What is Statistics Chapter 1 Mc GrawHillIrwin The

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What is Statistics Chapter 1 Mc. Graw-Hill/Irwin ©The Mc. Graw-Hill Companies, Inc. 2008

What is Statistics Chapter 1 Mc. Graw-Hill/Irwin ©The Mc. Graw-Hill Companies, Inc. 2008

GOALS l l l 2 What is meant by statistics? Understand why we study

GOALS l l l 2 What is meant by statistics? Understand why we study statistics. Explain what is meant by descriptive statistics and inferential statistics. Distinguish between a qualitative variable and a quantitative variable. Describe how a discrete variable is different from a continuous variable. Distinguish among the nominal, ordinal, interval, and ratio levels of measurement.

What Is Meant By Statistics? – Common meaning: – Numerical information such as: l

What Is Meant By Statistics? – Common meaning: – Numerical information such as: l l – – 3 Mean time waiting on hold for technical support is 17 minutes In a recent poll, 21% of respondents approved of the President’s policies Statistic: One figure Statistics: more than one figure

What Is Meant By Statistics? Statistics is interested in what is a typical value

What Is Meant By Statistics? Statistics is interested in what is a typical value and how much variation there is in the data Typical value: – – – Variation – – – 4 Some sort of average (Mean, Median, Mode) How reliable is the average How clustered are the data points around the mean

What is Meant by Statistics? Statistics is the science of collecting, organizing, presenting, analyzing,

What is Meant by Statistics? Statistics is the science of collecting, organizing, presenting, analyzing, and interpreting numerical data to assist in making more effective decisions. 5

Understand why we study statistics l l Because numeric and non-numeric data are everywhere

Understand why we study statistics l l Because numeric and non-numeric data are everywhere In marketing, accounting, finance, economics, politics, sciences, and elsewhere, there are statistics – – – 6 We need to be able to understand statistics when we encounter them We need to not be tricked by misleading statistics We need to use statistics to help us make decisions under future uncertainty

Who Uses Statistics? Statistical techniques are used extensively by marketing, accounting, quality control, consumers,

Who Uses Statistics? Statistical techniques are used extensively by marketing, accounting, quality control, consumers, professional sports people, hospital administrators, educators, politicians, physicians, etc. . . 7

Types of Statistics – Descriptive Statistics - methods of organizing, summarizing, and presenting data

Types of Statistics – Descriptive Statistics - methods of organizing, summarizing, and presenting data in an informative way. 8

Descriptive Statistics EXAMPLE 2: According to Consumer Reports, General Electric washing machine owners reported

Descriptive Statistics EXAMPLE 2: According to Consumer Reports, General Electric washing machine owners reported 9 problems per 100 machines during 2001. The statistic 9 describes the number of problems out of every 100 machines. 9

Descriptive Statistics EXAMPLE 3: Pie Chart (chapter 2) For Running Shoes Sold At Big

Descriptive Statistics EXAMPLE 3: Pie Chart (chapter 2) For Running Shoes Sold At Big 5 Sports 10

Descriptive Statistics EXAMPLE 4: Frequency Distribution (chapter 2) 11

Descriptive Statistics EXAMPLE 4: Frequency Distribution (chapter 2) 11

Types of Statistics – Descriptive Statistics l Inferential Statistics definition 1: The methods used

Types of Statistics – Descriptive Statistics l Inferential Statistics definition 1: The methods used to estimate a property of a population on the basis of a sample. l Inferential Statistics definition 2: A decision, estimate, prediction, or generalization about a population, based on a sample. 12

Population versus Sample A population is a collection of all possible individuals, objects, or

Population versus 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 13

Inferential Statistics Example 1: TV networks constantly monitor the popularity of their programs by

Inferential Statistics Example 1: TV networks constantly monitor the popularity of their programs by hiring Nielsen and other organizations to sample the preferences of TV viewers. 14

Inferential Statistics Example 2: Wine tasters Example 3: The sip a few drops of

Inferential Statistics Example 2: Wine tasters Example 3: The sip a few drops of accounting wine to make a department of a large decision with respect firm will select a to all the wine waiting sample of the to be released for sale. invoices to check for accuracy for all the invoices of the company. 15

Descriptive Statistics Or Inferential Statistics? 16 l There a total of 42, 796 miles

Descriptive Statistics Or Inferential Statistics? 16 l There a total of 42, 796 miles of interstate highways in the United States l Auditors take a sample of a firm’s invoices in order to assess the magnitude of reliability of the accounting invoicing system

Types of Variables l Qualitative or Attribute variable - the characteristic being studied is

Types of Variables l Qualitative or Attribute variable - the characteristic being studied is nonnumeric. l EXAMPLES: Gender, type of automobile owned, state of birth, eye color are examples. l Qualitative data are usually summarized in graphs or bar charts (Nominal or ordinal level of measurement) l 17

Types of Variables l Quantitative variable - information is reported numerically. l EXAMPLES: balance

Types of Variables l Quantitative variable - information is reported numerically. l EXAMPLES: balance in your checking account, minutes remaining in class, or number of children in a family. l Quantitative variables can be classified as either Discrete or Continuous. 18

Quantitative Variables - Classifications l Discrete variables: can only assume certain values and there

Quantitative Variables - Classifications l Discrete variables: can only assume certain values and there are usually “gaps” between values. – 19 EXAMPLE: the number of bedrooms in a house, or the number of hammers sold at the local Home Depot (1, 2, 3, …, etc).

Quantitative Variables - Classifications l Continuous variable can assume any value within a specified

Quantitative Variables - Classifications l Continuous variable can assume any value within a specified range. – – – 20 EXAMPLE: The pressure in a tire, the weight of a pork chop, or the height of students in a class. Usually is measured (accuracy depends on measuring instrument) Money is often categorized as a continuous variable (even though you can’t count between pennies)

Distinguish Between A Qualitative Variable And A Quantitative Variable l l 21 Colors of

Distinguish Between A Qualitative Variable And A Quantitative Variable l l 21 Colors of M & M candies? Amount of money in your retirement account? Score on test? Type of bike you own?

Summary of Types of Variables 22

Summary of Types of Variables 22

Four Levels of Measurement l Levels of measurement dictate: – – The calculations that

Four Levels of Measurement l Levels of measurement dictate: – – The calculations that can be done to summarize & present the data The statistical tests that can be preformed l Nominal level – No order l Ordinal level – Order but no set distance between levels l Interval level - Order with set distances between levels, zero just a point on the scale, no division l Ratio level - Order with set distances between levels, inherent zero starting point, division OK 23

Nominal Level l Nominal level - data that is classified into categories and cannot

Nominal Level l Nominal level - data that is classified into categories and cannot be arranged in any particular order. l l l Observations of a qualitative variable can only be classified and counted. There is no particular order to the labels. Nominal level properties: 1. 2. 24 EXAMPLES: Eye color, gender, car make Data categories are represented by labels or names. Even when the labels are numerically coded, the data categories have no logical order.

Nominal Level 25

Nominal Level 25

Ordinal Level l Ordinal level – involves data arranged in some order, but the

Ordinal Level l Ordinal level – involves data arranged in some order, but the differences between data values cannot be determined or are meaningless. l l Ordinal level properties: 1. 26 EXAMPLE: During a taste test of 4 soft drinks, Mellow Yellow was ranked number 1, Sprite number 2, Seven-up number 3, and Orange Crush number 4. EXAMPLE: How do you rate your instructor? EXAMPLE: Order of finish in race. Data classifications are represented by sets of labels or names (high, medium, low or very good, poor) that have relative values. Because of the relative values, the classified data can be ranked or ordered.

Ordinal Level During a taste test of 4 soft drinks, Coca Cola was ranked

Ordinal Level During a taste test of 4 soft drinks, Coca Cola was ranked number 1, Dr. Pepper number 2, Pepsi number 3, and Root Beer number 4.

Interval Level l Interval level: – – – 28 One category is higher than

Interval Level l Interval level: – – – 28 One category is higher than another (Ordered). There is a constant unit of measurement. Zero is just a point on the scale; or there is no natural zero point. Division of two numbers does not make sense. Scale or rank are good examples l EXAMPLE: Temperature on the Fahrenheit scale. – l EXAMPLE: Shoe size and dress size. – l There is no natural zero point EXAMPLE: Years in which Whole Foods Market Inc. stock split. – l Zero is just a point on the scale. Division of 1992 and 1993 does not make sense. EXAMPLES: Rank of Indi 500 results, Test scores.

Interval Level l Interval level properties: 1. 2. Data classifications are ordered according to

Interval Level l Interval level properties: 1. 2. Data classifications are ordered according to the amount of the characteristic they possess. Equal differences in the characteristic are represented by equal differences in the measurement. 1. 29 The increment amount up or down is always the same.

Ratio Level l Ratio level - the interval level with an inherent zero starting

Ratio Level l Ratio level - the interval level with an inherent zero starting point. Differences and ratios are meaningful for this level of measurement. – 30 Practically all quantitative data are the ratio level of measurement. EXAMPLES: Monthly income of surgeons, distance traveled by Sales Rep. per month, Bank account amount, weight, height, wages, units of production….

Ratio Level l Bank account dollars – – Zero is not just a point

Ratio Level l Bank account dollars – – Zero is not just a point on the scale, it is the inherent starting point. Zero means that you don’t have any money. Zero means that there is a complete absence of money. Division has meaning: l l l 31 Starting balance = $1000. Ending balance = $1500. Decimal equivalent change = 1500/1000 -1 =. 50.

Ratio Level l Ratio level properties: 1. 2. 32 Data classifications are ordered according

Ratio Level l Ratio level properties: 1. 2. 32 Data classifications are ordered according to the amount of the characteristics they posses. Equal differences in the characteristics are represented by equal differences in the number assigned to the classification. The zero point is the absence of the characteristic and the ratio between two numbers is meaningful.

Summary of the Characteristics for Levels of Measurement (example 1) 33

Summary of the Characteristics for Levels of Measurement (example 1) 33

Summary of the Characteristics for Levels of Measurement (example 2) Levels of Data Nominal

Summary of the Characteristics for Levels of Measurement (example 2) Levels of Data Nominal Data may only be classified (no order) 1. 2. 34 Jersey # Make of car Ordinal Interval Ratio Meaningful 0 point Data are ranked Meaningful differences between values 1. 2. Team standings in the Pac 10 CPA exam rank 1. 2. 3. Temperature Shoe size Score on Test & ratio between values 1. 2. Checkbook Bal. Stock values

End of Chapter 1 35

End of Chapter 1 35