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The future is a vain hope, the past is a distracting thought. Uphold our loving kindness at this instant, and be committed to our duties and responsibilities right now. 1 Applied Statistics Using SAS and SPSS Topic: Hypothesis Testing By Prof Kelly Fan, Cal State Univ, East Bay 2 Hypothesis Testing A statistical hypothesis is an assertion or conjecture concerning one or more populations. Agenda: 1. Types of tests 2. Types of errors 3. P-value 4. Summary of tests 5. Assumption checking 3 4 5 Types of Tests 6 Types of Tests 7 Types of Tests 8 Types of Errors H0 true we accept H0 we reject H0 Good! (Correct!) Type I Error, or “ Error” H0 false Type II Error, or “ Error” Good! (Correct) 9 = Probability of Type I error = P(rej. H0|H0 true) = Probability of Type II error = P(acc. H0|H0 false) We often preset , called significance level. The value of depends on the specifics of the H1 (and most often in the real world, we don’t know these specifics). 10 EXAMPLE: H0 : < 100 H1 : >100 Suppose the Critical Value = 141: X =100 C=14 1 11 = P (X < 141/ = 150) = .3594 What is ? These are values corresp.to a value of 25 for the Std. Dev. of X = 150 141 = 150 = 160 = P (X < 141/ = 160) = .2236 141 = 160 = 170 = P (X < 141/ = 170) = .1230 141 = P (X < 141/ = 180) = 170 = 180 = .0594 = P (X < 141|H0 false) 141 = 180 12 Note: Had been preset at .025 (instead of .05), C would have been 149 (and would be larger); had been preset at .10, C would have been 132 and would be smaller. and “trade off”. 13 P Value Definition: the probability that we reject Ho when Ho is true based on the observed data Idea: the largest “risk” we pay to reject H0 Alternate name: the observed type I error rate / the observed significance level When will we reject Ho ? What is the formula to calculate the largest risk? 14 Steps of Hypothesis Tests 1. 2. 3. 4. 5. Set up Ho and Ha properly Preset level (the significant level) Select an appropriate test Calculate its p-value Reject Ho if p-value < or = the significant level; otherwise fail to reject Ho 15 Set Up Hypothesis Properly Conjecture: The fraction of defective product in a certain process is at most 10%. Which error is more seriously? Incorrectly claim this conjecture is true? false? The “=“ sign must be in Ho 16 One Population 17 Two Populations 18 Assumption Checking 1. Tests/graphs for normality 2. Tests for equal variances 19 Example: Mortar Strength The tension bond strength of cement mortar is an important characteristic of the product. An engineer is interested in comparing the strength of a modified formulation in which polymer latex emulsions have been added during mixing to the strength of the unmodified mortar. The experimenter has collected 10 observations on strength for the modified formulation and another 10 observations for the unmodified formulation. 20 Example: Mortar Strength Modified 16.85 16.40 17.21 16.35 16.52 17.04 16.96 17.15 16.59 16.57 Unmodified 17.50 17.63 18.25 18.00 17.86 17.75 18.22 17.90 17.96 18.15 21 SAS/SPSS Data Input SPSS: One variable one column in the work sheet SAS: One variable one name 22 Normality Tests SAS: PROC UNIVARIATE DATA=** NORMAL PLOT; Tests for Normality Test --Statistic--- -----p Value------ Shapiro-Wilk Kolmogorov-Smirnov Cramer-von Mises Anderson-Darling W 0.918255 D 0.134926 W-Sq 0.081542 A-Sq 0.537514 Pr < W 0.0917 Pr > D >0.1500 Pr > W-Sq 0.1936 Pr > A-Sq 0.1503 23 Normality Tests SPSS: Analyze >> Descriptive Statistics >> Explore >> Plots , Normality plots with tests Tests of Normality a strength Kolmogorov-Smirnov Statistic df Sig. .135 20 .200* Shapiro-Wilk Statistic df .918 20 Sig. .092 *. This is a lower bound of the true significance. a. Lilliefors Significance Correction 24 Two-sample t Tests and Equal-variance Tests SAS: PROC TTEST DATA=** ; 25 Two-sample t Tests and Equal-variance Tests SPSS: equal-variance tests: Homework for ST3900 students SPSS: two-sample t tests as below 26 Research Question A researcher claims that a new series of math courses for elementary school is more effective than the current one. Two (1st grade) classes of students are selected to perform an experiment to verify this claim. How would you conduct the experiment to avoid confounding variables as much as possible? 27 Paired Samples If the same set of sources are used to obtain data representing two populations, the two samples are called paired. The data might be paired: As a result of the data from certain “before” and “after” studies From matching two subjects to form “matched pairs” 28 Tests for Paired Samples Calculate the pair differences Proceed as in one sample case Notes: SAS: all variables must be included in data SPSS: create/calculate all variables we need 29 INFERENCES ABOUT MEAN WHEN “BEYOND THE SCOPE” When population is nonnormal and n is small, how to do inferences about : 1). Non-parametric tests 2). (Optional) Use Bootstrap methods to simulate the sampling distribution of t test statistic and then the simulated distribution to find an (approximate) C.I. and pvalue 30 Non-parametric Tests Independent samples: Wilcoxon Rank Sum Test (also called Manny-Whitney test) Assumption: two distributions of the same shape Paired samples/One sample: Wilcoxon Signed-Rank Test Assumption: a symmetric distribution (of the differences for paired samples) 31 Introduction to Bootstrap Methods How to simulate the sampling distribution of a given statistic, say t, based on a given sample of size n: 1. Pretend the original sample is the entire population 2. Select a random sample of size n from the original sample (now the population) with replacement ; this is called a bootstrap sample 3. Calculate the t value of the bootstrap sample, t* 4. Repeat steps 2, 3 many times, 1000 or more, say B times. Use the obtained t* values to obtain an approximation to the sampling distribution 32 Review: Confidence Interval 33 34 One Population 35 Two Populations 36