro-arrays, …
 Applications: information retrieval, biologic taxonomy, gene feature
mapping, ...
 Cosine measure: If d1 and d2 are two vectors (e.g., term-frequency
vectors), then
cos(d1, d2) = (d1  d2) /||d1|| ||d2|| ,
where  indicates vector dot product, ||d||: the length of vector d
62
Example: Cosine Similarity
 cos(d1, d2) = (d1  d2) /||d1|| ||d2|| ,
where  indicates vector dot product, ||d|: the length of vector d
 Ex: Find the similarity between documents 1 and 2.
d1 = (5, 0, 3, 0, 2, 0, 0, 2, 0, 0)
d2 = (3, 0, 2, 0, 1, 1, 0, 1, 0, 1)
d1d2 = 5*3+0*0+3*2+0*0+2*1+0*1+0*1+2*1+0*0+0*1 = 25
||d1||= (5*5+0*0+3*3+0*0+2*2+0*0+0*0+2*2+0*0+0*0)0.5=(42)0.5
= 6.481
||d2||= (3*3+0*0+2*2+0*0+1*1+1*1+0*0+1*1+0*0+1*1)0.5=(17)0.5
= 4.12
cos(d1, d2 ) = 0.94
63
Chapter 2: Getting to Know Your Data
 Data Objects and Attribute Types
 Basic Statistical Descriptions of Data
 Data Visualization
 Measuring Data Similarity and Dissimilarity
 Summary
Summary
 Data attribute types: nominal, binary, ordinal, interval-scaled, ratio-
scaled
 Many types of data sets, e.g., numerical, text, graph, Web, image.
 Gain insight into the data by:
 Basic statistical data description: central tendency, dispersion,
graphical displays
 Data visualization: map data onto graphical primitives
 Measure data similarity
 Above steps are the beginning of data preprocessing.
 Many methods have been developed but still an active area of research.
64
References
 W. Cleveland, Visualizing Data, Hobart Press, 1993
 T. Dasu and T. Johnson. Exploratory Data Mining and Data Cleaning. John Wiley, 2003
 U. Fayyad, G. Grinstein, and A. Wierse. Information Visualization in Data Mining and
Knowledge Discovery, Morgan Kaufmann, 2001
 L. Kaufman and P. J. Rousseeuw. Finding Groups in Data: an Introduction to Cluster
Analysis. John Wiley & Sons, 1990.
 H. V. Jagadish, et al., Special Issue on Data Reduction Techniques. Bulletin of the Tech.
Committee on Data Eng., 20(4), Dec. 1997
 D. A. Keim. Information visualization and visual data mining, IEEE trans. on
Visualization and Computer Graphics, 8(1), 2002
 D. Pyle. Data Preparation for Data Mining. Morgan Kaufmann, 1999
 S. Santini and R. Jain,” Similarity measures”, IEEE Trans. on Pattern Analysis and
Machine Intelligence, 21(9), 1999
 E. R. Tufte. The Visual Display of Quantitative Information, 2nd ed., Graphics Press,
2001
 C. Yu , et al., Visual data mining of multimedia data for social and behavioral studies,
Information Visualization, 8(1), 2009
65
1 de 65

Recomendados

02Data.ppt por
02Data.ppt02Data.ppt
02Data.pptTanviBhasin2
2 visualizações65 slides
02Data.ppt por
02Data.ppt02Data.ppt
02Data.pptAlwinHilton
15 visualizações65 slides
Data mining data characteristics por
Data mining data characteristicsData mining data characteristics
Data mining data characteristicsKingSuleiman1
118 visualizações65 slides
Data mining Concepts and Techniques por
Data mining Concepts and Techniques Data mining Concepts and Techniques
Data mining Concepts and Techniques Justin Cletus
1.2K visualizações68 slides
02 data por
02 data02 data
02 dataphakhwan22
4.1K visualizações63 slides
Data Mining: Concepts and Techniques — Chapter 2 — por
Data Mining:  Concepts and Techniques — Chapter 2 —Data Mining:  Concepts and Techniques — Chapter 2 —
Data Mining: Concepts and Techniques — Chapter 2 —Salah Amean
7.2K visualizações68 slides

Mais conteúdo relacionado

Similar a Chapter 2. Know Your Data.ppt

02Data-osu-0829.pdf por
02Data-osu-0829.pdf02Data-osu-0829.pdf
02Data-osu-0829.pdfBizuayehuDesalegn
73 visualizações114 slides
02 data por
02 data02 data
02 dataJoonyoungJayGwak
45 visualizações65 slides
Data Mining with CINDY.pdf por
Data Mining with CINDY.pdfData Mining with CINDY.pdf
Data Mining with CINDY.pdfChumaBanziMboxelaSit
109 visualizações11 slides
Data Mining StepsProblem Definition Market AnalysisC por
Data Mining StepsProblem Definition Market AnalysisCData Mining StepsProblem Definition Market AnalysisC
Data Mining StepsProblem Definition Market AnalysisCsharondabriggs
1 visão14 slides
4_22865_IS465_2019_1__2_1_02Data-2.ppt por
4_22865_IS465_2019_1__2_1_02Data-2.ppt4_22865_IS465_2019_1__2_1_02Data-2.ppt
4_22865_IS465_2019_1__2_1_02Data-2.pptPaoloOchengco
12 visualizações21 slides
Datapreprocessing por
DatapreprocessingDatapreprocessing
DatapreprocessingChandrika Sweety
215 visualizações37 slides

Similar a Chapter 2. Know Your Data.ppt(20)

02Data-osu-0829.pdf por BizuayehuDesalegn
02Data-osu-0829.pdf02Data-osu-0829.pdf
02Data-osu-0829.pdf
BizuayehuDesalegn73 visualizações
Data Mining with CINDY.pdf por ChumaBanziMboxelaSit
Data Mining with CINDY.pdfData Mining with CINDY.pdf
Data Mining with CINDY.pdf
ChumaBanziMboxelaSit109 visualizações
Data Mining StepsProblem Definition Market AnalysisC por sharondabriggs
Data Mining StepsProblem Definition Market AnalysisCData Mining StepsProblem Definition Market AnalysisC
Data Mining StepsProblem Definition Market AnalysisC
sharondabriggs1 visão
4_22865_IS465_2019_1__2_1_02Data-2.ppt por PaoloOchengco
4_22865_IS465_2019_1__2_1_02Data-2.ppt4_22865_IS465_2019_1__2_1_02Data-2.ppt
4_22865_IS465_2019_1__2_1_02Data-2.ppt
PaoloOchengco12 visualizações
Datapreprocessing por Chandrika Sweety
DatapreprocessingDatapreprocessing
Datapreprocessing
Chandrika Sweety215 visualizações
Statistics review por jpcagphil
Statistics reviewStatistics review
Statistics review
jpcagphil447 visualizações
Module 2_ Introduction to Data Mining, Data Exploration and Data Pre-processi... por nikshaikh786
Module 2_ Introduction to Data Mining, Data Exploration and Data Pre-processi...Module 2_ Introduction to Data Mining, Data Exploration and Data Pre-processi...
Module 2_ Introduction to Data Mining, Data Exploration and Data Pre-processi...
nikshaikh786205 visualizações
UNIT-4.docx por scet315
UNIT-4.docxUNIT-4.docx
UNIT-4.docx
scet3155 visualizações
1.6.data preprocessing por Krish_ver2
1.6.data preprocessing1.6.data preprocessing
1.6.data preprocessing
Krish_ver21.3K visualizações
Categorical data stata cox 2004 por Lilian Carvalho
Categorical data stata    cox 2004Categorical data stata    cox 2004
Categorical data stata cox 2004
Lilian Carvalho24 visualizações
Interpret data for use in charts and graphs por Charles Flynt
Interpret data for use in charts and graphsInterpret data for use in charts and graphs
Interpret data for use in charts and graphs
Charles Flynt1.1K visualizações
Statistics with R por Ruru Chowdhury
Statistics with R Statistics with R
Statistics with R
Ruru Chowdhury3.5K visualizações
Analytical Design in Applied Marketing Research por Kelly Page
Analytical Design in Applied Marketing ResearchAnalytical Design in Applied Marketing Research
Analytical Design in Applied Marketing Research
Kelly Page925 visualizações
Biostatistics por Tamanna Syeda
Biostatistics Biostatistics
Biostatistics
Tamanna Syeda 130 visualizações
02Data updated.pdf por saman Iftikhar
02Data updated.pdf02Data updated.pdf
02Data updated.pdf
saman Iftikhar31 visualizações
MSC III_Research Methodology and Statistics_Descriptive statistics.pdf por Suchita Rawat
MSC III_Research Methodology and Statistics_Descriptive statistics.pdfMSC III_Research Methodology and Statistics_Descriptive statistics.pdf
MSC III_Research Methodology and Statistics_Descriptive statistics.pdf
Suchita Rawat3 visualizações
An Introduction to Statistics por Nazrul Islam
An Introduction to StatisticsAn Introduction to Statistics
An Introduction to Statistics
Nazrul Islam409 visualizações

Mais de Subrata Kumer Paul

Chapter 9. Classification Advanced Methods.ppt por
Chapter 9. Classification Advanced Methods.pptChapter 9. Classification Advanced Methods.ppt
Chapter 9. Classification Advanced Methods.pptSubrata Kumer Paul
61 visualizações78 slides
Chapter 13. Trends and Research Frontiers in Data Mining.ppt por
Chapter 13. Trends and Research Frontiers in Data Mining.pptChapter 13. Trends and Research Frontiers in Data Mining.ppt
Chapter 13. Trends and Research Frontiers in Data Mining.pptSubrata Kumer Paul
27 visualizações52 slides
Chapter 8. Classification Basic Concepts.ppt por
Chapter 8. Classification Basic Concepts.pptChapter 8. Classification Basic Concepts.ppt
Chapter 8. Classification Basic Concepts.pptSubrata Kumer Paul
79 visualizações81 slides
Chapter 12. Outlier Detection.ppt por
Chapter 12. Outlier Detection.pptChapter 12. Outlier Detection.ppt
Chapter 12. Outlier Detection.pptSubrata Kumer Paul
57 visualizações55 slides
Chapter 7. Advanced Frequent Pattern Mining.ppt por
Chapter 7. Advanced Frequent Pattern Mining.pptChapter 7. Advanced Frequent Pattern Mining.ppt
Chapter 7. Advanced Frequent Pattern Mining.pptSubrata Kumer Paul
22 visualizações81 slides
Chapter 11. Cluster Analysis Advanced Methods.ppt por
Chapter 11. Cluster Analysis Advanced Methods.pptChapter 11. Cluster Analysis Advanced Methods.ppt
Chapter 11. Cluster Analysis Advanced Methods.pptSubrata Kumer Paul
29 visualizações103 slides

Mais de Subrata Kumer Paul(20)

Chapter 9. Classification Advanced Methods.ppt por Subrata Kumer Paul
Chapter 9. Classification Advanced Methods.pptChapter 9. Classification Advanced Methods.ppt
Chapter 9. Classification Advanced Methods.ppt
Subrata Kumer Paul61 visualizações
Chapter 13. Trends and Research Frontiers in Data Mining.ppt por Subrata Kumer Paul
Chapter 13. Trends and Research Frontiers in Data Mining.pptChapter 13. Trends and Research Frontiers in Data Mining.ppt
Chapter 13. Trends and Research Frontiers in Data Mining.ppt
Subrata Kumer Paul27 visualizações
Chapter 8. Classification Basic Concepts.ppt por Subrata Kumer Paul
Chapter 8. Classification Basic Concepts.pptChapter 8. Classification Basic Concepts.ppt
Chapter 8. Classification Basic Concepts.ppt
Subrata Kumer Paul79 visualizações
Chapter 12. Outlier Detection.ppt por Subrata Kumer Paul
Chapter 12. Outlier Detection.pptChapter 12. Outlier Detection.ppt
Chapter 12. Outlier Detection.ppt
Subrata Kumer Paul57 visualizações
Chapter 7. Advanced Frequent Pattern Mining.ppt por Subrata Kumer Paul
Chapter 7. Advanced Frequent Pattern Mining.pptChapter 7. Advanced Frequent Pattern Mining.ppt
Chapter 7. Advanced Frequent Pattern Mining.ppt
Subrata Kumer Paul22 visualizações
Chapter 11. Cluster Analysis Advanced Methods.ppt por Subrata Kumer Paul
Chapter 11. Cluster Analysis Advanced Methods.pptChapter 11. Cluster Analysis Advanced Methods.ppt
Chapter 11. Cluster Analysis Advanced Methods.ppt
Subrata Kumer Paul29 visualizações
Chapter 10. Cluster Analysis Basic Concepts and Methods.ppt por Subrata Kumer Paul
Chapter 10. Cluster Analysis Basic Concepts and Methods.pptChapter 10. Cluster Analysis Basic Concepts and Methods.ppt
Chapter 10. Cluster Analysis Basic Concepts and Methods.ppt
Subrata Kumer Paul47 visualizações
Chapter 6. Mining Frequent Patterns, Associations and Correlations Basic Conc... por Subrata Kumer Paul
Chapter 6. Mining Frequent Patterns, Associations and Correlations Basic Conc...Chapter 6. Mining Frequent Patterns, Associations and Correlations Basic Conc...
Chapter 6. Mining Frequent Patterns, Associations and Correlations Basic Conc...
Subrata Kumer Paul70 visualizações
Chapter 5. Data Cube Technology.ppt por Subrata Kumer Paul
Chapter 5. Data Cube Technology.pptChapter 5. Data Cube Technology.ppt
Chapter 5. Data Cube Technology.ppt
Subrata Kumer Paul144 visualizações
Chapter 3. Data Preprocessing.ppt por Subrata Kumer Paul
Chapter 3. Data Preprocessing.pptChapter 3. Data Preprocessing.ppt
Chapter 3. Data Preprocessing.ppt
Subrata Kumer Paul32 visualizações
Chapter 4. Data Warehousing and On-Line Analytical Processing.ppt por Subrata Kumer Paul
Chapter 4. Data Warehousing and On-Line Analytical Processing.pptChapter 4. Data Warehousing and On-Line Analytical Processing.ppt
Chapter 4. Data Warehousing and On-Line Analytical Processing.ppt
Subrata Kumer Paul59 visualizações
Chapter 1. Introduction.ppt por Subrata Kumer Paul
Chapter 1. Introduction.pptChapter 1. Introduction.ppt
Chapter 1. Introduction.ppt
Subrata Kumer Paul18 visualizações
Data Mining Lecture_8(a).pptx por Subrata Kumer Paul
Data Mining Lecture_8(a).pptxData Mining Lecture_8(a).pptx
Data Mining Lecture_8(a).pptx
Subrata Kumer Paul6 visualizações
Data Mining Lecture_9.pptx por Subrata Kumer Paul
Data Mining Lecture_9.pptxData Mining Lecture_9.pptx
Data Mining Lecture_9.pptx
Subrata Kumer Paul4 visualizações
Data Mining Lecture_7.pptx por Subrata Kumer Paul
Data Mining Lecture_7.pptxData Mining Lecture_7.pptx
Data Mining Lecture_7.pptx
Subrata Kumer Paul16 visualizações
Data Mining Lecture_10(b).pptx por Subrata Kumer Paul
Data Mining Lecture_10(b).pptxData Mining Lecture_10(b).pptx
Data Mining Lecture_10(b).pptx
Subrata Kumer Paul17 visualizações
Data Mining Lecture_8(b).pptx por Subrata Kumer Paul
Data Mining Lecture_8(b).pptxData Mining Lecture_8(b).pptx
Data Mining Lecture_8(b).pptx
Subrata Kumer Paul5 visualizações
Data Mining Lecture_6.pptx por Subrata Kumer Paul
Data Mining Lecture_6.pptxData Mining Lecture_6.pptx
Data Mining Lecture_6.pptx
Subrata Kumer Paul5 visualizações
Data Mining Lecture_11.pptx por Subrata Kumer Paul
Data Mining Lecture_11.pptxData Mining Lecture_11.pptx
Data Mining Lecture_11.pptx
Subrata Kumer Paul7 visualizações
Data Mining Lecture_4.pptx por Subrata Kumer Paul
Data Mining Lecture_4.pptxData Mining Lecture_4.pptx
Data Mining Lecture_4.pptx
Subrata Kumer Paul20 visualizações

Último

unit 1.pptx por
unit 1.pptxunit 1.pptx
unit 1.pptxrrbornarecm
6 visualizações53 slides
MODULE-1 CHAPTER 3- Operators - Object Oriented Programming with JAVA por
MODULE-1 CHAPTER 3- Operators - Object Oriented Programming with JAVAMODULE-1 CHAPTER 3- Operators - Object Oriented Programming with JAVA
MODULE-1 CHAPTER 3- Operators - Object Oriented Programming with JAVADemian Antony D'Mello
8 visualizações14 slides
Design of Structures and Foundations for Vibrating Machines, Arya-ONeill-Pinc... por
Design of Structures and Foundations for Vibrating Machines, Arya-ONeill-Pinc...Design of Structures and Foundations for Vibrating Machines, Arya-ONeill-Pinc...
Design of Structures and Foundations for Vibrating Machines, Arya-ONeill-Pinc...csegroupvn
17 visualizações210 slides
taylor-2005-classical-mechanics.pdf por
taylor-2005-classical-mechanics.pdftaylor-2005-classical-mechanics.pdf
taylor-2005-classical-mechanics.pdfArturoArreola10
40 visualizações808 slides
Trust Metric-Based Anomaly Detection via Deep Deterministic Policy Gradient R... por
Trust Metric-Based Anomaly Detection via Deep Deterministic Policy Gradient R...Trust Metric-Based Anomaly Detection via Deep Deterministic Policy Gradient R...
Trust Metric-Based Anomaly Detection via Deep Deterministic Policy Gradient R...IJCNCJournal
5 visualizações25 slides
Building source code level profiler for C++.pdf por
Building source code level profiler for C++.pdfBuilding source code level profiler for C++.pdf
Building source code level profiler for C++.pdfssuser28de9e
12 visualizações38 slides

Último(20)

unit 1.pptx por rrbornarecm
unit 1.pptxunit 1.pptx
unit 1.pptx
rrbornarecm6 visualizações
MODULE-1 CHAPTER 3- Operators - Object Oriented Programming with JAVA por Demian Antony D'Mello
MODULE-1 CHAPTER 3- Operators - Object Oriented Programming with JAVAMODULE-1 CHAPTER 3- Operators - Object Oriented Programming with JAVA
MODULE-1 CHAPTER 3- Operators - Object Oriented Programming with JAVA
Demian Antony D'Mello8 visualizações
Design of Structures and Foundations for Vibrating Machines, Arya-ONeill-Pinc... por csegroupvn
Design of Structures and Foundations for Vibrating Machines, Arya-ONeill-Pinc...Design of Structures and Foundations for Vibrating Machines, Arya-ONeill-Pinc...
Design of Structures and Foundations for Vibrating Machines, Arya-ONeill-Pinc...
csegroupvn17 visualizações
taylor-2005-classical-mechanics.pdf por ArturoArreola10
taylor-2005-classical-mechanics.pdftaylor-2005-classical-mechanics.pdf
taylor-2005-classical-mechanics.pdf
ArturoArreola1040 visualizações
Trust Metric-Based Anomaly Detection via Deep Deterministic Policy Gradient R... por IJCNCJournal
Trust Metric-Based Anomaly Detection via Deep Deterministic Policy Gradient R...Trust Metric-Based Anomaly Detection via Deep Deterministic Policy Gradient R...
Trust Metric-Based Anomaly Detection via Deep Deterministic Policy Gradient R...
IJCNCJournal5 visualizações
Building source code level profiler for C++.pdf por ssuser28de9e
Building source code level profiler for C++.pdfBuilding source code level profiler for C++.pdf
Building source code level profiler for C++.pdf
ssuser28de9e12 visualizações
dummy.pptx por JamesLamp
dummy.pptxdummy.pptx
dummy.pptx
JamesLamp7 visualizações
Programmable Switches for Programmable Logic Devices por Usha Mehta
Programmable Switches for Programmable Logic DevicesProgrammable Switches for Programmable Logic Devices
Programmable Switches for Programmable Logic Devices
Usha Mehta37 visualizações
Basic Design Flow for Field Programmable Gate Arrays por Usha Mehta
Basic Design Flow for Field Programmable Gate ArraysBasic Design Flow for Field Programmable Gate Arrays
Basic Design Flow for Field Programmable Gate Arrays
Usha Mehta24 visualizações
Integrating Sustainable Development Goals (SDGs) in School Education por SheetalTank1
Integrating Sustainable Development Goals (SDGs) in School EducationIntegrating Sustainable Development Goals (SDGs) in School Education
Integrating Sustainable Development Goals (SDGs) in School Education
SheetalTank120 visualizações
AWS Certified Solutions Architect Associate Exam Guide_published .pdf por Kiran Kumar Malik
AWS Certified Solutions Architect Associate Exam Guide_published .pdfAWS Certified Solutions Architect Associate Exam Guide_published .pdf
AWS Certified Solutions Architect Associate Exam Guide_published .pdf
Kiran Kumar Malik6 visualizações
DevFest 2023 Daegu Speech_이재규, Implementing easy and simple chat with gol... por JQLEE6
DevFest 2023 Daegu Speech_이재규,  Implementing easy and simple chat with gol...DevFest 2023 Daegu Speech_이재규,  Implementing easy and simple chat with gol...
DevFest 2023 Daegu Speech_이재규, Implementing easy and simple chat with gol...
JQLEE616 visualizações
Unlocking Research Visibility.pdf por KhatirNaima
Unlocking Research Visibility.pdfUnlocking Research Visibility.pdf
Unlocking Research Visibility.pdf
KhatirNaima11 visualizações
Programmable Logic Devices : SPLD and CPLD por Usha Mehta
Programmable Logic Devices : SPLD and CPLDProgrammable Logic Devices : SPLD and CPLD
Programmable Logic Devices : SPLD and CPLD
Usha Mehta44 visualizações
REACTJS.pdf por ArthyR3
REACTJS.pdfREACTJS.pdf
REACTJS.pdf
ArthyR339 visualizações
BCIC - Manufacturing Conclave - Technology-Driven Manufacturing for Growth por Innomantra
BCIC - Manufacturing Conclave -  Technology-Driven Manufacturing for GrowthBCIC - Manufacturing Conclave -  Technology-Driven Manufacturing for Growth
BCIC - Manufacturing Conclave - Technology-Driven Manufacturing for Growth
Innomantra 28 visualizações
Design_Discover_Develop_Campaign.pptx por ShivanshSeth6
Design_Discover_Develop_Campaign.pptxDesign_Discover_Develop_Campaign.pptx
Design_Discover_Develop_Campaign.pptx
ShivanshSeth659 visualizações
Solution Challenge Introduction.pptx por GDSCCEC
Solution Challenge Introduction.pptxSolution Challenge Introduction.pptx
Solution Challenge Introduction.pptx
GDSCCEC13 visualizações
Plant Design Report-Oil Refinery.pdf por Safeen Yaseen Ja'far
Plant Design Report-Oil Refinery.pdfPlant Design Report-Oil Refinery.pdf
Plant Design Report-Oil Refinery.pdf
Safeen Yaseen Ja'far9 visualizações
MongoDB.pdf por ArthyR3
MongoDB.pdfMongoDB.pdf
MongoDB.pdf
ArthyR353 visualizações

Chapter 2. Know Your Data.ppt

  • 1. 1 Data Mining: Concepts and Techniques Chapter 2 Subrata Kumer Paul Assistant Professor, Dept. of CSE, BAUET sksubrata96@gmail.com
  • 2. 2 Chapter 2: Getting to Know Your Data  Data Objects and Attribute Types  Basic Statistical Descriptions of Data  Data Visualization  Measuring Data Similarity and Dissimilarity  Summary
  • 3. 3 Types of Data Sets  Record  Relational records  Data matrix, e.g., numerical matrix, crosstabs  Document data: text documents: term- frequency vector  Transaction data  Graph and network  World Wide Web  Social or information networks  Molecular Structures  Ordered  Video data: sequence of images  Temporal data: time-series  Sequential Data: transaction sequences  Genetic sequence data  Spatial, image and multimedia:  Spatial data: maps  Image data:  Video data: Document 1 season timeout lost wi n game score ball pla y coach team Document 2 Document 3 3 0 5 0 2 6 0 2 0 2 0 0 7 0 2 1 0 0 3 0 0 1 0 0 1 2 2 0 3 0 TID Items 1 Bread, Coke, Milk 2 Beer, Bread 3 Beer, Coke, Diaper, Milk 4 Beer, Bread, Diaper, Milk 5 Coke, Diaper, Milk
  • 4. 4 Important Characteristics of Structured Data  Dimensionality  Curse of dimensionality  Sparsity  Only presence counts  Resolution  Patterns depend on the scale  Distribution  Centrality and dispersion
  • 5. 5 Data Objects  Data sets are made up of data objects.  A data object represents an entity.  Examples:  sales database: customers, store items, sales  medical database: patients, treatments  university database: students, professors, courses  Also called samples , examples, instances, data points, objects, tuples.  Data objects are described by attributes.  Database rows -> data objects; columns ->attributes.
  • 6. 6 Attributes  Attribute (or dimensions, features, variables): a data field, representing a characteristic or feature of a data object.  E.g., customer _ID, name, address  Types:  Nominal  Binary  Numeric: quantitative  Interval-scaled  Ratio-scaled
  • 7. 7 Attribute Types  Nominal: categories, states, or “names of things”  Hair_color = {auburn, black, blond, brown, grey, red, white}  marital status, occupation, ID numbers, zip codes  Binary  Nominal attribute with only 2 states (0 and 1)  Symmetric binary: both outcomes equally important  e.g., gender  Asymmetric binary: outcomes not equally important.  e.g., medical test (positive vs. negative)  Convention: assign 1 to most important outcome (e.g., HIV positive)  Ordinal  Values have a meaningful order (ranking) but magnitude between successive values is not known.  Size = {small, medium, large}, grades, army rankings
  • 8. 8 Numeric Attribute Types  Quantity (integer or real-valued)  Interval  Measured on a scale of equal-sized units  Values have order  E.g., temperature in C˚or F˚, calendar dates  No true zero-point  Ratio  Inherent zero-point  We can speak of values as being an order of magnitude larger than the unit of measurement (10 K˚ is twice as high as 5 K˚).  e.g., temperature in Kelvin, length, counts, monetary quantities
  • 9. 9 Discrete vs. Continuous Attributes  Discrete Attribute  Has only a finite or countably infinite set of values  E.g., zip codes, profession, or the set of words in a collection of documents  Sometimes, represented as integer variables  Note: Binary attributes are a special case of discrete attributes  Continuous Attribute  Has real numbers as attribute values  E.g., temperature, height, or weight  Practically, real values can only be measured and represented using a finite number of digits  Continuous attributes are typically represented as floating-point variables
  • 10. 10 Chapter 2: Getting to Know Your Data  Data Objects and Attribute Types  Basic Statistical Descriptions of Data  Data Visualization  Measuring Data Similarity and Dissimilarity  Summary
  • 11. 11 Basic Statistical Descriptions of Data  Motivation  To better understand the data: central tendency, variation and spread  Data dispersion characteristics  median, max, min, quantiles, outliers, variance, etc.  Numerical dimensions correspond to sorted intervals  Data dispersion: analyzed with multiple granularities of precision  Boxplot or quantile analysis on sorted intervals  Dispersion analysis on computed measures  Folding measures into numerical dimensions  Boxplot or quantile analysis on the transformed cube
  • 12. 12 Measuring the Central Tendency  Mean (algebraic measure) (sample vs. population): Note: n is sample size and N is population size.  Weighted arithmetic mean:  Trimmed mean: chopping extreme values  Median:  Middle value if odd number of values, or average of the middle two values otherwise  Estimated by interpolation (for grouped data):  Mode  Value that occurs most frequently in the data  Unimodal, bimodal, trimodal  Empirical formula:    n i i x n x 1 1      n i i n i i i w x w x 1 1 width freq l freq n L median median ) ) ( 2 / ( 1     ) ( 3 median mean mode mean     N x   
  • 13. September 24, 2023 Data Mining: Concepts and Techniques 13 Symmetric vs. Skewed Data  Median, mean and mode of symmetric, positively and negatively skewed data positively skewed negatively skewed symmetric
  • 14. 14 Measuring the Dispersion of Data  Quartiles, outliers and boxplots  Quartiles: Q1 (25th percentile), Q3 (75th percentile)  Inter-quartile range: IQR = Q3 – Q1  Five number summary: min, Q1, median, Q3, max  Boxplot: ends of the box are the quartiles; median is marked; add whiskers, and plot outliers individually  Outlier: usually, a value higher/lower than 1.5 x IQR  Variance and standard deviation (sample: s, population: σ)  Variance: (algebraic, scalable computation)  Standard deviation s (or σ) is the square root of variance s2 (or σ2)             n i n i i i n i i x n x n x x n s 1 1 2 2 1 2 2 ] ) ( 1 [ 1 1 ) ( 1 1         n i i n i i x N x N 1 2 2 1 2 2 1 ) ( 1   
  • 15. 15 Boxplot Analysis  Five-number summary of a distribution  Minimum, Q1, Median, Q3, Maximum  Boxplot  Data is represented with a box  The ends of the box are at the first and third quartiles, i.e., the height of the box is IQR  The median is marked by a line within the box  Whiskers: two lines outside the box extended to Minimum and Maximum  Outliers: points beyond a specified outlier threshold, plotted individually
  • 16. September 24, 2023 Data Mining: Concepts and Techniques 16 Visualization of Data Dispersion: 3-D Boxplots
  • 17. 17 Properties of Normal Distribution Curve  The normal (distribution) curve  From μ–σ to μ+σ: contains about 68% of the measurements (μ: mean, σ: standard deviation)  From μ–2σ to μ+2σ: contains about 95% of it  From μ–3σ to μ+3σ: contains about 99.7% of it
  • 18. 18 Graphic Displays of Basic Statistical Descriptions  Boxplot: graphic display of five-number summary  Histogram: x-axis are values, y-axis repres. frequencies  Quantile plot: each value xi is paired with fi indicating that approximately 100 fi % of data are  xi  Quantile-quantile (q-q) plot: graphs the quantiles of one univariant distribution against the corresponding quantiles of another  Scatter plot: each pair of values is a pair of coordinates and plotted as points in the plane
  • 19. 19 Histogram Analysis  Histogram: Graph display of tabulated frequencies, shown as bars  It shows what proportion of cases fall into each of several categories  Differs from a bar chart in that it is the area of the bar that denotes the value, not the height as in bar charts, a crucial distinction when the categories are not of uniform width  The categories are usually specified as non-overlapping intervals of some variable. The categories (bars) must be adjacent 0 5 10 15 20 25 30 35 40 10000 30000 50000 70000 90000
  • 20. 20 Histograms Often Tell More than Boxplots  The two histograms shown in the left may have the same boxplot representation  The same values for: min, Q1, median, Q3, max  But they have rather different data distributions
  • 21. Data Mining: Concepts and Techniques 21 Quantile Plot  Displays all of the data (allowing the user to assess both the overall behavior and unusual occurrences)  Plots quantile information  For a data xi data sorted in increasing order, fi indicates that approximately 100 fi% of the data are below or equal to the value xi
  • 22. 22 Quantile-Quantile (Q-Q) Plot  Graphs the quantiles of one univariate distribution against the corresponding quantiles of another  View: Is there is a shift in going from one distribution to another?  Example shows unit price of items sold at Branch 1 vs. Branch 2 for each quantile. Unit prices of items sold at Branch 1 tend to be lower than those at Branch 2.
  • 23. 23 Scatter plot  Provides a first look at bivariate data to see clusters of points, outliers, etc  Each pair of values is treated as a pair of coordinates and plotted as points in the plane
  • 24. 24 Positively and Negatively Correlated Data  The left half fragment is positively correlated  The right half is negative correlated
  • 26. 26 Chapter 2: Getting to Know Your Data  Data Objects and Attribute Types  Basic Statistical Descriptions of Data  Data Visualization  Measuring Data Similarity and Dissimilarity  Summary
  • 27. 27 Data Visualization  Why data visualization?  Gain insight into an information space by mapping data onto graphical primitives  Provide qualitative overview of large data sets  Search for patterns, trends, structure, irregularities, relationships among data  Help find interesting regions and suitable parameters for further quantitative analysis  Provide a visual proof of computer representations derived  Categorization of visualization methods:  Pixel-oriented visualization techniques  Geometric projection visualization techniques  Icon-based visualization techniques  Hierarchical visualization techniques  Visualizing complex data and relations
  • 28. 28 Pixel-Oriented Visualization Techniques  For a data set of m dimensions, create m windows on the screen, one for each dimension  The m dimension values of a record are mapped to m pixels at the corresponding positions in the windows  The colors of the pixels reflect the corresponding values (a) Income (b) Credit Limit (c) transaction volume (d) age
  • 29. 29 Laying Out Pixels in Circle Segments  To save space and show the connections among multiple dimensions, space filling is often done in a circle segment (a) Representing a data record in circle segment (b) Laying out pixels in circle segment
  • 30. 30 Geometric Projection Visualization Techniques  Visualization of geometric transformations and projections of the data  Methods  Direct visualization  Scatterplot and scatterplot matrices  Landscapes  Projection pursuit technique: Help users find meaningful projections of multidimensional data  Prosection views  Hyperslice  Parallel coordinates
  • 31. Data Mining: Concepts and Techniques 31 Direct Data Visualization Ribbons with Twists Based on Vorticity
  • 32. 32 Scatterplot Matrices Matrix of scatterplots (x-y-diagrams) of the k-dim. data [total of (k2/2-k) scatterplots] Used by ermission of M. Ward, Worcester Polytechnic Institute
  • 33. 33 news articles visualized as a landscape Used by permission of B. Wright, Visible Decisions Inc. Landscapes  Visualization of the data as perspective landscape  The data needs to be transformed into a (possibly artificial) 2D spatial representation which preserves the characteristics of the data
  • 34. 34 Attr. 1 Attr. 2 Attr. k Attr. 3 • • • Parallel Coordinates  n equidistant axes which are parallel to one of the screen axes and correspond to the attributes  The axes are scaled to the [minimum, maximum]: range of the corresponding attribute  Every data item corresponds to a polygonal line which intersects each of the axes at the point which corresponds to the value for the attribute
  • 36. 36 Icon-Based Visualization Techniques  Visualization of the data values as features of icons  Typical visualization methods  Chernoff Faces  Stick Figures  General techniques  Shape coding: Use shape to represent certain information encoding  Color icons: Use color icons to encode more information  Tile bars: Use small icons to represent the relevant feature vectors in document retrieval
  • 37. 37 Chernoff Faces  A way to display variables on a two-dimensional surface, e.g., let x be eyebrow slant, y be eye size, z be nose length, etc.  The figure shows faces produced using 10 characteristics--head eccentricity, eye size, eye spacing, eye eccentricity, pupil size, eyebrow slant, nose size, mouth shape, mouth size, and mouth opening): Each assigned one of 10 possible values, generated using Mathematica (S. Dickson)  REFERENCE: Gonick, L. and Smith, W. The Cartoon Guide to Statistics. New York: Harper Perennial, p. 212, 1993  Weisstein, Eric W. "Chernoff Face." From MathWorld--A Wolfram Web Resource. mathworld.wolfram.com/ChernoffFace.html
  • 38. 38 Two attributes mapped to axes, remaining attributes mapped to angle or length of limbs”. Look at texture pattern A census data figure showing age, income, gender, education, etc. Stick Figure A 5-piece stick figure (1 body and 4 limbs w. different angle/length)
  • 39. 39 Hierarchical Visualization Techniques  Visualization of the data using a hierarchical partitioning into subspaces  Methods  Dimensional Stacking  Worlds-within-Worlds  Tree-Map  Cone Trees  InfoCube
  • 40. 40 Dimensional Stacking attribute 1 attribute 2 attribute 3 attribute 4  Partitioning of the n-dimensional attribute space in 2-D subspaces, which are ‘stacked’ into each other  Partitioning of the attribute value ranges into classes. The important attributes should be used on the outer levels.  Adequate for data with ordinal attributes of low cardinality  But, difficult to display more than nine dimensions  Important to map dimensions appropriately
  • 41. 41 Used by permission of M. Ward, Worcester Polytechnic Institute Visualization of oil mining data with longitude and latitude mapped to the outer x-, y-axes and ore grade and depth mapped to the inner x-, y-axes Dimensional Stacking
  • 42. 42 Worlds-within-Worlds  Assign the function and two most important parameters to innermost world  Fix all other parameters at constant values - draw other (1 or 2 or 3 dimensional worlds choosing these as the axes)  Software that uses this paradigm  N–vision: Dynamic interaction through data glove and stereo displays, including rotation, scaling (inner) and translation (inner/outer)  Auto Visual: Static interaction by means of queries
  • 43. 43 Tree-Map  Screen-filling method which uses a hierarchical partitioning of the screen into regions depending on the attribute values  The x- and y-dimension of the screen are partitioned alternately according to the attribute values (classes) MSR Netscan Image Ack.: http://www.cs.umd.edu/hcil/treemap-history/all102001.jpg
  • 44. 44 Tree-Map of a File System (Schneiderman)
  • 45. 45 InfoCube  A 3-D visualization technique where hierarchical information is displayed as nested semi-transparent cubes  The outermost cubes correspond to the top level data, while the subnodes or the lower level data are represented as smaller cubes inside the outermost cubes, and so on
  • 46. 46 Three-D Cone Trees  3D cone tree visualization technique works well for up to a thousand nodes or so  First build a 2D circle tree that arranges its nodes in concentric circles centered on the root node  Cannot avoid overlaps when projected to 2D  G. Robertson, J. Mackinlay, S. Card. “Cone Trees: Animated 3D Visualizations of Hierarchical Information”, ACM SIGCHI'91  Graph from Nadeau Software Consulting website: Visualize a social network data set that models the way an infection spreads from one person to the next Ack.: http://nadeausoftware.com/articles/visualization
  • 47. Visualizing Complex Data and Relations  Visualizing non-numerical data: text and social networks  Tag cloud: visualizing user-generated tags  The importance of tag is represented by font size/color  Besides text data, there are also methods to visualize relationships, such as visualizing social networks Newsmap: Google News Stories in 2005
  • 48. 48 Chapter 2: Getting to Know Your Data  Data Objects and Attribute Types  Basic Statistical Descriptions of Data  Data Visualization  Measuring Data Similarity and Dissimilarity  Summary
  • 49. 49 Similarity and Dissimilarity  Similarity  Numerical measure of how alike two data objects are  Value is higher when objects are more alike  Often falls in the range [0,1]  Dissimilarity (e.g., distance)  Numerical measure of how different two data objects are  Lower when objects are more alike  Minimum dissimilarity is often 0  Upper limit varies  Proximity refers to a similarity or dissimilarity
  • 50. 50 Data Matrix and Dissimilarity Matrix  Data matrix  n data points with p dimensions  Two modes  Dissimilarity matrix  n data points, but registers only the distance  A triangular matrix  Single mode                   np x ... nf x ... n1 x ... ... ... ... ... ip x ... if x ... i1 x ... ... ... ... ... 1p x ... 1f x ... 11 x                 0 ... ) 2 , ( ) 1 , ( : : : ) 2 , 3 ( ) ... n d n d 0 d d(3,1 0 d(2,1) 0
  • 51. 51 Proximity Measure for Nominal Attributes  Can take 2 or more states, e.g., red, yellow, blue, green (generalization of a binary attribute)  Method 1: Simple matching  m: # of matches, p: total # of variables  Method 2: Use a large number of binary attributes  creating a new binary attribute for each of the M nominal states p m p j i d   ) , (
  • 52. 52 Proximity Measure for Binary Attributes  A contingency table for binary data  Distance measure for symmetric binary variables:  Distance measure for asymmetric binary variables:  Jaccard coefficient (similarity measure for asymmetric binary variables):  Note: Jaccard coefficient is the same as “coherence”: Object i Object j
  • 53. 53 Dissimilarity between Binary Variables  Example  Gender is a symmetric attribute  The remaining attributes are asymmetric binary  Let the values Y and P be 1, and the value N 0 Name Gender Fever Cough Test-1 Test-2 Test-3 Test-4 Jack M Y N P N N N Mary F Y N P N P N Jim M Y P N N N N 75 . 0 2 1 1 2 1 ) , ( 67 . 0 1 1 1 1 1 ) , ( 33 . 0 1 0 2 1 0 ) , (                mary jim d jim jack d mary jack d
  • 54. 54 Standardizing Numeric Data  Z-score:  X: raw score to be standardized, μ: mean of the population, σ: standard deviation  the distance between the raw score and the population mean in units of the standard deviation  negative when the raw score is below the mean, “+” when above  An alternative way: Calculate the mean absolute deviation where  standardized measure (z-score):  Using mean absolute deviation is more robust than using standard deviation . ) ... 2 1 1 nf f f f x x (x n m     |) | ... | | | (| 1 2 1 f nf f f f f f m x m x m x n s        f f if if s m x z       x z
  • 55. 55 Example: Data Matrix and Dissimilarity Matrix point attribute1 attribute2 x1 1 2 x2 3 5 x3 2 0 x4 4 5 Dissimilarity Matrix (with Euclidean Distance) x1 x2 x3 x4 x1 0 x2 3.61 0 x3 5.1 5.1 0 x4 4.24 1 5.39 0 Data Matrix
  • 56. 56 Distance on Numeric Data: Minkowski Distance  Minkowski distance: A popular distance measure where i = (xi1, xi2, …, xip) and j = (xj1, xj2, …, xjp) are two p-dimensional data objects, and h is the order (the distance so defined is also called L-h norm)  Properties  d(i, j) > 0 if i ≠ j, and d(i, i) = 0 (Positive definiteness)  d(i, j) = d(j, i) (Symmetry)  d(i, j)  d(i, k) + d(k, j) (Triangle Inequality)  A distance that satisfies these properties is a metric
  • 57. 57 Special Cases of Minkowski Distance  h = 1: Manhattan (city block, L1 norm) distance  E.g., the Hamming distance: the number of bits that are different between two binary vectors  h = 2: (L2 norm) Euclidean distance  h  . “supremum” (Lmax norm, L norm) distance.  This is the maximum difference between any component (attribute) of the vectors ) | | ... | | | (| ) , ( 2 2 2 2 2 1 1 p p j x i x j x i x j x i x j i d        | | ... | | | | ) , ( 2 2 1 1 p p j x i x j x i x j x i x j i d       
  • 58. 58 Example: Minkowski Distance Dissimilarity Matrices point attribute 1 attribute 2 x1 1 2 x2 3 5 x3 2 0 x4 4 5 L x1 x2 x3 x4 x1 0 x2 5 0 x3 3 6 0 x4 6 1 7 0 L2 x1 x2 x3 x4 x1 0 x2 3.61 0 x3 2.24 5.1 0 x4 4.24 1 5.39 0 L x1 x2 x3 x4 x1 0 x2 3 0 x3 2 5 0 x4 3 1 5 0 Manhattan (L1) Euclidean (L2) Supremum
  • 59. 59 Ordinal Variables  An ordinal variable can be discrete or continuous  Order is important, e.g., rank  Can be treated like interval-scaled  replace xif by their rank  map the range of each variable onto [0, 1] by replacing i-th object in the f-th variable by  compute the dissimilarity using methods for interval- scaled variables 1 1    f if if M r z } ,..., 1 { f if M r 
  • 60. 60 Attributes of Mixed Type  A database may contain all attribute types  Nominal, symmetric binary, asymmetric binary, numeric, ordinal  One may use a weighted formula to combine their effects  f is binary or nominal: dij (f) = 0 if xif = xjf , or dij (f) = 1 otherwise  f is numeric: use the normalized distance  f is ordinal  Compute ranks rif and  Treat zif as interval-scaled ) ( 1 ) ( ) ( 1 ) , ( f ij p f f ij f ij p f d j i d        1 1    f if M r zif
  • 61. 61 Cosine Similarity  A document can be represented by thousands of attributes, each recording the frequency of a particular word (such as keywords) or phrase in the document.  Other vector objects: gene features in micro-arrays, …  Applications: information retrieval, biologic taxonomy, gene feature mapping, ...  Cosine measure: If d1 and d2 are two vectors (e.g., term-frequency vectors), then cos(d1, d2) = (d1  d2) /||d1|| ||d2|| , where  indicates vector dot product, ||d||: the length of vector d
  • 62. 62 Example: Cosine Similarity  cos(d1, d2) = (d1  d2) /||d1|| ||d2|| , where  indicates vector dot product, ||d|: the length of vector d  Ex: Find the similarity between documents 1 and 2. d1 = (5, 0, 3, 0, 2, 0, 0, 2, 0, 0) d2 = (3, 0, 2, 0, 1, 1, 0, 1, 0, 1) d1d2 = 5*3+0*0+3*2+0*0+2*1+0*1+0*1+2*1+0*0+0*1 = 25 ||d1||= (5*5+0*0+3*3+0*0+2*2+0*0+0*0+2*2+0*0+0*0)0.5=(42)0.5 = 6.481 ||d2||= (3*3+0*0+2*2+0*0+1*1+1*1+0*0+1*1+0*0+1*1)0.5=(17)0.5 = 4.12 cos(d1, d2 ) = 0.94
  • 63. 63 Chapter 2: Getting to Know Your Data  Data Objects and Attribute Types  Basic Statistical Descriptions of Data  Data Visualization  Measuring Data Similarity and Dissimilarity  Summary
  • 64. Summary  Data attribute types: nominal, binary, ordinal, interval-scaled, ratio- scaled  Many types of data sets, e.g., numerical, text, graph, Web, image.  Gain insight into the data by:  Basic statistical data description: central tendency, dispersion, graphical displays  Data visualization: map data onto graphical primitives  Measure data similarity  Above steps are the beginning of data preprocessing.  Many methods have been developed but still an active area of research. 64
  • 65. References  W. Cleveland, Visualizing Data, Hobart Press, 1993  T. Dasu and T. Johnson. Exploratory Data Mining and Data Cleaning. John Wiley, 2003  U. Fayyad, G. Grinstein, and A. Wierse. Information Visualization in Data Mining and Knowledge Discovery, Morgan Kaufmann, 2001  L. Kaufman and P. J. Rousseeuw. Finding Groups in Data: an Introduction to Cluster Analysis. John Wiley & Sons, 1990.  H. V. Jagadish, et al., Special Issue on Data Reduction Techniques. Bulletin of the Tech. Committee on Data Eng., 20(4), Dec. 1997  D. A. Keim. Information visualization and visual data mining, IEEE trans. on Visualization and Computer Graphics, 8(1), 2002  D. Pyle. Data Preparation for Data Mining. Morgan Kaufmann, 1999  S. Santini and R. Jain,” Similarity measures”, IEEE Trans. on Pattern Analysis and Machine Intelligence, 21(9), 1999  E. R. Tufte. The Visual Display of Quantitative Information, 2nd ed., Graphics Press, 2001  C. Yu , et al., Visual data mining of multimedia data for social and behavioral studies, Information Visualization, 8(1), 2009 65