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6/19/2009 Some material from ppt slides for Statistics for Managers Using Microsoft Excel, 5e © 2008 Pearson Prentice-Hall, Inc. The Standard Normal Distribution • ‘Bell Shaped’ & Symmetric • The mean, μ, is always 0 • The standard deviation, σ , is always 1 To find P(z<a) =NORMSDIST(a) p(Z) 1 To standardize =STANDARDIZE(a, Introduction to Hypothesis Testing Z 0 ) One-Sample Hypothesis Testing To find a: P(z<a) = p =NORMSINV(p) …a is a value from the sample (for what we’re doing, a refers to your sample mean) Hypothesis testing uses data to test a model GENERAL PROCEDURE FOR HYPOTHESIS TESTING 1. Define the hypotheses 2. Calculate the test statistic 3. Make a decision Hypothesis testing uses data to test a model GENERAL PROCEDURE FOR HYPOTHESIS TESTING 1. Define the hypotheses A hypothesis is a claim or assumption about a population parameter The first step in hypothesis testing is to translate your conjectures into hypothesis statements. Every statistical test tests the null hypothesis against an alternate hypothesis. 1 6/19/2009 The Null Hypothesis NULL Begin with the assumption that the null hypothesis is true The Alternative Hypothesis Similar to the notion of innocent until proven guilty It refers to the status quo Always contains “=” , “≤” or “ ” sign May or may not be rejected The type of test depends on what you want to prove ONE-TAILED Rejection region in one of the tails The null is FALSE in one direction of your original claim Is the opposite of the null hypothesis Covers the area of the population not covered in the NULL One-Tailed vs. Two-Tailed Hypothesis Statements ALT Challenges the status quo Never contains the “=” , “≤” or “ ” sign Is generally the hypothesis that the researcher is trying to prove One-Tailed vs. Two-Tailed Hypothesis Statements The type of test depends on what you want to prove ONE-TAILED TWO-TAILED Rejection region in both of the tails The null can be FALSE in both direction of your original claim 2 6/19/2009 The Test Statistic and Critical Values If the sample mean is close to the assumed population mean, DO NOT REJECT the null hypothesis. If the sample mean is far from the assumed population mean, REJECT the null hypothesis. The Test Statistic and Critical Values If the sample mean is close to the assumed population mean, DO NOT REJECT the null hypothesis. If the sample mean is far from the assumed population mean, REJECT the null hypothesis. How far is “far enough” to reject H0? The critical value of a test statistic creates a “line in the sand” for decision making. Hypothesis testing uses data to test a model OBSERVED VALUES GENERAL PROCEDURE FOR HYPOTHESIS TESTING Define the hypotheses 2. Calculate the test statistics The benefit of a normally distributed sampling distribution is the ability to standardize data and calculate associated probabilities… We need to be able to answer the following: How likely(or unlikely) is this set of data? How likely (or unlikely) do we need it to be? Z-score P-value Observed values Critical values 3 6/19/2009 ONE-SAMPLE HYPOTHESIS TESTING For the population mean, n > 30 CRITICAL VALUES Distribution of the test statistic Define the NULL & ALT hypotheses 1. Implies some direction Region of Rejection Region of Rejection …uses comparisons like ‘bigger’, ‘less than’, etc…. One- Z-critical or two-tailed? Implies equality …uses comparisons like ‘the same as’… Critical Values -value ONE-SAMPLE HYPOTHESIS TESTING For the population mean, n > 30 1. Define the NULL & ALT hypotheses ONE-SAMPLE HYPOTHESIS TESTING For the population mean, n > 30 1. Define the NULL & ALT hypotheses 2. Calculate the test statistics One- or two-tailed? 2. Calculate the test statistics zOBS = STANDARDIZE(x, , / n) One- or two-tailed? zOBS, zCRIT, p-value zOBS = STANDARDIZE(x, , / n) zCRIT = NORMSINV(1- /# of tails) zOBS, zCRIT, p-value zCRIT = NORMSINV(1- /# of tails) p-value =(# of tails) * (1-NORMSDIST(|zOBS|)) p-value =(# of tails) * (1-NORMSDIST(|zOBS|)) Make a decision 3. |zOBS| > zCRIT? p-value < α-level? …then REJECT the NULL 4 6/19/2009 ONE-SAMPLE HYPOTHESIS TESTING For the population mean, n < 30 Define the NULL & ALT hypotheses 1. ONE-SAMPLE HYPOTHESIS TESTING For the population proportion Define the NULL & ALT hypotheses 1. One- or two-tailed? One- or two-tailed? NULL: = 0.a ALT: ≠ 0.a ----------------------------------------------------------------NULL: ≥ 0.a NULL: ≤ 0.a ALT: < 0.a ALT: > 0.a Calculate the test statistics 2. tOBS, tCRIT, p-value Use t-test! (watch the video lecture & video example) Make a decision 3. |tOBS| > tCRIT? p-value < α-level? …then REJECT the NULL ONE-SAMPLE HYPOTHESIS TESTING ONE-SAMPLE HYPOTHESIS TESTING For the population proportion 1. Define the NULL & ALT hypotheses For the population proportion 1. Define the NULL & ALT hypotheses 2. Calculate the test statistics One- or two-tailed? 2. Calculate the test statistics (1 zOBS = STANDARDIZE(p, , One- or two-tailed? zOBS, zCRIT, p-value ) (1 n ) zOBS = STANDARDIZE(p, , zCRIT = NORMSINV(1- /# of tails) zOBS, zCRIT, p-value ) n ) zCRIT = NORMSINV(1- /# of tails) p-value =(# of tails) * (1-NORMSDIST(|zOBS|)) p-value =(# of tails) * (1-NORMSDIST(|zOBS|)) Make a decision 3. |zOBS| > zCRIT? p-value < α-level? …then REJECT the NULL 5