SlideShare uma empresa Scribd logo
1 de 40
© 2002 Thomson / South-Western Slide 3-1
Chapter 3
Descriptive
Statistics
© 2002 Thomson / South-Western Slide 3-2
Learning Objectives
• Distinguish between measures of
central tendency, measures of
variability, and measures of shape
• Understand the meanings of mean,
median, mode, quartile, percentile, and
range
• Compute mean, median, mode,
percentile, quartile, range, variance,
standard deviation, and mean absolute
deviation
© 2002 Thomson / South-Western Slide 3-3
Learning Objectives -- Continued
• Differentiate between sample and
population variance and standard
deviation
• Understand the meaning of standard
deviation as it is applied by using the
empirical rule
• Understand box and whisker plots,
skewness, and kurtosis
© 2002 Thomson / South-Western Slide 3-4
Measures of Central Tendency
• Measures of central tendency yield
information about “particular places or
locations in a group of numbers.”
• Common Measures of Location
–Mode
–Median
–Mean
–Percentiles
–Quartiles
© 2002 Thomson / South-Western Slide 3-5
Mode
• The most frequently occurring value in a
data set
• Applicable to all levels of data
measurement (nominal, ordinal, interval,
and ratio)
• Bimodal -- Data sets that have two
modes
• Multimodal -- Data sets that contain
more than two modes
© 2002 Thomson / South-Western Slide 3-6
• The mode is 44.
• There are more 44s
than any other value.
35
37
37
39
40
40
41
41
43
43
43
43
44
44
44
44
44
45
45
46
46
46
46
48
Mode -- Example
© 2002 Thomson / South-Western Slide 3-7
Median (ΔΙΑΜΕΣΟΣ)
• Middle value in an ordered array of
numbers.
• Applicable for ordinal, interval, and ratio
data
• Not applicable for nominal data
• Unaffected by extremely large and
extremely small values.
© 2002 Thomson / South-Western Slide 3-8
Median: Computational Procedure
• First Procedure
– Arrange observations in an ordered array.
– If number of terms is odd, the median is
the middle term of the ordered array.
– If number of terms is even, the median is
the average of the middle two terms.
• Second Procedure
– The median’s position in an ordered array
is given by (n+1)/2.
© 2002 Thomson / South-Western Slide 3-9
Median: Example with
an Odd Number of Terms
Ordered Array includes:
3 4 5 7 8 9 11 14 15 16 16 17 19 19 20 21 22
• There are 17 terms in the ordered array.
• Position of median = (n+1)/2 = (17+1)/2 = 9
• The median is the 9th term, 15.
• If the 22 is replaced by 100, the median
remains at 15.
• If the 3 is replaced by -103, the median
remains at 15.
© 2002 Thomson / South-Western Slide 3-10
Mean (ΜΕΣΟΣ)
• Is the average of a group of numbers
• Applicable for interval and ratio data,
not applicable for nominal or ordinal
data
• Affected by each value in the data set,
including extreme values
• Computed by summing all values in the
data set and dividing the sum by the
number of values in the data set
© 2002 Thomson / South-Western Slide 3-11
Population Mean
  
   

   


X
N N
X X X XN
1 2 3
24 13 19 26 11
5
93
5
18 6
...
.
© 2002 Thomson / South-Western Slide 3-12
Sample Mean
X
X
n n
X X X Xn
 
   

    


 1 2 3
57 86 42 38 90 66
6
379
6
63167
...
.
© 2002 Thomson / South-Western Slide 3-13
Quartiles
Measures of central tendency that divide
a group of data into four subgroups
• Q1: 25% of the data set is below the first
quartile
• Q2: 50% of the data set is below the
second quartile
• Q3: 75% of the data set is below the third
quartile
© 2002 Thomson / South-Western Slide 3-14
Quartiles, continued
• Q1 is equal to the 25th percentile
• Q2 is located at 50th percentile and
equals the median
• Q3 is equal to the 75th percentile
Quartile values are not necessarily
members of the data set
© 2002 Thomson / South-Western Slide 3-15
Quartiles
25% 25% 25% 25%
Q3
Q2
Q1
© 2002 Thomson / South-Western Slide 3-16
• Ordered array: 106, 109, 114, 116, 121,
122, 125, 129
• Q1:
• Q2:
• Q3:
Quartiles: Example
i Q
  


25
100
8 2
109 114
2
1115
1
( ) .
i Q
  


50
100
8 4
116 121
2
1185
2
( ) .
i Q
  


75
100
8 6
122 125
2
1235
3
( ) .
© 2002 Thomson / South-Western Slide 3-17
Measures of Variability
• Measures of variability describe the spread
or the dispersion of a set of data.
• Common Measures of Variability
–Range
–Interquartile Range
–Mean Absolute Deviation
–Variance
–Standard Deviation
– Z scores
–Coefficient of Variation
© 2002 Thomson / South-Western Slide 3-18
Variability
Mean
Mean
Mean
No Variability in Cash Flow
Variability in Cash Flow Mean
© 2002 Thomson / South-Western Slide 3-19
Variability
No Variability
Variability
© 2002 Thomson / South-Western Slide 3-20
Range
• The difference between the largest and
the smallest values in a set of data
• Simple to compute
• Ignores all data points
except the
two extremes
• Example:
Range =
Largest - Smallest =
48 - 35 = 13
35
37
37
39
40
40
41
41
43
43
43
43
44
44
44
44
44
45
45
46
46
46
46
48
© 2002 Thomson / South-Western Slide 3-21
Interquartile Range
• Range of values between the first and third
quartiles
• Range of the “middle half”
• Less influenced by extremes
Interquartile Range Q Q
 
3 1
© 2002 Thomson / South-Western Slide 3-22
Deviation from the Mean
• Data set: 5, 9, 16, 17, 18
• Mean:
• Deviations from the mean: -8, -4, 3, 4, 5
   
X
N
65
5
13
0 5 10 15 20
-8 -4
+3 +4
+5

© 2002 Thomson / South-Western Slide 3-23
Mean Absolute Deviation
• Average of the absolute deviations from
the mean
5
9
16
17
18
-8
-4
+3
+4
+5
0
+8
+4
+3
+4
+5
24
X X   X  
M A D
X
N
. . .
.




 
24
5
4 8
© 2002 Thomson / South-Western Slide 3-24
Population Variance
• Average of the squared deviations from
the arithmetic mean
5
9
16
17
18
-8
-4
+3
+4
+5
0
64
16
9
16
25
130
X X    
2
X  
 
2
2
130
5
26 0






 X
N
.
© 2002 Thomson / South-Western Slide 3-25
Population Standard Deviation
• Square root of
the variance
 
2
2
2
130
5
26 0
26 0
5 1











 X
N
.
.
.
5
9
16
17
18
-8
-4
+3
+4
+5
0
64
16
9
16
25
130
X X    
2
X  
© 2002 Thomson / South-Western Slide 3-26
Empirical Rule
• Data are normally distributed (or
approximately normal)
 
 1
 
 2
 
 3
95
99.7
68
Distance from
the Mean
Percentage of Values
Falling Within Distance
© 2002 Thomson / South-Western Slide 3-27
Sample Variance
• Average of the squared deviations from
the arithmetic mean
2,398
1,844
1,539
1,311
7,092
625
71
-234
-462
0
390,625
5,041
54,756
213,444
663,866
X X X
  
2
X X

 
2
2
1
663 866
3
221 288 67
S
X X
n






,
, .
© 2002 Thomson / South-Western Slide 3-28
Sample Standard Deviation
• Square root of the
sample variance  
2
2
2
1
663 866
3
221 288 67
221 288 67
470 41
S
X X
S
n
S









,
, .
, .
.
2,398
1,844
1,539
1,311
7,092
625
71
-234
-462
0
390,625
5,041
54,756
213,444
663,866
X X X
  
2
X X

© 2002 Thomson / South-Western Slide 3-29
Coefficient of Variation
• Ratio of the standard deviation to the
mean, expressed as a percentage
• Measurement of relative dispersion
 
C V
. .


100
© 2002 Thomson / South-Western Slide 3-30
Coefficient of Variation
 
 
1
29
4 6
100
4 6
29
100
1586
1
1
1
1









.
.
.
. .
CV  
 
2
84
10
100
10
84
100
1190
2
2
2
2









CV
. .
.
© 2002 Thomson / South-Western Slide 3-31
Measures of Shape
• Skewness
– Absence of symmetry
– Extreme values in one side of a
distribution
• Kurtosis
– Peakedness of a distribution
• Box and Whisker Plots
– Graphic display of a distribution
– Reveals skewness
© 2002 Thomson / South-Western Slide 3-32
Skewness
Negatively
Skewed
Positively
Skewed
Symmetric
(Not Skewed)
© 2002 Thomson / South-Western Slide 3-33
Skewness
Negatively
Skewed
Mode
Median
Mean
Symmetric
(Not Skewed)
Mean
Median
Mode
Positively
Skewed
Mode
Median
Mean
© 2002 Thomson / South-Western Slide 3-34
Coefficient of Skewness
• Summary measure for skewness
• If S < 0, the distribution is negatively
skewed (skewed to the left).
• If S = 0, the distribution is symmetric (not
skewed).
• If S > 0, the distribution is positively
skewed (skewed to the right).
 
S
Md


3 

© 2002 Thomson / South-Western Slide 3-35
Coefficient of Skewness
 
 
1
1
1
1
1 1
1
23
26
12 3
3
3 23 26
12 3
073











 
M
S
M
d
d
.
.
.
 
 
2
2
2
2
2 2
2
26
26
12 3
3
3 26 26
12 3
0












M
S
M
d
d
.
.
 
 
3
3
3
3
3 3
3
29
26
12 3
3
3 29 26
12 3
073











 
M
S
M
d
d
.
.
.
© 2002 Thomson / South-Western Slide 3-36
Kurtosis
• Peakedness of a distribution
– Leptokurtic: high and thin
– Mesokurtic: normal in shape
– Platykurtic: flat and spread out
Leptokurtic
Mesokurtic
Platykurtic
© 2002 Thomson / South-Western Slide 3-37
Box and Whisker Plot
• Five specific values are used:
–Median, Q2
–First quartile, Q1
–Third quartile, Q3
–Minimum value in the data set
–Maximum value in the data set
© 2002 Thomson / South-Western Slide 3-38
Box and Whisker Plot, continued
• Inner Fences
– IQR = Q3 - Q1
– Lower inner fence = Q1 - 1.5 IQR
– Upper inner fence = Q3 + 1.5 IQR
• Outer Fences
– Lower outer fence = Q1 - 3.0 IQR
– Upper outer fence = Q3 + 3.0 IQR
© 2002 Thomson / South-Western Slide 3-39
Box and Whisker Plot
Q1 Q3
Q2
Minimum Maximum
© 2002 Thomson / South-Western Slide 3-40
Skewness: Box and Whisker Plots,
and Coefficient of Skewness
Negatively
Skewed
Positively
Skewed
Symmetric
(Not Skewed)
S < 0 S = 0 S > 0

Mais conteúdo relacionado

Mais procurados

Measures of Dispersion
Measures of DispersionMeasures of Dispersion
Measures of DispersionMohit Mahajan
 
Definition of dispersion
Definition of dispersionDefinition of dispersion
Definition of dispersionShah Alam Asim
 
Measures of dispersion
Measures of dispersionMeasures of dispersion
Measures of dispersionyogesh ingle
 
Measure of Dispersion
Measure of DispersionMeasure of Dispersion
Measure of Dispersionsonia gupta
 
Measure of dispersion by Neeraj Bhandari ( Surkhet.Nepal )
Measure of dispersion by Neeraj Bhandari ( Surkhet.Nepal )Measure of dispersion by Neeraj Bhandari ( Surkhet.Nepal )
Measure of dispersion by Neeraj Bhandari ( Surkhet.Nepal )Neeraj Bhandari
 
Chapter 11 ,Measures of Dispersion(statistics)
Chapter  11 ,Measures of Dispersion(statistics)Chapter  11 ,Measures of Dispersion(statistics)
Chapter 11 ,Measures of Dispersion(statistics)Ananya Sharma
 
Measures of dispersion or variation
Measures of dispersion or variationMeasures of dispersion or variation
Measures of dispersion or variationRaj Teotia
 
Measures of dispersion
Measures of dispersionMeasures of dispersion
Measures of dispersionSanoj Fernando
 
Mba i qt unit-2.1_measures of variations
Mba i qt unit-2.1_measures of variationsMba i qt unit-2.1_measures of variations
Mba i qt unit-2.1_measures of variationsRai University
 
Measures of dispersion
Measures of dispersion Measures of dispersion
Measures of dispersion Self-employed
 
Standard deviation by nikita
Standard deviation by nikitaStandard deviation by nikita
Standard deviation by nikitaNikita Dewangan
 

Mais procurados (20)

Measures of Dispersion
Measures of DispersionMeasures of Dispersion
Measures of Dispersion
 
Definition of dispersion
Definition of dispersionDefinition of dispersion
Definition of dispersion
 
Measures of dispersion
Measures of dispersionMeasures of dispersion
Measures of dispersion
 
Measure of Dispersion
Measure of DispersionMeasure of Dispersion
Measure of Dispersion
 
Measure of dispersion by Neeraj Bhandari ( Surkhet.Nepal )
Measure of dispersion by Neeraj Bhandari ( Surkhet.Nepal )Measure of dispersion by Neeraj Bhandari ( Surkhet.Nepal )
Measure of dispersion by Neeraj Bhandari ( Surkhet.Nepal )
 
Dispersion
DispersionDispersion
Dispersion
 
Chapter 11 ,Measures of Dispersion(statistics)
Chapter  11 ,Measures of Dispersion(statistics)Chapter  11 ,Measures of Dispersion(statistics)
Chapter 11 ,Measures of Dispersion(statistics)
 
Measures of dispersion or variation
Measures of dispersion or variationMeasures of dispersion or variation
Measures of dispersion or variation
 
Measures of variability
Measures of variabilityMeasures of variability
Measures of variability
 
Measures of dispersion
Measures of dispersionMeasures of dispersion
Measures of dispersion
 
Measures of Spread
Measures of SpreadMeasures of Spread
Measures of Spread
 
Measures of central tendency and dispersion
Measures of central tendency and dispersionMeasures of central tendency and dispersion
Measures of central tendency and dispersion
 
Measures of dispersion
Measures of dispersionMeasures of dispersion
Measures of dispersion
 
Measures of Dispersion (Variability)
Measures of Dispersion (Variability)Measures of Dispersion (Variability)
Measures of Dispersion (Variability)
 
Mba i qt unit-2.1_measures of variations
Mba i qt unit-2.1_measures of variationsMba i qt unit-2.1_measures of variations
Mba i qt unit-2.1_measures of variations
 
Measures of dispersion
Measures of dispersion Measures of dispersion
Measures of dispersion
 
Standard deviation by nikita
Standard deviation by nikitaStandard deviation by nikita
Standard deviation by nikita
 
Standard deviation
Standard deviationStandard deviation
Standard deviation
 
Measures of dispersion
Measures  of  dispersionMeasures  of  dispersion
Measures of dispersion
 
Standard deviation
Standard deviationStandard deviation
Standard deviation
 

Semelhante a Understanding Descriptive Statistics

Chapter 3 Ken Black 2.ppt
Chapter 3 Ken Black 2.pptChapter 3 Ken Black 2.ppt
Chapter 3 Ken Black 2.pptNurinaSWGotami
 
Central tendency and Variation or Dispersion
Central tendency and Variation or DispersionCentral tendency and Variation or Dispersion
Central tendency and Variation or DispersionJohny Kutty Joseph
 
local_media4419196206087945469 (1).pptx
local_media4419196206087945469 (1).pptxlocal_media4419196206087945469 (1).pptx
local_media4419196206087945469 (1).pptxJayArRodriguez2
 
Rm class-2 part-1
Rm class-2 part-1Rm class-2 part-1
Rm class-2 part-1anupta jana
 
More about data science post.pdf
More about data science post.pdfMore about data science post.pdf
More about data science post.pdfSheetalDandge
 
descriptive statistics.pptx
descriptive statistics.pptxdescriptive statistics.pptx
descriptive statistics.pptxTeddyteddy53
 
Penggambaran Data Secara Numerik
Penggambaran Data Secara NumerikPenggambaran Data Secara Numerik
Penggambaran Data Secara Numerikanom1392
 
Unit-I Measures of Dispersion- Biostatistics - Ravinandan A P.pdf
Unit-I Measures of Dispersion- Biostatistics - Ravinandan A P.pdfUnit-I Measures of Dispersion- Biostatistics - Ravinandan A P.pdf
Unit-I Measures of Dispersion- Biostatistics - Ravinandan A P.pdfRavinandan A P
 
measure of variability (windri). In research include example
measure of variability (windri). In research include examplemeasure of variability (windri). In research include example
measure of variability (windri). In research include examplewindri3
 
Numerical measures stat ppt @ bec doms
Numerical measures stat ppt @ bec domsNumerical measures stat ppt @ bec doms
Numerical measures stat ppt @ bec domsBabasab Patil
 
Time series and forecasting
Time series and forecastingTime series and forecasting
Time series and forecastingmvskrishna
 
Measures of Variability.pptx
Measures of Variability.pptxMeasures of Variability.pptx
Measures of Variability.pptxNehaMishra52555
 
Measures of Central Tendency, Variability and Shapes
Measures of Central Tendency, Variability and ShapesMeasures of Central Tendency, Variability and Shapes
Measures of Central Tendency, Variability and ShapesScholarsPoint1
 
Chapter 3 260110 044503
Chapter 3 260110 044503Chapter 3 260110 044503
Chapter 3 260110 044503guest25d353
 
Jujie and saima introduction of statistical concept
Jujie and saima introduction of statistical conceptJujie and saima introduction of statistical concept
Jujie and saima introduction of statistical conceptJUJIE ATILANO
 

Semelhante a Understanding Descriptive Statistics (20)

Statistics 3, 4
Statistics 3, 4Statistics 3, 4
Statistics 3, 4
 
Chapter 3 Ken Black 2.ppt
Chapter 3 Ken Black 2.pptChapter 3 Ken Black 2.ppt
Chapter 3 Ken Black 2.ppt
 
Central tendency and Variation or Dispersion
Central tendency and Variation or DispersionCentral tendency and Variation or Dispersion
Central tendency and Variation or Dispersion
 
local_media4419196206087945469 (1).pptx
local_media4419196206087945469 (1).pptxlocal_media4419196206087945469 (1).pptx
local_media4419196206087945469 (1).pptx
 
Rm class-2 part-1
Rm class-2 part-1Rm class-2 part-1
Rm class-2 part-1
 
5.DATA SUMMERISATION.ppt
5.DATA SUMMERISATION.ppt5.DATA SUMMERISATION.ppt
5.DATA SUMMERISATION.ppt
 
Statistics
StatisticsStatistics
Statistics
 
More about data science post.pdf
More about data science post.pdfMore about data science post.pdf
More about data science post.pdf
 
descriptive statistics.pptx
descriptive statistics.pptxdescriptive statistics.pptx
descriptive statistics.pptx
 
Penggambaran Data Secara Numerik
Penggambaran Data Secara NumerikPenggambaran Data Secara Numerik
Penggambaran Data Secara Numerik
 
Unit-I Measures of Dispersion- Biostatistics - Ravinandan A P.pdf
Unit-I Measures of Dispersion- Biostatistics - Ravinandan A P.pdfUnit-I Measures of Dispersion- Biostatistics - Ravinandan A P.pdf
Unit-I Measures of Dispersion- Biostatistics - Ravinandan A P.pdf
 
measure of variability (windri). In research include example
measure of variability (windri). In research include examplemeasure of variability (windri). In research include example
measure of variability (windri). In research include example
 
Lecture 1.pptx
Lecture 1.pptxLecture 1.pptx
Lecture 1.pptx
 
Numerical measures stat ppt @ bec doms
Numerical measures stat ppt @ bec domsNumerical measures stat ppt @ bec doms
Numerical measures stat ppt @ bec doms
 
Time series and forecasting
Time series and forecastingTime series and forecasting
Time series and forecasting
 
Measures of Variability.pptx
Measures of Variability.pptxMeasures of Variability.pptx
Measures of Variability.pptx
 
Measures of Central Tendency, Variability and Shapes
Measures of Central Tendency, Variability and ShapesMeasures of Central Tendency, Variability and Shapes
Measures of Central Tendency, Variability and Shapes
 
Chapter 3 260110 044503
Chapter 3 260110 044503Chapter 3 260110 044503
Chapter 3 260110 044503
 
Jujie and saima introduction of statistical concept
Jujie and saima introduction of statistical conceptJujie and saima introduction of statistical concept
Jujie and saima introduction of statistical concept
 
Statistics.pdf
Statistics.pdfStatistics.pdf
Statistics.pdf
 

Último

The Most Excellent Way | 1 Corinthians 13
The Most Excellent Way | 1 Corinthians 13The Most Excellent Way | 1 Corinthians 13
The Most Excellent Way | 1 Corinthians 13Steve Thomason
 
Call Girls in Dwarka Mor Delhi Contact Us 9654467111
Call Girls in Dwarka Mor Delhi Contact Us 9654467111Call Girls in Dwarka Mor Delhi Contact Us 9654467111
Call Girls in Dwarka Mor Delhi Contact Us 9654467111Sapana Sha
 
“Oh GOSH! Reflecting on Hackteria's Collaborative Practices in a Global Do-It...
“Oh GOSH! Reflecting on Hackteria's Collaborative Practices in a Global Do-It...“Oh GOSH! Reflecting on Hackteria's Collaborative Practices in a Global Do-It...
“Oh GOSH! Reflecting on Hackteria's Collaborative Practices in a Global Do-It...Marc Dusseiller Dusjagr
 
The basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptxThe basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptxheathfieldcps1
 
URLs and Routing in the Odoo 17 Website App
URLs and Routing in the Odoo 17 Website AppURLs and Routing in the Odoo 17 Website App
URLs and Routing in the Odoo 17 Website AppCeline George
 
1029 - Danh muc Sach Giao Khoa 10 . pdf
1029 -  Danh muc Sach Giao Khoa 10 . pdf1029 -  Danh muc Sach Giao Khoa 10 . pdf
1029 - Danh muc Sach Giao Khoa 10 . pdfQucHHunhnh
 
Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)eniolaolutunde
 
Beyond the EU: DORA and NIS 2 Directive's Global Impact
Beyond the EU: DORA and NIS 2 Directive's Global ImpactBeyond the EU: DORA and NIS 2 Directive's Global Impact
Beyond the EU: DORA and NIS 2 Directive's Global ImpactPECB
 
Nutritional Needs Presentation - HLTH 104
Nutritional Needs Presentation - HLTH 104Nutritional Needs Presentation - HLTH 104
Nutritional Needs Presentation - HLTH 104misteraugie
 
Student login on Anyboli platform.helpin
Student login on Anyboli platform.helpinStudent login on Anyboli platform.helpin
Student login on Anyboli platform.helpinRaunakKeshri1
 
Advanced Views - Calendar View in Odoo 17
Advanced Views - Calendar View in Odoo 17Advanced Views - Calendar View in Odoo 17
Advanced Views - Calendar View in Odoo 17Celine George
 
Measures of Central Tendency: Mean, Median and Mode
Measures of Central Tendency: Mean, Median and ModeMeasures of Central Tendency: Mean, Median and Mode
Measures of Central Tendency: Mean, Median and ModeThiyagu K
 
Introduction to ArtificiaI Intelligence in Higher Education
Introduction to ArtificiaI Intelligence in Higher EducationIntroduction to ArtificiaI Intelligence in Higher Education
Introduction to ArtificiaI Intelligence in Higher Educationpboyjonauth
 
Accessible design: Minimum effort, maximum impact
Accessible design: Minimum effort, maximum impactAccessible design: Minimum effort, maximum impact
Accessible design: Minimum effort, maximum impactdawncurless
 
Privatization and Disinvestment - Meaning, Objectives, Advantages and Disadva...
Privatization and Disinvestment - Meaning, Objectives, Advantages and Disadva...Privatization and Disinvestment - Meaning, Objectives, Advantages and Disadva...
Privatization and Disinvestment - Meaning, Objectives, Advantages and Disadva...RKavithamani
 
CARE OF CHILD IN INCUBATOR..........pptx
CARE OF CHILD IN INCUBATOR..........pptxCARE OF CHILD IN INCUBATOR..........pptx
CARE OF CHILD IN INCUBATOR..........pptxGaneshChakor2
 
1029-Danh muc Sach Giao Khoa khoi 6.pdf
1029-Danh muc Sach Giao Khoa khoi  6.pdf1029-Danh muc Sach Giao Khoa khoi  6.pdf
1029-Danh muc Sach Giao Khoa khoi 6.pdfQucHHunhnh
 

Último (20)

The Most Excellent Way | 1 Corinthians 13
The Most Excellent Way | 1 Corinthians 13The Most Excellent Way | 1 Corinthians 13
The Most Excellent Way | 1 Corinthians 13
 
Call Girls in Dwarka Mor Delhi Contact Us 9654467111
Call Girls in Dwarka Mor Delhi Contact Us 9654467111Call Girls in Dwarka Mor Delhi Contact Us 9654467111
Call Girls in Dwarka Mor Delhi Contact Us 9654467111
 
“Oh GOSH! Reflecting on Hackteria's Collaborative Practices in a Global Do-It...
“Oh GOSH! Reflecting on Hackteria's Collaborative Practices in a Global Do-It...“Oh GOSH! Reflecting on Hackteria's Collaborative Practices in a Global Do-It...
“Oh GOSH! Reflecting on Hackteria's Collaborative Practices in a Global Do-It...
 
Staff of Color (SOC) Retention Efforts DDSD
Staff of Color (SOC) Retention Efforts DDSDStaff of Color (SOC) Retention Efforts DDSD
Staff of Color (SOC) Retention Efforts DDSD
 
The basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptxThe basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptx
 
URLs and Routing in the Odoo 17 Website App
URLs and Routing in the Odoo 17 Website AppURLs and Routing in the Odoo 17 Website App
URLs and Routing in the Odoo 17 Website App
 
1029 - Danh muc Sach Giao Khoa 10 . pdf
1029 -  Danh muc Sach Giao Khoa 10 . pdf1029 -  Danh muc Sach Giao Khoa 10 . pdf
1029 - Danh muc Sach Giao Khoa 10 . pdf
 
Mattingly "AI & Prompt Design: The Basics of Prompt Design"
Mattingly "AI & Prompt Design: The Basics of Prompt Design"Mattingly "AI & Prompt Design: The Basics of Prompt Design"
Mattingly "AI & Prompt Design: The Basics of Prompt Design"
 
Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)
 
Beyond the EU: DORA and NIS 2 Directive's Global Impact
Beyond the EU: DORA and NIS 2 Directive's Global ImpactBeyond the EU: DORA and NIS 2 Directive's Global Impact
Beyond the EU: DORA and NIS 2 Directive's Global Impact
 
Nutritional Needs Presentation - HLTH 104
Nutritional Needs Presentation - HLTH 104Nutritional Needs Presentation - HLTH 104
Nutritional Needs Presentation - HLTH 104
 
Student login on Anyboli platform.helpin
Student login on Anyboli platform.helpinStudent login on Anyboli platform.helpin
Student login on Anyboli platform.helpin
 
Advanced Views - Calendar View in Odoo 17
Advanced Views - Calendar View in Odoo 17Advanced Views - Calendar View in Odoo 17
Advanced Views - Calendar View in Odoo 17
 
Measures of Central Tendency: Mean, Median and Mode
Measures of Central Tendency: Mean, Median and ModeMeasures of Central Tendency: Mean, Median and Mode
Measures of Central Tendency: Mean, Median and Mode
 
Introduction to ArtificiaI Intelligence in Higher Education
Introduction to ArtificiaI Intelligence in Higher EducationIntroduction to ArtificiaI Intelligence in Higher Education
Introduction to ArtificiaI Intelligence in Higher Education
 
Accessible design: Minimum effort, maximum impact
Accessible design: Minimum effort, maximum impactAccessible design: Minimum effort, maximum impact
Accessible design: Minimum effort, maximum impact
 
Mattingly "AI & Prompt Design: Structured Data, Assistants, & RAG"
Mattingly "AI & Prompt Design: Structured Data, Assistants, & RAG"Mattingly "AI & Prompt Design: Structured Data, Assistants, & RAG"
Mattingly "AI & Prompt Design: Structured Data, Assistants, & RAG"
 
Privatization and Disinvestment - Meaning, Objectives, Advantages and Disadva...
Privatization and Disinvestment - Meaning, Objectives, Advantages and Disadva...Privatization and Disinvestment - Meaning, Objectives, Advantages and Disadva...
Privatization and Disinvestment - Meaning, Objectives, Advantages and Disadva...
 
CARE OF CHILD IN INCUBATOR..........pptx
CARE OF CHILD IN INCUBATOR..........pptxCARE OF CHILD IN INCUBATOR..........pptx
CARE OF CHILD IN INCUBATOR..........pptx
 
1029-Danh muc Sach Giao Khoa khoi 6.pdf
1029-Danh muc Sach Giao Khoa khoi  6.pdf1029-Danh muc Sach Giao Khoa khoi  6.pdf
1029-Danh muc Sach Giao Khoa khoi 6.pdf
 

Understanding Descriptive Statistics

  • 1. © 2002 Thomson / South-Western Slide 3-1 Chapter 3 Descriptive Statistics
  • 2. © 2002 Thomson / South-Western Slide 3-2 Learning Objectives • Distinguish between measures of central tendency, measures of variability, and measures of shape • Understand the meanings of mean, median, mode, quartile, percentile, and range • Compute mean, median, mode, percentile, quartile, range, variance, standard deviation, and mean absolute deviation
  • 3. © 2002 Thomson / South-Western Slide 3-3 Learning Objectives -- Continued • Differentiate between sample and population variance and standard deviation • Understand the meaning of standard deviation as it is applied by using the empirical rule • Understand box and whisker plots, skewness, and kurtosis
  • 4. © 2002 Thomson / South-Western Slide 3-4 Measures of Central Tendency • Measures of central tendency yield information about “particular places or locations in a group of numbers.” • Common Measures of Location –Mode –Median –Mean –Percentiles –Quartiles
  • 5. © 2002 Thomson / South-Western Slide 3-5 Mode • The most frequently occurring value in a data set • Applicable to all levels of data measurement (nominal, ordinal, interval, and ratio) • Bimodal -- Data sets that have two modes • Multimodal -- Data sets that contain more than two modes
  • 6. © 2002 Thomson / South-Western Slide 3-6 • The mode is 44. • There are more 44s than any other value. 35 37 37 39 40 40 41 41 43 43 43 43 44 44 44 44 44 45 45 46 46 46 46 48 Mode -- Example
  • 7. © 2002 Thomson / South-Western Slide 3-7 Median (ΔΙΑΜΕΣΟΣ) • Middle value in an ordered array of numbers. • Applicable for ordinal, interval, and ratio data • Not applicable for nominal data • Unaffected by extremely large and extremely small values.
  • 8. © 2002 Thomson / South-Western Slide 3-8 Median: Computational Procedure • First Procedure – Arrange observations in an ordered array. – If number of terms is odd, the median is the middle term of the ordered array. – If number of terms is even, the median is the average of the middle two terms. • Second Procedure – The median’s position in an ordered array is given by (n+1)/2.
  • 9. © 2002 Thomson / South-Western Slide 3-9 Median: Example with an Odd Number of Terms Ordered Array includes: 3 4 5 7 8 9 11 14 15 16 16 17 19 19 20 21 22 • There are 17 terms in the ordered array. • Position of median = (n+1)/2 = (17+1)/2 = 9 • The median is the 9th term, 15. • If the 22 is replaced by 100, the median remains at 15. • If the 3 is replaced by -103, the median remains at 15.
  • 10. © 2002 Thomson / South-Western Slide 3-10 Mean (ΜΕΣΟΣ) • Is the average of a group of numbers • Applicable for interval and ratio data, not applicable for nominal or ordinal data • Affected by each value in the data set, including extreme values • Computed by summing all values in the data set and dividing the sum by the number of values in the data set
  • 11. © 2002 Thomson / South-Western Slide 3-11 Population Mean               X N N X X X XN 1 2 3 24 13 19 26 11 5 93 5 18 6 ... .
  • 12. © 2002 Thomson / South-Western Slide 3-12 Sample Mean X X n n X X X Xn                1 2 3 57 86 42 38 90 66 6 379 6 63167 ... .
  • 13. © 2002 Thomson / South-Western Slide 3-13 Quartiles Measures of central tendency that divide a group of data into four subgroups • Q1: 25% of the data set is below the first quartile • Q2: 50% of the data set is below the second quartile • Q3: 75% of the data set is below the third quartile
  • 14. © 2002 Thomson / South-Western Slide 3-14 Quartiles, continued • Q1 is equal to the 25th percentile • Q2 is located at 50th percentile and equals the median • Q3 is equal to the 75th percentile Quartile values are not necessarily members of the data set
  • 15. © 2002 Thomson / South-Western Slide 3-15 Quartiles 25% 25% 25% 25% Q3 Q2 Q1
  • 16. © 2002 Thomson / South-Western Slide 3-16 • Ordered array: 106, 109, 114, 116, 121, 122, 125, 129 • Q1: • Q2: • Q3: Quartiles: Example i Q      25 100 8 2 109 114 2 1115 1 ( ) . i Q      50 100 8 4 116 121 2 1185 2 ( ) . i Q      75 100 8 6 122 125 2 1235 3 ( ) .
  • 17. © 2002 Thomson / South-Western Slide 3-17 Measures of Variability • Measures of variability describe the spread or the dispersion of a set of data. • Common Measures of Variability –Range –Interquartile Range –Mean Absolute Deviation –Variance –Standard Deviation – Z scores –Coefficient of Variation
  • 18. © 2002 Thomson / South-Western Slide 3-18 Variability Mean Mean Mean No Variability in Cash Flow Variability in Cash Flow Mean
  • 19. © 2002 Thomson / South-Western Slide 3-19 Variability No Variability Variability
  • 20. © 2002 Thomson / South-Western Slide 3-20 Range • The difference between the largest and the smallest values in a set of data • Simple to compute • Ignores all data points except the two extremes • Example: Range = Largest - Smallest = 48 - 35 = 13 35 37 37 39 40 40 41 41 43 43 43 43 44 44 44 44 44 45 45 46 46 46 46 48
  • 21. © 2002 Thomson / South-Western Slide 3-21 Interquartile Range • Range of values between the first and third quartiles • Range of the “middle half” • Less influenced by extremes Interquartile Range Q Q   3 1
  • 22. © 2002 Thomson / South-Western Slide 3-22 Deviation from the Mean • Data set: 5, 9, 16, 17, 18 • Mean: • Deviations from the mean: -8, -4, 3, 4, 5     X N 65 5 13 0 5 10 15 20 -8 -4 +3 +4 +5 
  • 23. © 2002 Thomson / South-Western Slide 3-23 Mean Absolute Deviation • Average of the absolute deviations from the mean 5 9 16 17 18 -8 -4 +3 +4 +5 0 +8 +4 +3 +4 +5 24 X X   X   M A D X N . . . .       24 5 4 8
  • 24. © 2002 Thomson / South-Western Slide 3-24 Population Variance • Average of the squared deviations from the arithmetic mean 5 9 16 17 18 -8 -4 +3 +4 +5 0 64 16 9 16 25 130 X X     2 X     2 2 130 5 26 0        X N .
  • 25. © 2002 Thomson / South-Western Slide 3-25 Population Standard Deviation • Square root of the variance   2 2 2 130 5 26 0 26 0 5 1             X N . . . 5 9 16 17 18 -8 -4 +3 +4 +5 0 64 16 9 16 25 130 X X     2 X  
  • 26. © 2002 Thomson / South-Western Slide 3-26 Empirical Rule • Data are normally distributed (or approximately normal)    1    2    3 95 99.7 68 Distance from the Mean Percentage of Values Falling Within Distance
  • 27. © 2002 Thomson / South-Western Slide 3-27 Sample Variance • Average of the squared deviations from the arithmetic mean 2,398 1,844 1,539 1,311 7,092 625 71 -234 -462 0 390,625 5,041 54,756 213,444 663,866 X X X    2 X X    2 2 1 663 866 3 221 288 67 S X X n       , , .
  • 28. © 2002 Thomson / South-Western Slide 3-28 Sample Standard Deviation • Square root of the sample variance   2 2 2 1 663 866 3 221 288 67 221 288 67 470 41 S X X S n S          , , . , . . 2,398 1,844 1,539 1,311 7,092 625 71 -234 -462 0 390,625 5,041 54,756 213,444 663,866 X X X    2 X X 
  • 29. © 2002 Thomson / South-Western Slide 3-29 Coefficient of Variation • Ratio of the standard deviation to the mean, expressed as a percentage • Measurement of relative dispersion   C V . .   100
  • 30. © 2002 Thomson / South-Western Slide 3-30 Coefficient of Variation     1 29 4 6 100 4 6 29 100 1586 1 1 1 1          . . . . . CV     2 84 10 100 10 84 100 1190 2 2 2 2          CV . . .
  • 31. © 2002 Thomson / South-Western Slide 3-31 Measures of Shape • Skewness – Absence of symmetry – Extreme values in one side of a distribution • Kurtosis – Peakedness of a distribution • Box and Whisker Plots – Graphic display of a distribution – Reveals skewness
  • 32. © 2002 Thomson / South-Western Slide 3-32 Skewness Negatively Skewed Positively Skewed Symmetric (Not Skewed)
  • 33. © 2002 Thomson / South-Western Slide 3-33 Skewness Negatively Skewed Mode Median Mean Symmetric (Not Skewed) Mean Median Mode Positively Skewed Mode Median Mean
  • 34. © 2002 Thomson / South-Western Slide 3-34 Coefficient of Skewness • Summary measure for skewness • If S < 0, the distribution is negatively skewed (skewed to the left). • If S = 0, the distribution is symmetric (not skewed). • If S > 0, the distribution is positively skewed (skewed to the right).   S Md   3  
  • 35. © 2002 Thomson / South-Western Slide 3-35 Coefficient of Skewness     1 1 1 1 1 1 1 23 26 12 3 3 3 23 26 12 3 073              M S M d d . . .     2 2 2 2 2 2 2 26 26 12 3 3 3 26 26 12 3 0             M S M d d . .     3 3 3 3 3 3 3 29 26 12 3 3 3 29 26 12 3 073              M S M d d . . .
  • 36. © 2002 Thomson / South-Western Slide 3-36 Kurtosis • Peakedness of a distribution – Leptokurtic: high and thin – Mesokurtic: normal in shape – Platykurtic: flat and spread out Leptokurtic Mesokurtic Platykurtic
  • 37. © 2002 Thomson / South-Western Slide 3-37 Box and Whisker Plot • Five specific values are used: –Median, Q2 –First quartile, Q1 –Third quartile, Q3 –Minimum value in the data set –Maximum value in the data set
  • 38. © 2002 Thomson / South-Western Slide 3-38 Box and Whisker Plot, continued • Inner Fences – IQR = Q3 - Q1 – Lower inner fence = Q1 - 1.5 IQR – Upper inner fence = Q3 + 1.5 IQR • Outer Fences – Lower outer fence = Q1 - 3.0 IQR – Upper outer fence = Q3 + 3.0 IQR
  • 39. © 2002 Thomson / South-Western Slide 3-39 Box and Whisker Plot Q1 Q3 Q2 Minimum Maximum
  • 40. © 2002 Thomson / South-Western Slide 3-40 Skewness: Box and Whisker Plots, and Coefficient of Skewness Negatively Skewed Positively Skewed Symmetric (Not Skewed) S < 0 S = 0 S > 0