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INTRODUCTION TO STATISTICS CHAPTER 1: IMPORTANT TERMS & CONCEPTS.

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Presentation on theme: "INTRODUCTION TO STATISTICS CHAPTER 1: IMPORTANT TERMS & CONCEPTS."— Presentation transcript:

1 INTRODUCTION TO STATISTICS CHAPTER 1: IMPORTANT TERMS & CONCEPTS

2 What is STATISTICS?  Statistics is the science of conducting studies to collect, organize, summarize, analyze and draw conclusions from data.

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4 BRANCHES OF STATISTICS STATISTICS DESCRIPTIVEINFERENTIAL Statistics that are collected, organized, etc. using data that already exists. Generalizes from samples to populations. Makes predictions.

5 Identify each statistic as either descriptive or inferential. 1.Texting while driving can make you 23 times more likely to get in an accident. 2.In 2005, 50% of all paper products were recycled. 3.There are 50 to 70 confirmed shark attacks every year.

6 VariablesVariables and types of Data Variables Quantitative DiscreteContinuous Qualitative http://www.usatoday.com/news/snapshot.htm

7 VARIABLES AND DATA  Variable – A characteristic or attribute that can assume different values.  Data – are the values or measures that the variable can assume.  Example: color – r, o, y, g, b, p  Test - A, B, C, D, F Variable Slide

8 QUANTITATIVE VARIABLES  Variables that are numerical in nature and can be ordered or ranked.  Examples: age, weight, height, body temperatures, etc. Variable Slide

9 QUALITATIVE VARIABLES  Variables that can be placed into distinct categories.  Examples: colors, types of foods, seasons, brand names, etc.

10 QUANTITATIVE OR QUALITATIVE? The median age in PA is 40.1 years. Among the state's occupied housing units, 69.6% were owned, compared with 30.4% that were rented. Variable Slide

11 DISCRETE VARIABLES  Assume values that can be counted. (usually whole numbers)  Examples: # of ______, shoe size, etc. Variable Slide

12 CONTINUOUS VARIABLES  Can assume all values between any two specific values. They are usually obtained by measuring.  Examples: temperature, weight, length, etc.

13 DISCRETE OR CONTINUOUS? The median age in PA is 40.1 years. Among the state's occupied housing units, 69.6% were owned, compared with 30.4% that were rented. Next Section

14 MEASUREMENT SCALES OF QUANTITATIVE VARIABLES 1.Nominal: No order or ranking ex: zip codes, locker #’s, phone #’s, etc. 2.Ordinal: Data can be ranked; however precise differences between the ranks do not exist. ex: 1 st, 2 nd, 3 rd ; letter grades, etc.

15 MEASUREMENTS CON’T 3.Interval: Ranks data; Precise differences between units of measure. No meaningful zero. ex: temp., IQ, etc. 4.Ratio: Same as interval, but has a true zero ex: weight, height, length, etc.

16 SAMPLING TECHNIQUES 1.Random: Samples selected by chance. 2.Systematic: Samples selected by numbering each subject and then selecting every kth number.

17 SAMPLING CON’T 3.Stratified: Divide a population into groups according to a common characteristic, then sample from each group. 4.Cluster: Samples taken from already intact groups (usually locative) within a population.

18 USES AND MISUSES


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