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BHS 204-01 Methods in Behavioral Sciences I. April 23, 2003 Chapter 5 (Ray) Experimental Decision-Making. Inferential Statistics. We use information about groups (samples) to make inferences about populations. Population – all possible cases.
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BHS 204-01Methods in Behavioral Sciences I April 23, 2003 Chapter 5 (Ray) Experimental Decision-Making
Inferential Statistics • We use information about groups (samples) to make inferences about populations. • Population – all possible cases. • Sample – a subset of cases drawn as randomly as possible from the larger population. • Probability tells us whether the sample is representative of the larger population. • If the experiment were repeated would we get the same result?
Examples With Coins • Observed coin tosses are a sample of all possible coin tosses. • Probability rules: • P(A & B) = P(A) x P(B) • P(A or B) = P(A) + P(B) • Figure it out from the rules – or figure it out by listing all possible events and seeing how many produce the expected outcome.
Probabilities can be Observed • Probabilities depend on the frequencies of events possible within a population: • Probability of selecting a male subject from a group is % of males within that group. • Probability of observing H on a coin toss is the frequency of H among the coins sides (H & T). • Probabilities can be combined: • Probability of drawing someone male or under 20 is 20/40 + 15/40 – (overlap) .375 = .825
Normal Distribution • The normal distribution consists of the frequencies likely to be observed with repeated sampling from a population. • It is useful because we can use it to know what percentage of cases are likely to fall within different portions of the curve. • Central Limit Theorem – most of variability will fall within 2 standard deviations of the mean.
Figure 5.3. (p. 116)Probability distribution for combinations resulting from tossing 10 coins.
Figure 5.5. (p. 117)Normal distribution showing standard deviations.
Standard Error of the Mean • With a normal distribution, the means of most sampled groups are likely to fall within a small range of the observed sample mean. • Standard error of the mean – the standard deviation of all means possible to be observed with repeated sampling. • Divide standard deviation by square root of the number of scores (cases). • Standard error defines a confidence interval.
Figure 5.7. (p. 119)Hypothetical distribution of means derived from giving a standardized test to either a large or a small number of students a large number of times.
Hypothesis Testing • We wish to know where the observed mean of a sample falls within the distribution of means from all possible samples. • With two scores, we want to know whether the difference between them is due to sampling variation or the manipulation. • T-test – a widely used statistic for testing differences between means of two groups.
Population vs Sample Statistics • Population statistics: • Mean m • Variance s2 • Standard deviation s • Sample statistics: • Mean M or X • Variance S2 • Standard deviation S or SD
Adjusting for the Population • When inferential statistics are used, an adjustment is made to allow the sample mean to more closely approximate the population mean. • Population variance is calculated by dividing by N-1, not N. • Other statistics show this same adjustment – t-test uses N-1 not N in denominator.
Degrees of Freedom • Degrees of freedom (df) – how many numbers can vary and still produce the observed result. • Population statistics include the degrees of freedom. • Calculated differently depending upon the experimental design – based on the number of groups. • T-Test df = (Ngroup1 -1) + (Ngroup2 -1)
Reporting T-Test Results • Include a sentence that gives the direction of the result, the means, and the t-test results: • Example: • The experimental group showed significantly greater weight gain (M = 55) compared to the control group (M = 21), t(12) = 3.97, p=.0019, two-tailed. • Give the exact probability of the t value. • Underline all statistics.
When to Use a T-Test • When two independent groups are compared. • When sample sizes are small (N< 30). • When the actual population distribution is unknown (not known to be normal). • When the variances within the two groups are unequal. • When sample sizes are unequal.
Using Error Bars in Graphs • Error bars show the standard error of the mean for the observed results. • To visually assess statistical significance, see whether: • The mean (center point of error bar) for one group falls outside the error bars for the other group. • Also compare how large the error bars are for the two groups.
Figure 5.8. (p. 124)Graphic illustration of cereal experiment.