SlideShare a Scribd company logo
1 of 18
1. Define what is meant by statistics.
2. Explain what is meant by descriptive statistics and inferential
statistics.
3. Distinguish between a qualitative variable and a quantitative
variable.
4. Distinguish between a discrete variable and a continuous
variable.
5. Distinguish among the nominal, ordinal, interval, and ratio levels
of measurement.
6. Define the terms mutually exclusive and exhaustive.
GOALS
When you have completed this chapter, you will be able to:
Chapter One: Introduction
Important: This file is a modified electronic version of Statistical Techniques in Business and Economics
© The McGraw-Hill Companies, Inc., 1999
What is Meant by Statistics?
 Statistics is the science of
collecting, organizing, presenting, ana
lyzing, and interpreting numerical data
for the purpose of assisting in making
a more effective decision.
1-2
Who Uses Statistics?
 In today’s information
society, decisions are made on the
basis of data. A family checks the
neighborhood before purchasing a
house, a company checks the labor
and transportation conditions before
opening a new branch, an engineer
tests the tensile strength of a wire
before winding it into a cable, and so
on.
1-3
Types of Statistics
 Descriptive Statistics: Methods of
organizing, summarizing, and
presenting data in an informative way.
 EXAMPLE 1: A survey found that 49% of the people knew
the name of the first book of the Bible. The statistic 49
describes the number out of every 100 persons who knew
the answer.
 EXAMPLE 2: According to Consumer Reports, Whirlpool
washing machine owners reported 9 problems per 100
machines during 2005. The statistic 9 describes the
number of problems out of every 100 machines.
1-4
Types of Statistics
 Inferential Statistics: A
decision, estimate, prediction, or
generalization about a
population, based on a sample.
 A population is a collection of all
possible individuals, objects, or
measurements of interest.
 A sample is a portion, or part, of the
population of interest.
1-5
Types of Statistics
(examples of inferential statistics)
 EXAMPLE 1: Measuring lifetimes of
transistors
 EXAMPLE 2: Classifying air as healthy
or unhealthy based on the Air Quality
Index (AQI)
 EXAMPLE 3: Collecting data on the
volume of traffic flow in a busy street of
Manila.
1-6
Types of Variables
 Qualitative or Attribute variable: data
in the form of classifications into
different groups or categories. The
characteristic or variable being studied
is nonnumeric.
 EXAMPLES: Gender, religious
affiliation, type of automobile
owned, place of birth, eye color.
1-7
Types of Variables
 Quantitative variable: data in the form
of numerical measurements or counts.
The variable can be reported
numerically.
 EXAMPLE: ozone level of the air,
minutes remaining in class, number of
children in a family.
1-8
Types of Variables
 Quantitative variables can be classified as
either discrete or continuous.
 Discrete variables:Variables which assume a
finite or countable number of possible values.
Usually obtained by counting.
 EXAMPLE: the number of bedrooms in a
house. (1,2,3,..., etc...).
 Continuous variables: Variables which
assume an infinite number of possible values.
Usually obtained by measurement.
 EXAMPLE: The time it takes to fly from
Manila to Cebu.
1-9
Summary of Types of Variables
Qualitative or attribute
(type of car owned)
discrete
(number of children)
continuous
(time taken for an exam)
Quantitative or numerical
DATA
1-11
Sources of Statistical Data
 Researching problems usually
requires published data. Statistics on
these problems can be found in
published articles, journals, and
magazines.
 Published data is not always available
on a given subject. In such
cases, information will have to be
collected and analyzed.
 One way of collecting data is via
questionnaires.
1-12
Levels of Measurement
 Nominal level (scaled): Data that can
only be classified into categories and
cannot be arranged in an ordering
scheme.
 EXAMPLES: eye color, gender,
religious affiliation.
1-13
Levels of Measurement
 Mutually exclusive: An individual or
item that, by virtue of being included in
one category, must be excluded from
any other category.
 EXAMPLE: eye color.
 Exhaustive: each person, object, or
item must be classified in at least one
category.
 EXAMPLE: religious affiliation.
1-14
Levels of Measurement
 Ordinal level: involves data that may
be arranged in some order, but
differences between data values
cannot be determined or are
meaningless.
 EXAMPLE: During a taste test of 4
colas, cola C was ranked number
1, cola B was ranked number 2, cola A
was ranked number 3, and cola D was
ranked number 4.
1-15
Levels of Measurement
 Interval level: similar to the ordinal
level, with the additional property that
meaningful amounts of differences
between data values can be
determined. There is no natural zero
point.
 EXAMPLE: Temperature on the
Fahrenheit scale.
1-16
Levels of Measurement
 Ratio level: the interval level with an
inherent zero starting point.
Differences and ratios are meaningful
for this level of measurement.
 EXAMPLES: money, heights of NBA
players.
1-17
Assessment:
1.A statistic is
a. collection of values b. single value.
c. The sum of several values. d. The largest value in a set of observations
17
2. In descriptive statistics our main objective is to
a. Describe the population. b. Describe the data we
collected.
c. Infer something about the population. d.Compute an average.
3. Which of the following statements is true regarding a population?
a. It must be a large number of values. b. It must refer to people.
c. It is a collection individuals, objects, or measurements.
d. None of the above.
4. Which of the following statements is true regarding a sample?
a. It is a part of population. b. It must contain at least five
observations.
c. It refers to descriptive statistics. d. All of the above are correct.
5. A qualitative variable
a. Always refers to a sample. b. Is nonumeric.
c. Always has only two possible outcomes. d. All of the above are correct.
Assessment:6. A discrete variable
a. Is an example of a qualitative variable. b.Can assume only whole number
values.
c. Can assume only certain clearly separated values.
d. Cannot be negative.
18
7. A nominal scale variable is
a. Usually the result of counting something. b. Has a meaningful zero
point.
c. May assume negative values.
d. Cannot have more than two categories.
8. The ratio scale of measurement
a. Usually involves ranking. b. Cannot assume negative
values.
c. Has a meaningful zero point. d. Is usually based on counting.
9. The ordinal scale of measurement
a. Has a meaningful zero point. b. Is based on ranks.
c. Cannot assume negative values. d. All of the above.
10. Categories are exhaustive when
a. There is a meaningful zero point. b. The objects can be
ranked.
c. Each object must appear in at least one category.
d. Each object can be included in only one category.

More Related Content

What's hot

what is statistics? Mc Graw Hills/Irwin
what is statistics? Mc Graw Hills/Irwinwhat is statistics? Mc Graw Hills/Irwin
what is statistics? Mc Graw Hills/IrwinMaryam Xahra
 
1_ Sample size determination.pptx
1_ Sample size determination.pptx1_ Sample size determination.pptx
1_ Sample size determination.pptxHarunMohamed7
 
National income
National incomeNational income
National incomegentlemoro
 
Shift in supply curve
Shift in supply curveShift in supply curve
Shift in supply curveSomya Goel
 
Correlation and Regression.pdf
Correlation and Regression.pdfCorrelation and Regression.pdf
Correlation and Regression.pdfAadarshSah1
 
3.1 non parametric test
3.1 non parametric test3.1 non parametric test
3.1 non parametric testShital Patil
 
Classification of data
Classification of dataClassification of data
Classification of dataligaya06
 
National Income Concepts
National Income ConceptsNational Income Concepts
National Income ConceptsArnab Ghosh
 
Sample Size Calculations for Impact Evaluations
Sample Size Calculations for Impact EvaluationsSample Size Calculations for Impact Evaluations
Sample Size Calculations for Impact EvaluationsMarcos Vera
 
How government can promote e-commerce
How government can promote e-commerceHow government can promote e-commerce
How government can promote e-commercewebhostingguy
 
Meaning and Importance of Statistics
Meaning and Importance of StatisticsMeaning and Importance of Statistics
Meaning and Importance of StatisticsFlipped Channel
 
marketing balance توازن السوق
   marketing balance توازن السوق   marketing balance توازن السوق
marketing balance توازن السوقAmr Thabet
 
Measures of central tendency
Measures of central tendencyMeasures of central tendency
Measures of central tendencyJoydeep Hazarika
 
Statistics in research by dr. sudhir sahu
Statistics in research by dr. sudhir sahuStatistics in research by dr. sudhir sahu
Statistics in research by dr. sudhir sahuSudhir INDIA
 

What's hot (20)

what is statistics? Mc Graw Hills/Irwin
what is statistics? Mc Graw Hills/Irwinwhat is statistics? Mc Graw Hills/Irwin
what is statistics? Mc Graw Hills/Irwin
 
1_ Sample size determination.pptx
1_ Sample size determination.pptx1_ Sample size determination.pptx
1_ Sample size determination.pptx
 
National income
National incomeNational income
National income
 
Shift in supply curve
Shift in supply curveShift in supply curve
Shift in supply curve
 
Student T - test
Student T -  testStudent T -  test
Student T - test
 
Correlation and Regression.pdf
Correlation and Regression.pdfCorrelation and Regression.pdf
Correlation and Regression.pdf
 
3.1 non parametric test
3.1 non parametric test3.1 non parametric test
3.1 non parametric test
 
Classification of data
Classification of dataClassification of data
Classification of data
 
National Income Concepts
National Income ConceptsNational Income Concepts
National Income Concepts
 
Anova statistics
Anova statisticsAnova statistics
Anova statistics
 
Measures of Dispersion
Measures of DispersionMeasures of Dispersion
Measures of Dispersion
 
Sample Size Calculations for Impact Evaluations
Sample Size Calculations for Impact EvaluationsSample Size Calculations for Impact Evaluations
Sample Size Calculations for Impact Evaluations
 
Chi Square & Anova
Chi Square & AnovaChi Square & Anova
Chi Square & Anova
 
How government can promote e-commerce
How government can promote e-commerceHow government can promote e-commerce
How government can promote e-commerce
 
Meaning and Importance of Statistics
Meaning and Importance of StatisticsMeaning and Importance of Statistics
Meaning and Importance of Statistics
 
T distribution
T distributionT distribution
T distribution
 
marketing balance توازن السوق
   marketing balance توازن السوق   marketing balance توازن السوق
marketing balance توازن السوق
 
Measures of central tendency
Measures of central tendencyMeasures of central tendency
Measures of central tendency
 
Statistics in research by dr. sudhir sahu
Statistics in research by dr. sudhir sahuStatistics in research by dr. sudhir sahu
Statistics in research by dr. sudhir sahu
 
MODE.pptx
MODE.pptxMODE.pptx
MODE.pptx
 

Viewers also liked

เครื่องใช้ไฟฟ้า
เครื่องใช้ไฟฟ้าเครื่องใช้ไฟฟ้า
เครื่องใช้ไฟฟ้าPleum Ps
 
Does africa need the bw is challenges v4
Does africa need the bw is challenges v4Does africa need the bw is challenges v4
Does africa need the bw is challenges v4Mark Ellyne
 
Daniel acero taller 4
Daniel acero taller 4Daniel acero taller 4
Daniel acero taller 4Daniel Acero
 
2016_BioITWorld_whitepaper
2016_BioITWorld_whitepaper2016_BioITWorld_whitepaper
2016_BioITWorld_whitepaperMark Evans
 
เครื่องใช้ไฟฟ้าและประเภทเครื่องใช้ไฟฟ้า
เครื่องใช้ไฟฟ้าและประเภทเครื่องใช้ไฟฟ้าเครื่องใช้ไฟฟ้าและประเภทเครื่องใช้ไฟฟ้า
เครื่องใช้ไฟฟ้าและประเภทเครื่องใช้ไฟฟ้าPleum Ps
 
Hime insurance rutherford nj
Hime insurance rutherford njHime insurance rutherford nj
Hime insurance rutherford njmanzoins56
 
A.introduction tech.
A.introduction   tech.A.introduction   tech.
A.introduction tech.girlie22
 
Pressure measurements new 2007
Pressure measurements new 2007Pressure measurements new 2007
Pressure measurements new 2007girlie22
 
презентация о шекспире 1
презентация о шекспире 1презентация о шекспире 1
презентация о шекспире 1yulia_nik
 
ศ นย ควบค_มระประสาท (ต_อ)
ศ นย ควบค_มระประสาท (ต_อ)ศ นย ควบค_มระประสาท (ต_อ)
ศ นย ควบค_มระประสาท (ต_อ)Natthaya Khaothong
 
บทท 8 ระบบประสาท (1)
บทท   8 ระบบประสาท (1)บทท   8 ระบบประสาท (1)
บทท 8 ระบบประสาท (1)Natthaya Khaothong
 

Viewers also liked (18)

Father's day
Father's dayFather's day
Father's day
 
Topic father's day
Topic  father's dayTopic  father's day
Topic father's day
 
เครื่องใช้ไฟฟ้า
เครื่องใช้ไฟฟ้าเครื่องใช้ไฟฟ้า
เครื่องใช้ไฟฟ้า
 
Does africa need the bw is challenges v4
Does africa need the bw is challenges v4Does africa need the bw is challenges v4
Does africa need the bw is challenges v4
 
Internet Guide
Internet GuideInternet Guide
Internet Guide
 
Daniel acero taller 4
Daniel acero taller 4Daniel acero taller 4
Daniel acero taller 4
 
2016_BioITWorld_whitepaper
2016_BioITWorld_whitepaper2016_BioITWorld_whitepaper
2016_BioITWorld_whitepaper
 
เครื่องใช้ไฟฟ้าและประเภทเครื่องใช้ไฟฟ้า
เครื่องใช้ไฟฟ้าและประเภทเครื่องใช้ไฟฟ้าเครื่องใช้ไฟฟ้าและประเภทเครื่องใช้ไฟฟ้า
เครื่องใช้ไฟฟ้าและประเภทเครื่องใช้ไฟฟ้า
 
Topic mother's day
Topic mother's dayTopic mother's day
Topic mother's day
 
Hime insurance rutherford nj
Hime insurance rutherford njHime insurance rutherford nj
Hime insurance rutherford nj
 
Practica blog
Practica blogPractica blog
Practica blog
 
Father's day
Father's dayFather's day
Father's day
 
A.introduction tech.
A.introduction   tech.A.introduction   tech.
A.introduction tech.
 
Japan Quiz!
Japan Quiz!Japan Quiz!
Japan Quiz!
 
Pressure measurements new 2007
Pressure measurements new 2007Pressure measurements new 2007
Pressure measurements new 2007
 
презентация о шекспире 1
презентация о шекспире 1презентация о шекспире 1
презентация о шекспире 1
 
ศ นย ควบค_มระประสาท (ต_อ)
ศ นย ควบค_มระประสาท (ต_อ)ศ นย ควบค_มระประสาท (ต_อ)
ศ นย ควบค_มระประสาท (ต_อ)
 
บทท 8 ระบบประสาท (1)
บทท   8 ระบบประสาท (1)บทท   8 ระบบประสาท (1)
บทท 8 ระบบประสาท (1)
 

Similar to Presentation1

Similar to Presentation1 (20)

Chapter 01 mis
Chapter 01 misChapter 01 mis
Chapter 01 mis
 
Statistics: Chapter One
Statistics: Chapter OneStatistics: Chapter One
Statistics: Chapter One
 
7jjjjjjjjjjjjjvcxzffghjknbvfhjknbvcduukkk
7jjjjjjjjjjjjjvcxzffghjknbvfhjknbvcduukkk7jjjjjjjjjjjjjvcxzffghjknbvfhjknbvcduukkk
7jjjjjjjjjjjjjvcxzffghjknbvfhjknbvcduukkk
 
Chapter 01
Chapter 01Chapter 01
Chapter 01
 
Statistics (2).doc
Statistics (2).docStatistics (2).doc
Statistics (2).doc
 
Stat11t chapter1
Stat11t chapter1Stat11t chapter1
Stat11t chapter1
 
Stat11t Chapter1
Stat11t Chapter1Stat11t Chapter1
Stat11t Chapter1
 
Chap001
Chap001Chap001
Chap001
 
chapter_01_12.ppt
chapter_01_12.pptchapter_01_12.ppt
chapter_01_12.ppt
 
Bab 1.ppt
Bab 1.pptBab 1.ppt
Bab 1.ppt
 
Lesson 3 basic terms in statistics
Lesson 3 basic terms in statisticsLesson 3 basic terms in statistics
Lesson 3 basic terms in statistics
 
Research Method chapter 6.pptx
Research Method chapter 6.pptxResearch Method chapter 6.pptx
Research Method chapter 6.pptx
 
English
EnglishEnglish
English
 
intro to statistics
intro to statisticsintro to statistics
intro to statistics
 
Statistics 1
Statistics 1Statistics 1
Statistics 1
 
Types of data 1.2
Types of data 1.2Types of data 1.2
Types of data 1.2
 
SPSS software application.pdf
SPSS software application.pdfSPSS software application.pdf
SPSS software application.pdf
 
Chap001.ppt
Chap001.pptChap001.ppt
Chap001.ppt
 
statistics Lesson 1
statistics Lesson 1statistics Lesson 1
statistics Lesson 1
 
Probability and statistics(assign 7 and 8)
Probability and statistics(assign 7 and 8)Probability and statistics(assign 7 and 8)
Probability and statistics(assign 7 and 8)
 

Recently uploaded

New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024
New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024
New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024BookNet Canada
 
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks..."LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...Fwdays
 
Transcript: New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024
Transcript: New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024Transcript: New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024
Transcript: New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024BookNet Canada
 
Nell’iperspazio con Rocket: il Framework Web di Rust!
Nell’iperspazio con Rocket: il Framework Web di Rust!Nell’iperspazio con Rocket: il Framework Web di Rust!
Nell’iperspazio con Rocket: il Framework Web di Rust!Commit University
 
DevoxxFR 2024 Reproducible Builds with Apache Maven
DevoxxFR 2024 Reproducible Builds with Apache MavenDevoxxFR 2024 Reproducible Builds with Apache Maven
DevoxxFR 2024 Reproducible Builds with Apache MavenHervé Boutemy
 
Gen AI in Business - Global Trends Report 2024.pdf
Gen AI in Business - Global Trends Report 2024.pdfGen AI in Business - Global Trends Report 2024.pdf
Gen AI in Business - Global Trends Report 2024.pdfAddepto
 
DevEX - reference for building teams, processes, and platforms
DevEX - reference for building teams, processes, and platformsDevEX - reference for building teams, processes, and platforms
DevEX - reference for building teams, processes, and platformsSergiu Bodiu
 
Anypoint Exchange: It’s Not Just a Repo!
Anypoint Exchange: It’s Not Just a Repo!Anypoint Exchange: It’s Not Just a Repo!
Anypoint Exchange: It’s Not Just a Repo!Manik S Magar
 
Beyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
Beyond Boundaries: Leveraging No-Code Solutions for Industry InnovationBeyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
Beyond Boundaries: Leveraging No-Code Solutions for Industry InnovationSafe Software
 
Streamlining Python Development: A Guide to a Modern Project Setup
Streamlining Python Development: A Guide to a Modern Project SetupStreamlining Python Development: A Guide to a Modern Project Setup
Streamlining Python Development: A Guide to a Modern Project SetupFlorian Wilhelm
 
Story boards and shot lists for my a level piece
Story boards and shot lists for my a level pieceStory boards and shot lists for my a level piece
Story boards and shot lists for my a level piececharlottematthew16
 
Advanced Test Driven-Development @ php[tek] 2024
Advanced Test Driven-Development @ php[tek] 2024Advanced Test Driven-Development @ php[tek] 2024
Advanced Test Driven-Development @ php[tek] 2024Scott Keck-Warren
 
My Hashitalk Indonesia April 2024 Presentation
My Hashitalk Indonesia April 2024 PresentationMy Hashitalk Indonesia April 2024 Presentation
My Hashitalk Indonesia April 2024 PresentationRidwan Fadjar
 
"Federated learning: out of reach no matter how close",Oleksandr Lapshyn
"Federated learning: out of reach no matter how close",Oleksandr Lapshyn"Federated learning: out of reach no matter how close",Oleksandr Lapshyn
"Federated learning: out of reach no matter how close",Oleksandr LapshynFwdays
 
Unleash Your Potential - Namagunga Girls Coding Club
Unleash Your Potential - Namagunga Girls Coding ClubUnleash Your Potential - Namagunga Girls Coding Club
Unleash Your Potential - Namagunga Girls Coding ClubKalema Edgar
 
Tampa BSides - Chef's Tour of Microsoft Security Adoption Framework (SAF)
Tampa BSides - Chef's Tour of Microsoft Security Adoption Framework (SAF)Tampa BSides - Chef's Tour of Microsoft Security Adoption Framework (SAF)
Tampa BSides - Chef's Tour of Microsoft Security Adoption Framework (SAF)Mark Simos
 
Artificial intelligence in cctv survelliance.pptx
Artificial intelligence in cctv survelliance.pptxArtificial intelligence in cctv survelliance.pptx
Artificial intelligence in cctv survelliance.pptxhariprasad279825
 
"ML in Production",Oleksandr Bagan
"ML in Production",Oleksandr Bagan"ML in Production",Oleksandr Bagan
"ML in Production",Oleksandr BaganFwdays
 
Training state-of-the-art general text embedding
Training state-of-the-art general text embeddingTraining state-of-the-art general text embedding
Training state-of-the-art general text embeddingZilliz
 
Dev Dives: Streamline document processing with UiPath Studio Web
Dev Dives: Streamline document processing with UiPath Studio WebDev Dives: Streamline document processing with UiPath Studio Web
Dev Dives: Streamline document processing with UiPath Studio WebUiPathCommunity
 

Recently uploaded (20)

New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024
New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024
New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024
 
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks..."LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
 
Transcript: New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024
Transcript: New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024Transcript: New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024
Transcript: New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024
 
Nell’iperspazio con Rocket: il Framework Web di Rust!
Nell’iperspazio con Rocket: il Framework Web di Rust!Nell’iperspazio con Rocket: il Framework Web di Rust!
Nell’iperspazio con Rocket: il Framework Web di Rust!
 
DevoxxFR 2024 Reproducible Builds with Apache Maven
DevoxxFR 2024 Reproducible Builds with Apache MavenDevoxxFR 2024 Reproducible Builds with Apache Maven
DevoxxFR 2024 Reproducible Builds with Apache Maven
 
Gen AI in Business - Global Trends Report 2024.pdf
Gen AI in Business - Global Trends Report 2024.pdfGen AI in Business - Global Trends Report 2024.pdf
Gen AI in Business - Global Trends Report 2024.pdf
 
DevEX - reference for building teams, processes, and platforms
DevEX - reference for building teams, processes, and platformsDevEX - reference for building teams, processes, and platforms
DevEX - reference for building teams, processes, and platforms
 
Anypoint Exchange: It’s Not Just a Repo!
Anypoint Exchange: It’s Not Just a Repo!Anypoint Exchange: It’s Not Just a Repo!
Anypoint Exchange: It’s Not Just a Repo!
 
Beyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
Beyond Boundaries: Leveraging No-Code Solutions for Industry InnovationBeyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
Beyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
 
Streamlining Python Development: A Guide to a Modern Project Setup
Streamlining Python Development: A Guide to a Modern Project SetupStreamlining Python Development: A Guide to a Modern Project Setup
Streamlining Python Development: A Guide to a Modern Project Setup
 
Story boards and shot lists for my a level piece
Story boards and shot lists for my a level pieceStory boards and shot lists for my a level piece
Story boards and shot lists for my a level piece
 
Advanced Test Driven-Development @ php[tek] 2024
Advanced Test Driven-Development @ php[tek] 2024Advanced Test Driven-Development @ php[tek] 2024
Advanced Test Driven-Development @ php[tek] 2024
 
My Hashitalk Indonesia April 2024 Presentation
My Hashitalk Indonesia April 2024 PresentationMy Hashitalk Indonesia April 2024 Presentation
My Hashitalk Indonesia April 2024 Presentation
 
"Federated learning: out of reach no matter how close",Oleksandr Lapshyn
"Federated learning: out of reach no matter how close",Oleksandr Lapshyn"Federated learning: out of reach no matter how close",Oleksandr Lapshyn
"Federated learning: out of reach no matter how close",Oleksandr Lapshyn
 
Unleash Your Potential - Namagunga Girls Coding Club
Unleash Your Potential - Namagunga Girls Coding ClubUnleash Your Potential - Namagunga Girls Coding Club
Unleash Your Potential - Namagunga Girls Coding Club
 
Tampa BSides - Chef's Tour of Microsoft Security Adoption Framework (SAF)
Tampa BSides - Chef's Tour of Microsoft Security Adoption Framework (SAF)Tampa BSides - Chef's Tour of Microsoft Security Adoption Framework (SAF)
Tampa BSides - Chef's Tour of Microsoft Security Adoption Framework (SAF)
 
Artificial intelligence in cctv survelliance.pptx
Artificial intelligence in cctv survelliance.pptxArtificial intelligence in cctv survelliance.pptx
Artificial intelligence in cctv survelliance.pptx
 
"ML in Production",Oleksandr Bagan
"ML in Production",Oleksandr Bagan"ML in Production",Oleksandr Bagan
"ML in Production",Oleksandr Bagan
 
Training state-of-the-art general text embedding
Training state-of-the-art general text embeddingTraining state-of-the-art general text embedding
Training state-of-the-art general text embedding
 
Dev Dives: Streamline document processing with UiPath Studio Web
Dev Dives: Streamline document processing with UiPath Studio WebDev Dives: Streamline document processing with UiPath Studio Web
Dev Dives: Streamline document processing with UiPath Studio Web
 

Presentation1

  • 1. 1. Define what is meant by statistics. 2. Explain what is meant by descriptive statistics and inferential statistics. 3. Distinguish between a qualitative variable and a quantitative variable. 4. Distinguish between a discrete variable and a continuous variable. 5. Distinguish among the nominal, ordinal, interval, and ratio levels of measurement. 6. Define the terms mutually exclusive and exhaustive. GOALS When you have completed this chapter, you will be able to: Chapter One: Introduction Important: This file is a modified electronic version of Statistical Techniques in Business and Economics © The McGraw-Hill Companies, Inc., 1999
  • 2. What is Meant by Statistics?  Statistics is the science of collecting, organizing, presenting, ana lyzing, and interpreting numerical data for the purpose of assisting in making a more effective decision. 1-2
  • 3. Who Uses Statistics?  In today’s information society, decisions are made on the basis of data. A family checks the neighborhood before purchasing a house, a company checks the labor and transportation conditions before opening a new branch, an engineer tests the tensile strength of a wire before winding it into a cable, and so on. 1-3
  • 4. Types of Statistics  Descriptive Statistics: Methods of organizing, summarizing, and presenting data in an informative way.  EXAMPLE 1: A survey found that 49% of the people knew the name of the first book of the Bible. The statistic 49 describes the number out of every 100 persons who knew the answer.  EXAMPLE 2: According to Consumer Reports, Whirlpool washing machine owners reported 9 problems per 100 machines during 2005. The statistic 9 describes the number of problems out of every 100 machines. 1-4
  • 5. Types of Statistics  Inferential Statistics: A decision, estimate, prediction, or generalization about a population, based on a sample.  A population is a collection of all possible individuals, objects, or measurements of interest.  A sample is a portion, or part, of the population of interest. 1-5
  • 6. Types of Statistics (examples of inferential statistics)  EXAMPLE 1: Measuring lifetimes of transistors  EXAMPLE 2: Classifying air as healthy or unhealthy based on the Air Quality Index (AQI)  EXAMPLE 3: Collecting data on the volume of traffic flow in a busy street of Manila. 1-6
  • 7. Types of Variables  Qualitative or Attribute variable: data in the form of classifications into different groups or categories. The characteristic or variable being studied is nonnumeric.  EXAMPLES: Gender, religious affiliation, type of automobile owned, place of birth, eye color. 1-7
  • 8. Types of Variables  Quantitative variable: data in the form of numerical measurements or counts. The variable can be reported numerically.  EXAMPLE: ozone level of the air, minutes remaining in class, number of children in a family. 1-8
  • 9. Types of Variables  Quantitative variables can be classified as either discrete or continuous.  Discrete variables:Variables which assume a finite or countable number of possible values. Usually obtained by counting.  EXAMPLE: the number of bedrooms in a house. (1,2,3,..., etc...).  Continuous variables: Variables which assume an infinite number of possible values. Usually obtained by measurement.  EXAMPLE: The time it takes to fly from Manila to Cebu. 1-9
  • 10. Summary of Types of Variables Qualitative or attribute (type of car owned) discrete (number of children) continuous (time taken for an exam) Quantitative or numerical DATA 1-11
  • 11. Sources of Statistical Data  Researching problems usually requires published data. Statistics on these problems can be found in published articles, journals, and magazines.  Published data is not always available on a given subject. In such cases, information will have to be collected and analyzed.  One way of collecting data is via questionnaires. 1-12
  • 12. Levels of Measurement  Nominal level (scaled): Data that can only be classified into categories and cannot be arranged in an ordering scheme.  EXAMPLES: eye color, gender, religious affiliation. 1-13
  • 13. Levels of Measurement  Mutually exclusive: An individual or item that, by virtue of being included in one category, must be excluded from any other category.  EXAMPLE: eye color.  Exhaustive: each person, object, or item must be classified in at least one category.  EXAMPLE: religious affiliation. 1-14
  • 14. Levels of Measurement  Ordinal level: involves data that may be arranged in some order, but differences between data values cannot be determined or are meaningless.  EXAMPLE: During a taste test of 4 colas, cola C was ranked number 1, cola B was ranked number 2, cola A was ranked number 3, and cola D was ranked number 4. 1-15
  • 15. Levels of Measurement  Interval level: similar to the ordinal level, with the additional property that meaningful amounts of differences between data values can be determined. There is no natural zero point.  EXAMPLE: Temperature on the Fahrenheit scale. 1-16
  • 16. Levels of Measurement  Ratio level: the interval level with an inherent zero starting point. Differences and ratios are meaningful for this level of measurement.  EXAMPLES: money, heights of NBA players. 1-17
  • 17. Assessment: 1.A statistic is a. collection of values b. single value. c. The sum of several values. d. The largest value in a set of observations 17 2. In descriptive statistics our main objective is to a. Describe the population. b. Describe the data we collected. c. Infer something about the population. d.Compute an average. 3. Which of the following statements is true regarding a population? a. It must be a large number of values. b. It must refer to people. c. It is a collection individuals, objects, or measurements. d. None of the above. 4. Which of the following statements is true regarding a sample? a. It is a part of population. b. It must contain at least five observations. c. It refers to descriptive statistics. d. All of the above are correct. 5. A qualitative variable a. Always refers to a sample. b. Is nonumeric. c. Always has only two possible outcomes. d. All of the above are correct.
  • 18. Assessment:6. A discrete variable a. Is an example of a qualitative variable. b.Can assume only whole number values. c. Can assume only certain clearly separated values. d. Cannot be negative. 18 7. A nominal scale variable is a. Usually the result of counting something. b. Has a meaningful zero point. c. May assume negative values. d. Cannot have more than two categories. 8. The ratio scale of measurement a. Usually involves ranking. b. Cannot assume negative values. c. Has a meaningful zero point. d. Is usually based on counting. 9. The ordinal scale of measurement a. Has a meaningful zero point. b. Is based on ranks. c. Cannot assume negative values. d. All of the above. 10. Categories are exhaustive when a. There is a meaningful zero point. b. The objects can be ranked. c. Each object must appear in at least one category. d. Each object can be included in only one category.