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Confidence Intervals, Effect Size and Power Chapter 8

Confidence Intervals, Effect Size and Power Chapter 8

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Page 1: Confidence Intervals, Effect Size and Power Chapter 8

Confidence Intervals, Effect Size and Power

Chapter 8

Page 2: Confidence Intervals, Effect Size and Power Chapter 8

Hyde, Fennema & Lamon (1990)

> Mean gender differences in mathematical reasoning were very small.

> When extreme tails of the distributions were removed, differences were smaller and reversed direction (favored girls)

> The gender differences depended on task• Females were better with computation.• Males were better with problem solving.

Page 3: Confidence Intervals, Effect Size and Power Chapter 8

Men, Women, and Math

> An accurate understanding of gender differences may not be found in “significant” effects.

> Each distribution has variability.> Each distribution has overlap.

Page 4: Confidence Intervals, Effect Size and Power Chapter 8

A Gender Difference in Mathematics Performance – amount of overlap as

reported by Hyde (1990)

Page 5: Confidence Intervals, Effect Size and Power Chapter 8

Confidence Intervals

> Point estimate: summary statistic – one number as an estimate of the population• e.g., mean

> Interval estimate: based on our sample statistic, range of sample statistics we would expect if we repeatedly sampled from the same population• e.g., Confidence interval

Page 6: Confidence Intervals, Effect Size and Power Chapter 8

> Interval estimate that includes the mean we would expect for the sample statistic a certain percentage of the time were we to sample from the same population repeatedly• Typically set at 95%

> The range around the mean when we add and subtract a margin of error

> Confirms findings of hypothesis testing and adds more detail

Confidence Intervals

Page 7: Confidence Intervals, Effect Size and Power Chapter 8

Calculating Confidence Intervals

> Step 1: Draw a picture of a distribution that will include confidence intervals

> Step 2: Indicate the bounds of the CI on the drawing

> Step 3: Determine the z statistics that fall at each line marking the middle 95%

> Step 4: Turn the z statistic back into raw means

> Step 5: Check that the CIs make sense

Page 8: Confidence Intervals, Effect Size and Power Chapter 8

Confidence Interval for z-test

Mlower = - z(σM) + Msample

Mupper = z(σM) + Msample

> Think about it: Why do we need two calculations?

Page 9: Confidence Intervals, Effect Size and Power Chapter 8

A 95% Confidence Interval, Part I

Page 10: Confidence Intervals, Effect Size and Power Chapter 8

A 95% Confidence Interval, Part II

Page 11: Confidence Intervals, Effect Size and Power Chapter 8

A 95% Confidence Interval, Part III

Page 12: Confidence Intervals, Effect Size and Power Chapter 8

> Which do you think more accurately represents the data: point estimate or interval estimate?• Why?

> What are the advantages and disadvantages of each method?

Think About It

Page 13: Confidence Intervals, Effect Size and Power Chapter 8

Effect Size: Just How Big Is the Difference?

> Significant = Big?> Significant = Different?> Increasing sample size will make us

more likely to find a statistically significant effect

Page 14: Confidence Intervals, Effect Size and Power Chapter 8

What is effect size?

> Size of a difference that is unaffected by sample size

> Standardization across studies

Page 15: Confidence Intervals, Effect Size and Power Chapter 8

Effect Size & Mean Differences

Imagine both represent significant effects: Which effect is bigger?

Page 16: Confidence Intervals, Effect Size and Power Chapter 8

Effect Size and Standard DeviationNote the spread in the two figures:

Which effect size is bigger?

Page 17: Confidence Intervals, Effect Size and Power Chapter 8

> Decrease the amount of overlap between two distributions:

1. Their means are farther apart 2. The variation within each population is

smaller

Increasing Effect Size

Page 18: Confidence Intervals, Effect Size and Power Chapter 8

> Cohen’s d Estimates effect size> Assesses difference between means

using standard deviation instead of standard error

M

d

Calculating Effect Size

Page 19: Confidence Intervals, Effect Size and Power Chapter 8
Page 20: Confidence Intervals, Effect Size and Power Chapter 8

Prep

> Probability of replicating an effect given a particular population and sample size

> To Calculate• Step 1: Calculate the p value associated with

our statistic (in Appendix B)• Step 2: Use the following equation in Excel

> =NORMSDIST(NORMSINV(1-P)/(SQRT(2)))– Use the actual p value instead of P in the equation

Page 21: Confidence Intervals, Effect Size and Power Chapter 8

Statistical Power

> The measure of our ability to reject the null hypothesis, given that the null is false• The probability that we will reject the null

when we should• The probability that we will avoid a Type II

error

Page 22: Confidence Intervals, Effect Size and Power Chapter 8

Calculating Power

> Step 1: Determine the information needed to calculate power• Population mean, population standard

deviation, sample mean, samp0le size, standard error (based on sample size)

> Step 2: Determine a critical z value and raw mean, to calculate power

> Step 3: Calculate power: the percentage of the distribution of the means for population 2 that falls above the critical value

Page 23: Confidence Intervals, Effect Size and Power Chapter 8
Page 24: Confidence Intervals, Effect Size and Power Chapter 8

Statistical Power: The Whole Picture

Page 25: Confidence Intervals, Effect Size and Power Chapter 8

Increasing Alpha

Page 26: Confidence Intervals, Effect Size and Power Chapter 8

Two-Tailed Verses One-Tailed Tests

Page 27: Confidence Intervals, Effect Size and Power Chapter 8

Increasing Sample Size or Decreasing Standard Deviation

Page 28: Confidence Intervals, Effect Size and Power Chapter 8

Increasing the Difference between the Means

Page 29: Confidence Intervals, Effect Size and Power Chapter 8

> Larger sample size increases power> Alpha level

• Higher level increases power (e.g., from .05 to .10)

> One-tailed tests have more power than two-tailed tests

> Decrease standard deviation> Increase difference between the means

Factors Affecting Power

Page 30: Confidence Intervals, Effect Size and Power Chapter 8

Meta-Analysis

> Meta-analysis considers many studies simultaneously.

> Allows us to think of each individual study as just one data point in a larger study.

Page 31: Confidence Intervals, Effect Size and Power Chapter 8

The Logic of Meta-Analysis

> STEP 1: Select the topic of interest> STEP 2: Locate every study that has> been conducted and meets the criteria> STEP 3: Calculate an effect size, often

Cohen’s d, for every study> STEP 4: Calculate statistics and create

appropriate graphs

Page 32: Confidence Intervals, Effect Size and Power Chapter 8

Meta-Analysis and ElectronicDatabases

Page 33: Confidence Intervals, Effect Size and Power Chapter 8

> Why would it be important to know the statistical power of your study?

Think About It