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Stats 95 t-Tests

Stats 95 t-Tests. Single Sample Paired Samples Independent Samples. William Sealy Gosset. t Distributions. t dist. are used when we know the mean of the population but not the SD of the population from which our sample is drawn t dist. are useful when we have small samples.

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Stats 95 t-Tests

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  1. Stats 95t-Tests • Single Sample • Paired Samples • Independent Samples William Sealy Gosset

  2. t Distributions • t dist. are used when we know the mean of the population but not the SD of the population from which our sample is drawn • t dist. are useful when we have small samples. • t dist is flatter and has fatter tails • As sample size approaches 30, t looks like z (normal)dist. • Same Three Assumptions • Dependent Variable is scale • Random selection • Normal Distribution

  3. Fat Tails Lose Weight With Larger Sample Size

  4. The Robust Nature of the t Statistics Unfortunately, we very seldom know the if the population is normal because usually all the information we have about a population is in our study, a sample of 10-20. Fortunately, 1) distributions in social sciences often approximate a normal curve, and 2) according to Central Limit Theorem the sample mean you have gathered is part of a normal distribution of sample means, and 3) in practice t tests statisticians have found the test is accurate even with populations far from normal

  5. The Robust Nature of the t Statistics • The only situation in which using a t test is likely to give a seriously distorted result is when you are using a one-tailed testand the population is highly skewed.

  6. When To Use Single Sample t-Statistic • 1 Nominal Independent Variable • 1 Scale Dependent Variable • Population Mean, No Population Standard Deviation Check Assumptions • Random Selection • Normal Shape Distribution

  7. z Statistic Versus t Statistic z Statistic t Statistic When you do not know the Mean and Standard Deviation of the population E.g., a farmer picks 30 out of his 200,000 apples, and finds the sample has a Mean of 112 grams. Calculate the Estimate of the Standard Error of the sample mean • When you know the Mean and Standard deviation of a population. • E.g., a farmer picks 200,000 apples, the mean weight is 112 grams, the SD is 12grams. • Calculate the Standard Error of the sample mean

  8. Scenarios When you would use a Single Sample t test • A newspaper article reported that the typical American family spent an average of $81 for Halloween candy and costumes last year. A sample of N = 16 families this year reported spending a mean of M = $85, with s = $20. What statistical test would we use to determine whether these data indicate a significant change in holiday spending? • Many companies that manufacture lightbulbs advertise their 60-watt bulbs as having an average life of 1000 hours. A cynical consumer bought 30 bulbs and burned them until they failed. He found that they burned for an average of M = 1233, with a standard deviation of s = 232.06. What statistical test would this consumer use to determine whether the average burn time of lightbulbs differs significantly from that advertised?

  9. Difference Between Calculating z Statistic and t Statistic z Statistic t Statistic Standard Error of a Sample: estimates the Sample Error of the Population Standard Deviation of a Sample: Estimates the Population Standard Deviation t Statistic for Single-Sample t Test

  10. Estimating Population from a Sample • Main difference between t Tests and z score: • use the standard deviation of the sample to estimate the standard deviation of the population. • How? Subtract 1 from sample size! (called degrees of freedom) • Use degrees of freedom (df) in the t distribution chart Standard Deviation of a Sample: Estimates the Population Standard Deviation

  11. t Distribution Table

  12. Example of Single Sample t Test • The mean emission of all engines of a new design needs to be below 20ppm if the design is to meet new emission requirements. Ten engines are manufactured for testing purposes, and the emission level of each is determined. Data: • 15.6, 16.2, 22.5, 20.5, 16.4, 19.4, 16.6, 17.9, 12.7, 13.9 • Does the data supply sufficient evidence to conclude that type of engine meets the new standard, assuming we are willing to risk a Type I error (false alarm, reject the Null when it is true) with a probability = 0.01? • Step 1: Assumptions: dependent variable is scale, Randomization, Normal Distribution • Step 2: State H0 and H1: • H0Emissions are equal to (or lesser than) 20ppm; • H1 Emissions are greater than 20ppm (One-Tailed Test)

  13. Example of Single Sample t Test • The mean emission of all engines of a new design needs to be below 20ppm if the design is to meet new emission requirements. Ten engines are manufactured for testing purposes, and the emission level of each is determined. Data: • 15.6, 16.2, 22.5, 20.5, 16.4, 19.4, 16.6, 17.9, 12.7, 13.9 • Step 3: Determine Characteristics of Sample Mean = Standard Deviation of Sample = Standard Error of Sample = • Step 4: Determine Cutoff • df = N-1 = 10-1 =9 • t statistic cut-off = -2.822

  14. Example of Single Sample t Test • The mean emission of all engines of a new design needs to be below 20ppm if the design is to meet new emission requirements. Ten engines are manufactured for testing purposes, and the emission level of each is determined. Data: • 15.6, 16.2, 22.5, 20.5, 16.4, 19.4, 16.6, 17.9, 12.7, 13.9 • Step 3: Determine Characteristics of Sample Mean M = 17.17 Standard Deviation of Sample s = 2.98 Standard Error of Sample sm= 0.942 • Step 4: Determine Cutoff • df = N-1 = 10-1 =9 • t statistic cut-off = -2.822 Step 5: Calculate t Statistic

  15. Example of Single Sample t Test • The mean emission of all engines of a new design needs to be below 20ppm if the design is to meet new emission requirements. Ten engines are manufactured for testing purposes, and the emission level of each is determined. Data: • 15.6, 16.2, 22.5, 20.5, 16.4, 19.4, 16.6, 17.9, 12.7, 13.9 • Mean M = 17.17 Standard Deviation of Sample s = 2.98 Standard Error of Sample sm= 0.942 Step 5: Calculate t Statistic • Step 6: Decide (Draw It) • t statistic cut-off = -2.822 • t statistic = -3.00 • Decide to reject the Null Hypothesis

  16. How to Write Results • t(7) = -.79, p < .265, d = -.29 • t Indicates that we are using a t-Test • (9) Indicates the degrees of freedom associated with this t-Test • -.79 Indicates the obtained t statistic value • p < .265 Indicates the probability of obtaining the given t value by chance alone • d = -.29 Indicates the effect size for the significant effect (the magnitude of the effect is measured in standard deviation units)

  17. Paired Sample t Test • The paired samples test is a kind of research called repeated measures test (aka, within-subjects design), commonly used in before-after-designs. • Comparing a mean of difference scores to a distribution of means of difference scores • Checklist for Paired-Samples: • 1 Nominal DICHOTOMOUS (with two levels) Independent Variable • 1 Scale Dependent Variable • Paired Observations are Dependent • Assumptions • Random selection & Shape

  18. Paired-Samples t-Test

  19. Paired Sample t Test • The paired samples test is a kind of research called repeated measures test (aka, within-subjects design), commonly used in before-after-designs. • Comparing a mean of difference scores to a distribution of means of difference scores • Population of measures at Time 1 and Time 2 • Population of difference between measures at Time 1 and Time 2 • Population of mean difference between measures at Time 1 and Time 2 • (Whew!)

  20. Paired Sample t Test Single-Sample Paired-Sample Two observations from each participant The second observation is dependent upon the first since they come from the same person. Comparing a mean of difference scores to a distribution of means of difference scores (I don’t make this stuff up) • Single observation from each participant • The observation is independent from that of the other participants • Comparing a mean score to a distribution of mean scores .

  21. Paired Sample t Test • Two distribution of scores. • A distribution of differences between scores. • Central Limit Theorem Revisited. If you plot the mean of randomly sampled observations, the plot will approach a normal distribution. This is true for scores and for differences between matched scores.

  22. Difference Between Calculating Single-Sample t and Paired-Sample t Statistic Paired Sample t Statistic Single Sample t Statistic Standard Error of a Sample Standard Error of Sample Differences Standard Deviation of a Sample t Statistic for Single-Sample t Test Standard Deviation of Sample Differences t Statistic for Paired-Sample t Test

  23. Paired Sample t Test Example • We need to know if there is a difference in the salary for the same job in Boise, ID, and LA, CA. The salary of 6 employees in the 25th percentile in the two cities is given . • Six Steps of Hypothesis testing for Paired Sample Test

  24. Paired Sample t Test Example • We need to know if there is a difference in the salary for the same job in Boise, ID, and LA, CA. • Step 1: Define Pops. Distribution and Comparison Distribution and Assumptions • Pop. 1. Jobs in Boise • Pop. 2.. Jobs in LA • Comparison distribution will be a distribution of mean differences, it will be a paired-samples test because every job sampled contributes two scores, one in each condition. • Assumptions: the dependent variable is scale, we do not know if the distribution is normal, we must proceed with caution; the jobs are not randomly selected, so we must proceed with caution

  25. Paired Sample t Test Example • We need to know if there is a difference in the salary for the same job in Boise, ID, and LA, CA. • Step 3: Determine the Characteristics of Comparison Distribution (mean, standard deviation, standard error) • M = 7914.333 Sum of Squares (SS) = 5,777,187.333

  26. Paired Sample t Test Example • We need to know if there is a difference in the salary for the same job in Boise, ID, and LA, CA. • Step 4: Determine Critical Cutoff • df = N-1 = 6-1= 5 • t statistic for 5 df , p < .05, two-tailed, are -2.571 and 2.571 • Step 5: Calculate t Statistic • Step 6 Decide

  27. How to Write Results • t(5) = 18.04, p < .00001, d = xxxx. • t Indicates that we are using a t-Test • (5) Indicates the degrees of freedom associated with this t-Test • 18.04 Indicates the obtained t statistic value • p < .000001 Indicates the probability of obtaining the given t value by chance alone • d = xxxx Indicates the effect size for the significant effect (the magnitude of the effect is measured in units of standard deviations)

  28. Independent t-Test

  29. Independent t Test • Compares the difference between two means of two independent groups. • You are comparing a difference between means to a distribution of differences between means. • Sample means from Group 1 and Group 2 compared to a Population of differences between means of Group 1 and Group 2

  30. Independent t Test Independent t Test Paired-Sample Two observations from each participant The second observation is dependent upon the first since they come from the same person. Comparing a mean difference to a distribution of mean difference scores • Single observation from each participant from two independent groups • The observation from the second group is independent from the first since they come from different subjects. • Comparing the difference between two means to a distribution of differences between mean scores .

  31. Independent t Test: Steps Calculate the corrected variance for each sample Step 1 Calculate the degrees of freedom Step 2 Calculate the pooled variance Step 3 In a z test you find SD, for ind. t, you take weighted avg of SD2 Like the Standard error in a z test Calculate the squared estimate of the standard error for each sample Step 4 Calculate estimated variance of the dist. of mean differences Step 5

  32. Independent t Test: Steps Calculate the squared estimate of the standard error for each sample Step 4 Calculate estimated variance of the dist. of mean differences Step 5 Calculate estimated standard deviation of the dist. of mean differences Step 6 t Statistic for an independent-Samples t Test Step 7

  33. Confidence Interval for Independent Samples t-test Confidence Interval for Paired Sample t-test with example from Stroop question. Effect Size for Dependent Samples t-test Effect Size for Independent Samples t-test

  34. Standard Error of a Sample: estimates the Sample Error of the Population Standard Deviation of a Sample: Estimates the Population Standard Deviation t Statistic for Single-Sample t Test t Statistic for Independent t Test T Statistic for Paired-Sample t Test Degrees of Freedom for Single Sample t Test, and Paired Sample Variance for a sample

  35. Degrees of Freedom for Independent Samples t Test Pooled Variance. Like adding together the weighted average of the variance from Variable X and Variable Y. Variance for a Distribution of means for Indep.-Samples t Test Variance for a Distribution of Differences between Means SD of the distribution of Differences Between Means

  36. Central Limit Theorem in Single Independent T-tests: Samples Two samples (moms/non-moms; drunk /sober students etc.) independent of each other (subjects participate in only one condition) which you draw from a universe of respective possible samples.

  37. Central Limit Theorem in Single Independent t-tests: Distribution of Samples Two samples (moms/non-moms; drunk /sober students etc.) independent of each other (subjects participate in only one condition) is drawn from a hypothetical distribution of samples of the same size, with mean of samples and a standard error.

  38. Central Limit Theorem in Single Independent t-tests: Distribution of Samples Difference between the means. Δ Mx-My Difference between the means. Would it occur with a probability of 5% or less? We want to know if there is a statistically significant difference between the means.

  39. Central Limit Theorem in Single Independent t-tests: Distribution of Differences Between Means Difference between the means, Δ Mx-My, comes from a distribution of Δ Mx-My that has a standard deviation drawn from the pooled variance of the sample distributions We want to know if there is a statistically significant difference between the means.

  40. Central Limit Theorem in Single Independent T-tests

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