1 / 11

Review for Final Exam

Review for Final Exam. 2011, 12, 8. Important Dates. Today: All late HWK Due 5.12 (TR): Submit your project paper to Hauser 105 between 3:45-4:45. Final Exam 5.17 , 1:30 – 3:30, Hauser 28 & 30 Review sheet Formula sheet. Lecture Outline. When to use One-sample z -test

Download Presentation

Review for Final Exam

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Review for Final Exam 2011, 12, 8

  2. Important Dates • Today: All late HWK Due • 5.12 (TR): Submit your project paper to Hauser 105 between 3:45-4:45. • Final Exam • 5.17, 1:30 – 3:30, Hauser 28 & 30 • Review sheet • Formula sheet

  3. Lecture Outline • When to use • One-sample z-test • One-sample t-test • Related-samples t-test, or • Independent-samples t-test? • One-way ANOVA • When to use • Pearson Correlation Analysis • Regression Analysis, or • Chi-square test?

  4. One-Sample z-Test • When the population mean () and Std. Dev. () are KNOWN, we use one-sample z-test to compare a single sample mean to the known population mean (). • Key: Look for Population Std. Dev. ()

  5. One-Sample t-Test • When the population Std. Dev. () is UNKNOWN, we use one-sample t-test to compare a single sample mean to the known population mean (). We use the sample standard deviation (S) to estimate the Std. Err. • Key: Look for Population Std. Dev. ()

  6. Related-Samples t-Test • Situation 1: When we want to compare two samples that representing two populations (e.g., women vs. men), and the two samples are related, we use related-samples t-test to exam if one population mean is greater/less/equal to the other population mean. • Situation 2: When we want to compare two set of scores collected from one sample, we use related-samples t-test to exam if posttest mean is greater/less/equal to pretest mean. • Key terms: • You must have two set of scores (two columns). • The two set of scores must relate to each other.

  7. Independent-Samples t-Test • When we want to compare two samples that representing two populations (e.g., women vs. men), and the two samples are independent, we use independent-samples t-test to exam if one population mean is greater/less/equal to the other population mean. • Key terms: • You must have two set of scores (two columns) • The two set of scores must from two independent samples

  8. One-Way ANOVA • When we want to compare three or more samples that representing correspondent populations (e.g., freshmen, sophomore, junior, and senior), we use one-way ANOVA to exam if at least one population mean is different from others. • Key terms: • You must have three or more sets of scores

  9. Pearson Correlation Analysis • When we want to examine the relationship between two CONTINUOUS variables, we conduct Pearson Correlation Analysis. • Key term: • You are examining a relationship. • You have “continuous” variables

  10. Regression Analysis • When we want to use one variable to predict the value of another variable, we compute the regression equation for the best-fitting line. • Key terms: • Predict • Predictor (X) • Criterion (Y)

  11. Lecture Summary • When to use • One-sample z-test • One-sample t-test • Related-samples t-test, or • Independent-samples t-test? • One-way ANOVA • When to use • Pearson Correlation Analysis • Regression Analysis

More Related