Chapter 1
Student Lecture Notes
1-1
Basic Business Statistics (9th Edition)
Chapter 1 Introduction and Data Collection
© 2004 Prentice-Hall, Inc.
Chap 1-1
Chapter Topics
Why a Manager Needs to Know About Statistics The Growth and Development of Modern Statistics
Some Important Definitions
Descriptive Versus Inferential Statistics
Chap 1-2
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Chapter Topics
Why Data Are Needed
Types of Data and Their Sources
Design of Survey Research
Types of Survey Sampling Methods
Evaluating Survey Worthiness
Types of Survey Errors
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(continued)
Chap 1-3
Statistics for Managers Using Microsoft Excel, 2/e
© 1999 Prentice-Hall, Inc.
Chapter 1
Student Lecture Notes
1-2
Why a Manager Needs to Know About Statistics
To Know How to Properly Present Information To Know How to Draw Conclusions about Populations Based on Sample Information
To Know How to Improve Processes
To Know How to Obtain Reliable Forecasts
Chap 1-4
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The Growth and Development of Modern Statistics Needs of government to collect data on its citizenry The development of the mathematics of probability theory The advent of the computer Chap 1-5
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Some Important Definitions
A Population (Universe) is the Whole Collection of Things Under Consideration A Sample is a Portion of the Population Selected for Analysis A Parameter is a Summary Measure Computed to Describe a Characteristic of the Population A Statistic is a Summary Measure Computed to Describe a Characteristic of the Sample
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Chap 1-6
Statistics for Managers Using Microsoft Excel, 2/e
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Chapter 1
Student Lecture Notes
1-3
Population and Sample
Population
Sample Use statistics to summarize features
Use parameters to summarize features
Inference on the population from the sample Chap 1-7
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Statistical Methods
Descriptive Statistics
Inferential Statistics
Collecting, presenting, and characterizing data Drawing conclusions and/or making decisions concerning a population based only on sample data
Chap 1-8
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Descriptive Statistics
Collect Data
Present Data
E.g., Survey E.g., Tables and graphs
Characterize Data
E.g., Sample Mean =
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∑X
i
n
Chap 1-9
Statistics for Managers Using Microsoft Excel, 2/e
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Chapter 1
Student Lecture Notes
1-4
Inferential Statistics Drawing conclusions and/or making decisions concerning a population based on sample results.
Estimation
E.g. Estimate the population mean weight using the sample mean weight
Hypothesis Testing
E.g. Test the claim that the population mean weight value is 120 pounds Chap 1-10
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Why We Need Data
To Provide Input to a Survey
To Provide Input to a Study
To Measure Performance of Ongoing Service or Production Process To Evaluate Conformance to Standards To Assist in Formulating Alternative Courses of Action To Satisfy Curiosity Chap 1-11
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Data Sources Data Sources Print or Electronic Observation
Survey
Experimentation © 2004 Prentice-Hall, Inc.
Chap 1-12
Statistics for Managers Using Microsoft Excel, 2/e
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Chapter 1
Student Lecture Notes
1-5
Design of Survey Research
Choose an Appropriate Mode of Response
Reliable primary modes
Personal interview Telephone interview Mail survey
Less reliable self-selection modes (not appropriate for making inferences about the population)
Television survey Internet survey Printed survey in newspapers and magazines Product or service questionnaires Chap 1-13
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Design of Survey Research
(continued)
Identify Broad Categories
Formulate Accurate Questions
List complete and non-overlapping categories that reflect the theme Clear and unambiguous questions use clear operational definitions – universally accepted definitions
Test the Survey
Pilot test on a small group of participants to assess clarity and length Chap 1-14
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Design of Survey Research
(continued)
Write a Cover Letter
State the goal and purpose of the survey Explain the importance of a response Provide assurance of respondent anonymity Offer incentive gift for respondent participation
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Chap 1-15
Statistics for Managers Using Microsoft Excel, 2/e
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Chapter 1
Student Lecture Notes
1-6
Types of Data Data Categorical (Qualitative)
Numerical (Quantitative)
Discrete
Continuous
Chap 1-16
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Type of Data
(continued)
Categorical random variables yield categorical responses
E.g. Are you married? Yes or No
Numerical random variables yield numerical responses
Discrete random variables yield numerical response that arise from a counting process
E.g. How many cars do you own? 3 cars
Continuous random variables yield numerical responses that arise from a measuring process
E.g. What is your weight? 130 pounds
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Chap 1-17
Levels of Measurement and Types of Measurement Scales
Nominal Scale – distinct categories in which no
ordering is implied
E.g. Student grades: A, B, C, D or F
Interval Scale – an ordered scale in which the difference between the measurements does not involve a true zero point
E.g. Type of stocks invested: growth, income, other and none
Ordinal Scale – distinct categories in which ordering is implied
E.g. Temperature in degrees Celsius
Ratio Scale – an ordered scale in which the difference between the measurements involves a true zero point
E.g. Weight in pounds
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Chap 1-18
Statistics for Managers Using Microsoft Excel, 2/e
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Chapter 1
Student Lecture Notes
1-7
Reasons for Drawing a Sample
Less Time Consuming Than a Census
Less Costly to Administer Than a Census
Less Cumbersome and More Practical to Administer Than a Census of the Population
Chap 1-19
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Types of Sampling Methods Samples
Non-Probability Samples
Judgement
Chunk
Probability Samples Simple Random
Stratified Cluster
Quota
Convenience
Systematic Chap 1-20
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Probability Sampling
Subjects of the Sample are Chosen Based on Known Probabilities Probability Samples
Simple Random © 2004 Prentice-Hall, Inc.
Systematic
Stratified
Cluster Chap 1-21
Statistics for Managers Using Microsoft Excel, 2/e
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Chapter 1
Student Lecture Notes
1-8
Simple Random Samples
Every Individual or Item from the Frame Has an Equal Chance of Being Selected Selection May Be With Replacement or Without Replacement One May Use Table of Random Numbers or Computer Random Number Generators to Obtain Samples
Chap 1-22
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Systematic Samples
Decide on Sample Size: n Divide Frame of N individuals into Groups of k Individuals: k=N/n Randomly Select One Individual from the 1st Group Select Every k-th Individual Thereafter N = 64 n=8
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First Group
k=8
Chap 1-23
Stratified Samples
Population Divided into 2 or More Groups According to Some Common Characteristic Simple Random Sample Selected from Each Group The Two or More Samples are Combined into One
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Chap 1-24
Statistics for Managers Using Microsoft Excel, 2/e
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Chapter 1
Student Lecture Notes
1-9
Cluster Samples
Population Divided into Several “Clusters,” Each Representative of the Population
A Random Sampling of Clusters is Taken
All Items in the Selected Clusters are Studied
Randomly selected 2 clusters
Population divided into 4 clusters
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Chap 1-25
Advantages and Disadvantages
Simple Random Sample & Systematic Sample
Stratified Sample
Simple to use May not be a good representation of the population’s underlying characteristics Ensures representation of individuals across the entire population
Cluster Sample
More cost effective Less efficient (need larger sample to acquire the same level of precision)
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Chap 1-26
Evaluating Survey Worthiness
What is the Purpose of the Survey? Is the Survey Based on a Probability Sample? Coverage Error – Appropriate Frame Nonresponse Error – Follow up Measurement Error – Good Questions Elicit Good Responses Sampling Error – Always Exists
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Chap 1-27
Statistics for Managers Using Microsoft Excel, 2/e
© 1999 Prentice-Hall, Inc.
Chapter 1
Student Lecture Notes
1-10
Types of Survey Errors
Coverage Error
Excluded from frame
Nonresponse Error
Follow up on nonresponses
Sampling Error
Measurement Error
Chance differences from sample to sample Bad Question! Chap 1-28
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Chapter Summary
Addressed Why a Manager Needs to Know about Statistics Discussed the Growth and Development of Modern Statistics Addressed the Notion of Descriptive Versus Inferential Statistics Discussed the Importance of Data
Chap 1-29
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Chapter Summary
(continued)
Defined and Described the Different Types of Data and Sources Discussed the Design of Surveys Discussed Types of Survey Sampling Methods Evaluated Survey Worthiness Described Different Types of Survey Errors
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Chap 1-30
Statistics for Managers Using Microsoft Excel, 2/e
© 1999 Prentice-Hall, Inc.