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Statistics: The art and Science of Data

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1 Statistics: The art and Science of Data
Chapter 1 Statistics: The art and Science of Data

2 1.1 Where do data come from? What is data? Information
We gain this information from Observations Counts Measurements responses

3 Data Good Data Products of intelligent human effort Bad Data
Results from laziness Lack of understanding Even the desire to mislead others Where do the data come from? Should always be the first question you ask…

4 Data beats personal experience
How will you get relevant data to help answer your questions? It’s very tempting to base conclusions on your experience. In fact, the incidents that stick in our memory are often unusual.

5 Example 1.1a The American Cancer Society, in a booklet titled “The Hopeful side of Cancer,” claimed that about one in three cancer patients is now cured, while in 1930 only one in five patients was cured. That’s encouraging. But where does this encouraging estimate come from? From the state of Connecticut. Why Connecticut? Because it is the only stat that kept record of cancer patients in It is a matter of available data. But Connecticut is not typical of the entire nation. It is densely populated but has no large cities and has few blacks than the national average. Cancer deaths rates are higher in large cities than in rural locations, and higher among blacks than whites. Data from Connecticut alone do not necessarily mirror national trends.

6 Talking about data: individuals and variables
Statistics: The art and science of dealing with data. Good judgment, good math, & even good taste make good statistics. Good judgment is deciding what to measure in order to produce data that helps answer your questions.

7 Measurements are made on individuals and organized in variables.
Individuals: the objects described by a set of data, people, animals and things. Examples: company employee, student names Variables: Characteristics of an individual. A variable can take different values for different variables. Examples: eye color, race, gender, job type, salary, hair color, religion, height, marital status

8 Statistics deals with numbers:
Quantitative Variables: numerical values for which arithmetic operations, add, subtract, multiply, averaging, make sense. Examples: height, weight, age

9 Not all variables are numbers:
Categorical variables: Also called qualitative variables Places individuals into one of several groups or categories. Counts or percents to summarize the data Examples: name, state, eye color, city, hair color

10 Measurements are made on individuals and organized in variables.
In Super Bowl XXXVII, the Tampa Bay Buccaneers defeated the Oakland Raiders. Here is a portion of Tampa Bay’s team roster: In your notes tell me which is the categorical variables and which is the quatitative variables Name No. Pos. Ht Wt Birth date Exp College Brad Johnson 14 QB 77 224 09/13/68 9 Florida State Warren Sapp 99 DT 74 303 12/06/72 8 Miami Martin Gramatica 7 K 68 170 11/27/75 4 Kansas State Tom Tupa P 76 235 06/06/66 Ohio

11 Exercises Starting at page 5 Do questions:

12 Observational Studies
Observes individuals and measure variables of interest Does not attempt to influence the response Purpose is to describe some group or situation “Observe But Don’t Disturb” Using sampling: to gain information about the whole by examining only a part of the population.

13 Example 1.3 An Associated Press news article begins, “people hurt in traffic accidents actually recover more quickly when they cannot collect money for their pain and suffering researchers say in a new study.” The Canadian province of Saskatchewan changed its insurance laws. The old system allowed lawsuits for “pain and suffering”. The new no-fault system paid for medical costs and lost work but not for subjective suffering. The study looked at insurance claims filed between July 1 of the year before the change and December 31 of the year after the change. Under the new system there were not just fewer claims of whiplash neck injuries but faster recovery with less pain for the people who filed claims.

14 Sampling Population: WHOLE
Entire group of individuals about which we want information Example: MWHS student population Sample: PART A part of the population from which we actually collect information. Use to draw conclusions about the whole Example: Mr. Mylius’ Classes “THE DISTINCTION BETWEEN POPULATION & SAMPLE IS BASIC TO STATISTICS”

15 Characteristics of Data
Populations Parameters: a number that describes a population characteristics Sample Statistics: a number that describes a sample characteristic

16 Venn Diagrams : show sample and population

17 Multiple Samples Sample Sample Population

18 Multiple Samples with Intersection
Population Sample Sample Sample

19 Exercise Starting on pg. 9 1.7 together On your own:

20 Census A sample survey that attempts to include the entire population in the sample Is not foolproof Expensive Takes a long time Over count or under count the population Time and money favor samples over census Sample advantages Produce more accurate data than census Example: sampling inventory of spare parts than counting 500,000 parts in a warehouse When would a Census be good to use?

21 Experiments We want to CHANGE behaviors
Deliberately impose some treatment on individuals in order to observe their responses. The purpose of an experiment is to study whether the treatment causes a change in the response. We don’t just observe individuals or ask questions, we actively impose some treatment in order to observe the response. In principle, experiments can give good evidence for cause and effect.

22 Question? There may be a “gender gap” in political part preference in the United States, with women more likely than men to prefer Democratic candidates. A political scientist interviews a large sample of registered voters, both men and women. She asks each voter whether they voted for the Democratic or the Republican candidate in the last congressional election. Is this study an experiment? Why or why not? What variables does the study measure?

23 Exercises Starting on pg. 14 Do question 1.13 as a class
Do questions , 1.18

24 Review for Quiz To study for your quiz feel free to do problems on pg 17 Numbers as practice

25 Activity 1.1 See no evil, Hear No Evil?
With your partner do activity 1.2 as your success starter

26 1.2 Drawing Conclusions from DATA
The Statistical Problem Solving Process 4 step process 1. Ask a question of interest. 2. Produce Data: methods of choice are observational studies and experiments 3. Analyze Data: tools for describing patterns, deviations(variations) from the patterns 4. Interpret the results; How does the data analysis answer the question of interest. Collect the Data Organize the Data Analyze the Data Interpret the Data

27 Example 1.10 Who has tattoos?
1. Ask a question: What percent of U.S. adults have one or more tattoos? 2. Produce data 3. Analyze Data: 4. Interpret Results:

28 Sampling Variability A different samples of the same size taken in the same way from the same population will yield different results.


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