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Review Lecture 52 Tue, Apr 26, 2005 Chapter 1 Sections 1.1 – 1.4. Be familiar with the language and principles of hypothesis testing. Given two explicit hypotheses, be able to calculate and . Given a value of the “test statistic,” be able to calculate the p-value. Etc. Chapter 2 Sections 2.1 – 2.8. Know the characteristics of the different sampling methods: Simple random sampling Stratified sampling Systematic sampling Cluster sampling. Chapter 2 Be familiar with the different types of bias: Selection bias. Response bias. Non-response bias. Experimenter bias. Etc. Chapter 3 Sections 3.1 – 3.5. Know the difference between An observational study and an experiment. A prospective study and a retrospective study. Be able to distinguish among explanatory, response, and confounding variables. Be familiar with some methods of minimizing bias. Etc. Chapter 4 Sections 4.1 – 4.3.2, 4.4.1 – 4.4.2, 4.4.4, 4.5. Be able to draw correctly Pie charts Bar graphs Frequency plots Histograms Know which ones are appropriate for which kinds of data. Chapter 4 Be familiar with the important characteristics of a distribution’s shape. Etc. Chapter 5 Sections 5.1 – 5.3. Measures of center: Mean Median Mode Measures of variation Range Interquartile range Chapter 5 Variance Standard deviation Be able to draw a boxplot. Etc. Chapter 6 Sections 6.1 – 6.4. Be able to find a probability or percentile associated with a normal distribution. Be able to find a probability or percentile associated with a uniform distribution. Know and be able to apply the 68-95-99.7 Rule. Chapter 6 Be able to draw a discrete probability distribution and find probabilities associated with it. Etc. Chapter 7 Section 7.5 – 7.5.1, 7.5.3. Know what a random variable is. Know the difference between discrete and continuous random variables. Be able to calculate the mean, variance, and standard deviation of a discrete random variable from its probability distribution. Etc. Chapter 8 Sections 8.1 – 8.4. Know what is meant by a sampling distribution of a statistic. Be very familiar with the Central Limit Theorem for proportions, summarized on page 482. Be very familiar with the Central Limit Theorem for means, summarized on page 500. Be able to recognize problems that call for the Central Limit Theorem and be able to apply it. Chapter 8 Understand what bias and variability mean for a random variable. Etc. Chapter 9 Sections 9.1 – 9.4. Know the sampling distribution of p^. Know the criteria for when the sample size is large enough. Be able to test a hypothesis concerning p. Be able to calculate a confidence interval for p. Know the 5 steps of hypothesis testing. Etc. Chapter 10 Sections 10.1 – 10.3. Know the sampling distribution ofx. Know the criteria for when the sample size is large enough. Be able to test a hypothesis concerning. Be able to calculate a confidence interval for . Know how to decide whether to use the normal distribution or the t distribution. Chapter 10 Be able to find p-values and percentiles for the t distribution. Etc. Chapter 11 Sections 11.1 – 11.2, 11.4 – 11.5. Know the difference between paired samples and independent samples. Be able to test a hypothesis concerning the difference between two population proportions. Be able to estimate the difference between two population proportions. Know when and how to use a pooled estimate of p. Chapter 11 Be able to test a hypothesis concerning the difference between two population means. Be able to estimate the difference between two population means. Know the criteria in all cases for using the normal distribution vs. the t distribution. Know when and how to use a pooled estimate of . Etc. Chapter 13 Sections 13.1 – 13.3, 13.7 – 13.7.1, 13.9. Be able to draw a scatterplot of bivariate data. Be familiar with the important characteristics: Linear association. Positive or negative association. The strength of the association. Know exactly what distinguishes the least squares regression line from all other lines. Chapter 13 Be able to calculate the following: The coefficients a and b of the regression line. The residuals. The predicted value of y, for a given value of x. The residual sum of squares, SSE. The regression sum of squares, SSR. The total sum of squares, SST. The correlation coefficient r. The coefficient of determination r2. Chapter 13 Be able to interpret the correlation coefficient. Be able to interpret the coefficient of determination. Etc. Chapter 14 Sections 14.1 – 14.5. Be able to find chi-square probabilities and percentiles. Be able to perform hypothesis tests for Goodness of fit (univariate data) Homogeneity (bivariate data) Independence (bivariate data) In all cases, be able to find the expected counts. Etc. The TI-83 Most of the calculations in Chapters 1 – 10 can be done on the TI-83. You should be able to do them both on the TI-83 and by hand. Most of the calculations in Chapters 11, 13, and 14 can be done on the TI-83. Anything that can be done on the TI-83 in Chapters 11 - 14, you do not need to be able to do by hand. Formulas You should know the necessary formulas from Chapters 1 – 10 and perhaps a few miscellaneous formulas from Chapters 11 – 14. The formulas that you do not need to know are listed on the Statistical Formulas sheet. Do not bring this sheet with you to the final; it will be provided. The standard normal table, the t tables, and the chi square tables will be provided.