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Overview
Wackerly/Chen/Loy’s “Mathematical Statistics with Applications” 8th Edition, with WebAssign, builds a solid foundation in statistical theory while conveying its relevance in solving practical problems in the real world. Students discover the nature of statistics and understand its essential role in scientific research. The focused approach emphasizes the connectivity of key concepts with statistical inference being the primary theme. Updated to engage all students, the new edition includes enhanced insights and cutting-edge knowledge on theory and applications of statistics today. It preserves the elegance of the previous edition, while embracing new methodologies in data science, statistical learning and biostatistics.
- Updated explanations of statistical concepts with illustrative examples and new exercises emphasize the application of mathematical statistics.
- While any statistical software program can be used in the course, R has been incorporated into the narrative and exercises, decreasing the reliance on statistical tables.
- Updated algorithms and inference procedures to reflect current usage of statistics in data science and machine learning.
- Providing flexibility and control for instructors, WebAssign includes updated online assignments, learning resources and an interactive eBook to develop student understanding.
- Statistical inference and its role in scientific research are emphasized and reinforced throughout the coverage of probability topics.
- Stressing connectivity, the authors explain not only how major topics play a role in statistical inference but also how the topics are related to one another.
- This text takes a practical approach in both the exercises throughout and the useful topics in statistical methodology covered in the last five chapters.
- Exercises are based on real data or actual experimental scenarios which allow students to see the practical uses of various statistical and probabilistic methods.
Population and Data. Characterizing a Set of Measurements: Graphical Methods. Characterizing a Set of Measurements: Numerical Methods. Making Statistical Inference.
2. PROBABILITY.
Interpreting Probabilities. A Review of Set Notation. A Probabilistic Model for an Experiment: The Discrete Case. Calculating the Probability of an Event: The Sample-Point Method. Tools for Counting Sample Points. Conditional Probability and the Independence of Events. Two Laws of Probability. Calculating the Probability of an Event: The Event-Composition Methods. The Law of Total Probability and Bayes' Rule.
3. DISCRETE RANDOM VARIABLES AND THEIR PROBABILITY DISTRIBUTIONS.
Basic Definition. The Probability Distribution for Discrete Random Variable. The Expected Value of Random Variable or a Function of Random Variable. The Binomial Probability Distribution. The Geometric Probability Distribution. The Negative Binomial Probability Distribution (Optional). The Hypergeometric Probability Distribution. Moments and Moment-Generating Functions. Chebyshev's Inequality for Discrete Random Variables.
4. CONTINUOUS RANDOM VARIABLES AND THEIR PROBABILITY DISTRIBUTIONS.
The Probability Distribution for Continuous Random Variable. The Expected Value for Continuous Random Variable. The Uniform Probability Distribution. The Normal Probability Distribution. The Gamma Probability Distribution. The Beta Probability Distribution. Some General Comments. Moments and Moment-Generating Functions for Continuous Random Variables. Chebyshev's Inequality for Continuous Random Variables. Expectations of Discontinuous Functions and Mixed Probability Distributions (Optional).
5. MULTIVARIATE PROBABILITY DISTRIBUTIONS.
Bivariate and Multivariate Probability Distributions. Independent Random Variables. The Expected Value of a Function of Random Variables. The Covariance of Two Random Variables. The Expected Value and Variance of Linear Functions of Random Variables. The Multinomial Probability Distribution. The Bivariate Normal Distribution (Optional). Conditional Expectations.
6. FUNCTIONS OF RANDOM VARIABLES.
Introductions. Finding the Probability Distribution of a Function of Random Variables. The Method of Distribution Functions. The Methods of Transformations. Multivariable Transformations Using Jacobians.
7. SAMPLING DISTRIBUTIONS AND THE CENTRAL LIMIT THEOREM.
Introduction. Sampling Distributions Related to the Normal Distribution. The Central Limit Theorem. A Proof of the Central Limit Theorem (Optional). The Normal Approximation to the Binomial Distributions. Order Statistics.
8. ESTIMATION.
The Bias and Mean Square Error of Point Estimators. Some Common Unbiased Point Estimators. Evaluating the Goodness of Point Estimator. Confidence Intervals. Large-Sample Confidence Intervals Selecting the Sample Size. Small-Sample Confidence Intervals for the Population Mean and Difference in Means. Confidence Intervals for the Population Variance.
9. PROPERTIES OF POINT ESTIMATORS AND METHODS OF ESTIMATION.
Relative Efficiency. Consistency. Sufficiency. The Rao-Blackwell Theorem and Minimum-Variance Unbiased Estimation. The Method of Moments. The Method of Maximum Likelihood. Some Large-Sample Properties of MLEs (Optional).
10. HYPOTHESIS TESTING.
Elements of a Statistical Test. Common Large-Sample Tests. Calculating Type II Error Probabilities and Finding the Sample Size for the Z Test. Relationships Between Hypothesis Testing Procedures and Confidence Intervals. Another Way to Report the Results of a Statistical Test: p-values. Some Comments on the Theory of Hypothesis Testing. Small-Sample Hypothesis Testing for the Population Mean and Difference in Means. Testing Hypotheses Concerning Variances. Power of Test and the Neyman-Pearson Lemma. Likelihood Ration Test.
11. LINEAR MODELS AND ESTIMATION BY LEAST SQUARES.
Linear Statistical Models. The Method of Least Squares. Properties of the Least Squares Estimators for the Simple Linear Regression Model. Inference for Regression Coefficients. Inference for Linear Functions of Coefficients: Simple Linear Regression. Predicting a Particular Value of Y Using Simple Linear Regression. Correlation. Some Practical Examples. Fitting the Linear Model by Using Matrices. Properties of the Least Squares Estimators for the Multiple Linear Regression Model. Inference for Linear Functions of Coefficients: Multiple Linear Regression. Prediction a Particular Value of Y Using Multiple Regression. Regression F test.
12. CONSIDERATIONS IN DESIGNING EXPERIMENTS.
The Elements Affecting the Information in a Sample. Designing Experiment to Increase Accuracy. The Matched Pairs Experiment. Some Elementary Experimental Designs.
13. THE ANALYSIS OF VARIANCE.
The Analysis of Variance Procedure. Comparison of More than Two Means: Analysis of Variance for a One-way Layout. An Analysis of Variance Table for a One-Way Layout. A Statistical Model of the One-Way Layout. Proof of Additivity of the Sums of Squares and E (MST) for a One-Way Layout (Optional). Estimation in the One-Way Layout. A Statistical Model for the Randomized Block Design. The Analysis of Variance for a Randomized Block Design. Estimation in the Randomized Block Design. Selecting the Sample Size. Simultaneous Confidence Intervals for More than One Parameter. Analysis of Variance Using Linear Models.
14. ANALYSIS OF CATEGORICAL DATA.
A Description of the Experiment. The Chi-Square Test. A Test of Hypothesis Concerning Specified Cell Probabilities: A Goodness-of-Fit Test. Contingency Tables. r x c Tables with Fixed Row or Column Totals. Other Applications.
15. NONPARAMETRIC STATISTICS.
A General Two-Sampling Shift Model. A Sign Test for a Matched Pairs Experiment. The Wilcoxon Signed-Rank Test for a Matched Pairs Experiment. The Use of Ranks for Comparing Two Population Distributions: Independent Random Samples. The Mann-Whitney U Test: Independent Random Samples. The Kruskal-Wallis Test for One-Way Layout. The Friedman Test for Randomized Block Designs. The Runs Test: A Test for Randomness. Rank Correlation Coefficient.
16. INTRODUCTION TO BAYESIAN METHODS FOR INFERENCE.
Introduction. Bayesian Priors, Posteriors and Estimators. Bayesian Credible Intervals. Bayesian Tests of Hypotheses.
Appendix 1: Matrices and Other Useful Mathematical Results.
Matrices and Matrix Algebra. Addition of Matrices. Multiplication of a Matrix by a Real Number. Matrix Multiplication. Identity Elements. The Inverse of a Matrix. The Transpose of a Matrix. A Matrix Expression for a System of Simultaneous Linear Equations. Inverting a Matrix. Solving a System of Simultaneous Linear Equations. Other Useful Mathematical Results.
Appendix 2: Common Probability Distributions, Means, Variances, and Moment-Generating Functions.
Discrete Distributions. Continuous Distributions.
Appendix 3: Tables.
Binomial Probabilities . Poisson Probabilities. Normal Curve Areas. Percentage Points of the t Distributions. Percentage Points of the F Distributions. Distribution of Function U. Critical Values of T in the Wilcoxon Matched-Pairs, Signed-Ranks Test. Distribution of the Total Number of Runs R in Sample Size (n1, n2); P(R ≤ a). Critical Values of Pearman’s Rank Correlation Coefficient. Random Numbers.
Answer to Exercises.
Index.
R Appendix: Students are introduced to statistical data analysis and shown how to use R to conduct all the major statistical procedures from the textbook.
Cengage provides a range of supplements that are updated in coordination with the main title selection. For more information about these supplements, contact your Learning Consultant.
FOR STUDENTS
WebAssign for Wackerly/Chen/Loy's Mathematical Statistics with Applications, Single-Term Instant Access
ISBN: 9798214013442
WebAssign for Wackerly/Chen/Loy’s “Mathematical Statistics with Applications”, 8th Edition, is a flexible and fully customizable online instructional solution that puts powerful tools in the hands of instructors, enabling you to deploy assignments, instantly assess individual student and class performance and help your students master the course concepts. With its powerful digital platform and Mathematical Statistics with Applications-specific content, you can tailor your course with a wide range of assignment settings, add your own questions and content and access student and course analytics and communication tools.