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Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls

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Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls. A picture is worth a thousand words – unless the picture is distorted. Question of the Day. Would you answer the following question honestly in public: Have you been drunk in the past 48 hours?. - PowerPoint PPT Presentation
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Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls A picture is worth a thousand words – unless the picture is distorted.
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Page 1: Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls

Section 8.1Stumbling Through A Minefield of Data

Inspiring Statistical Concepts Through Pitfalls

A picture is worth a thousand words – unless the picture is distorted.

Page 2: Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls

Question of the Day

Would you answer the following questionhonestly in public:

Have you been drunk in the past 48 hours?

Page 3: Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls

Graphically distorted data

Page 4: Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls

Graphically distorted data

Page 5: Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls

Collecting Data

Leading and misleading dataSurveys can produce skewed results by phrasing the questions in ways that might bias the answers.

Page 6: Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls

Collecting Data

Sample Bias – Polluted PoolsThe answers we get often depend on whom we ask.

Page 7: Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls

Collecting Data

Where could bias occur in every day life?

Page 8: Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls

Collecting Data

Are we asking the right question?1.What is the question?2.What role will the data play in answering that

question?

Page 9: Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls

Section 8.2Getting Your Data to Shape Up

Organizing, Describing, and Summarizing Data

Search for the most effectivemeans of making your case.

Page 10: Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls

Question of the Day

What do these numbers have in common:

3.23, 0.360, 82, 1.08, 2,500,000.

Page 11: Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls

Visualizing Data

Pie Charts

Page 12: Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls

Visualizing DataStem and Leaf Plot

Page 13: Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls

Visualizing Data

Histogram

Page 14: Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls

Summarizing Data

Measures of Center (Averages)

Mean – the sum of all the numerical data divided by the number of data points.

Median – the middle data point when the data are lined up in numerical order.

Page 15: Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls

Measuring Variation

Page 16: Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls

Measuring Variation

Five-Number Summary:Minimum ValueFirst QuartileSecond Quartile (Median)Third QuartileMaximum Value

Page 17: Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls

Measuring Spread

Standard Deviation – a measure of how far the average data point differs (or deviates) from the mean.

Page 18: Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls

The Shape of Graphs

Skewed graphs

Page 19: Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls

The Shape of Graphs

Bimodal Distributions

Page 20: Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls

Section 8.3Looking at Super Models

Mathematically Described Distributions

All models are wrong. Some are useful.

George E. P. Box

Page 21: Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls

Question of the Day

Who was a better batter: Joe Jackson or Moises Alou?

Page 22: Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls

Uniform Distributions

Page 23: Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls

Normal Distributions

Page 24: Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls

The Bell Curve

Page 25: Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls

Normal Curves and Standard Deviation

Page 26: Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls

Section 8.4Go Figure

Making Inference from Data

If the going gets tough, do something else.

Page 27: Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls

Question of the Day

If you flip a coin 100 times and see heads only 41 times, how confident are you that your coin is fair?

Page 28: Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls

The Ideas Behind Statistical Inference

Setting 1:There exists a fixed collection of data, but

we only know a sample of it. Our goal is to infer the data of the entire population from analyzing that sample.

Page 29: Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls

The Ideas Behind Statistical Inference

Setting 2:Some fact about reality is unknown, and so

we employ statistical analyses to help us determine what is most likely true.

Page 30: Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls

The Ideas Behind Statistical Inference

Setting 3:Reality contains some probabilistic feature

and we use a random sample to determine what the chances are.

Page 31: Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls

Confidence Intervals

“Poll shows that Arnold Schwarzenegger will receive 46% of the vote with a margin of error.”

What does that statement mean?

3%

Page 32: Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls

When is enough enough?

The sample size is more important than the sample’s percentage of the overall population.

For 95% confidence, a sample size n willhave a margin of error of approximately 1

n

Page 33: Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls

Section 8.5War, Sports, and TigersStatistics Throughout Our Lives

Whenever possible, create an experimentand study the outcomes.

Page 34: Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls

Question of the Day

Is every possible number equally likely in alottery?

Page 35: Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls

The Birth of Genetics

Examining data can drawing conclusions from it can have profound consequences.

Page 36: Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls
Page 37: Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls
Page 38: Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls

Relationships versus Cause and Effect

When we observe that two quantities vary in a related manner, it is natural to wonder if one is the cause of the other.

BEWARE!

Page 39: Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls

Measuring Relationships

Correlation – the extent to which a relationship exists.

Page 40: Section 8.1 Stumbling Through A Minefield of Data Inspiring Statistical Concepts Through Pitfalls

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