  # PROBABILITY AND STATISTICS ENGINEERS & SCIENTISTS 6E

## Ronald E. Walpole

Yayınevi: Prentice Hall

Yayın tarihi: 12/2004

ISBN: 9780130952462

Yazar : RAYMOND H. MYERS Sharon L. Myers

İngilizce | Büyük boy  |

This classic text provides a rigorous introduction to basic probability theory and statistical inference that is well motivated by interesting, relevant applications. The new edition features many new, real-data based exercises and examples. Increased emphasis on the analysis of statistical output and greater use of graphical techniques and statistical methods in quality improvement make the 6th edition more useful for today's students.

Contents:
NOTE: Most chapters conclude with Review Exercises.) 1. Introduction to Statistics and Data Analysis. Overview. The Role of Probability. Measures of Location: The Sample Mean and Median. Measures of Variability. Discrete and Continuous Data. Statistical Modeling, Scientific Inspection, and Graphical Diagnostics.
2. Probability. Sample Space. Events. Counting Sample Points. Probability of an Event. Additive Rules. Conditional Probability. Multiplicative Rules. Bayes' Rule.
3. Random Variables and Probability Distributions. Concept of a Random Variable. Discrete Probability Distributions. Continuous Probability Distributions. Empirical Distributions. Joint Probability Distributions.
4. Mathematical Expectation. Mean of a Random Variable. Variance and Covariance. Means and Variances of Linear Combinations of Random Variables. Chebyshev's Theorem.
5. Some Discrete Probability Distributions. Introduction. Discrete Uniform Distribution. Binomial and Multinomial Distribution. Hypergeometric Distribution. Negative Binomial and Geometric Distributions. Poisson Distribution and the Poisson Process.
6. Some Continuous Probability Distributions. Continuous Probability Distribution. Normal Distribution. Areas Under the Normal Curve. Applications of the Normal Distribution. Normal Approximation to the Binomial. Gamma and Exponential Distributions. Applications of the Exponential and Gamma Distributions. Chi-Squared Distribution. Lognormal Distribution. Weibull Distribution.
7. Functions of Random Variables. Introduction. Transformation of Variables. Moments and Moment-Generating Functions.
8. Random Sampling, Data Description, and Some Fundamental Sampling Distributions. Random Sampling. Some Important Statistics. Data Displays and Graphical Methods. Sampling Distribution. Sampling Distributions of Means. Sampling Distribution of S^2. t-Distribution. F-Distribution.
9. One- and Two-Sample Estimation Problems. Introduction. Statistical Inference. Classical Methods of Estimation. Single Sample: Estimating the Mean. Standard Error of a Point Estimate. Tolerance Limits. Two Samples: Estimating the Difference Between Two Means. Paired Observations. Single Sample: Estimating a Proportion. Two Samples: Estimating the Difference Between Two Proportions. Single Sample: Estimating the Variance. Two Samples: Estimating the Ratio of Two Variances. Bayesian Methods of Estimation. Maximum Likelihood Estimation.
10. One- and Two- Sample Tests of Hypotheses (Continuous and Discrete Data). Statistical Hypotheses: General Concepts. Testing a Statistical Hypothesis. One- and Two-Tailed Tests. The Use of P- Values in Decision Making. Single Sample: Tests Concerning a Single Mean (Variance Known). Relationship to Confidence Interval Estimation. Single Sample: Tests on a Single Mean (Variance Unknown). Two Samples: Tests on Two Means. Choice of Sample Size for Testing Means. Graphical Methods for Comparing Means. One Sample: Test on a Single Proportion. Two Samples: Tests on Two Proportions. One- and Two-Sample Tests Concerning Variances. Goodness-of-Fit Test. Test for Independence (Categorical Data). Test for Homogeneity. Testing for Several Proportions. Two-Sample Case Study.
11. Simple Linear Regression and Correlation. Introduction to Linear Regression. Simple Linear Regression. Properties of the Least Squares Estimators. Inferences Concerning the Regression Coefficients. Prediction. Choice of a Regression Model. Analysis-of Variance Approach. Test for Linearity of Regression: Data with Repeated Observations. Data Plots and Transformations. Simple Linear Regression Case Study. Correlation.
12. Multiple Linear Regression. Introduction. Estimating the Coefficients. Linear Regression Model Using Matrices. Properties of the Least Squares Estimators. Inferences in Multiple Linear Regression. Choice of a Fitted Model Through Hypothesis Testing. Special Case of Orthogonality. Sequential Methods for Model Selection. Study of Residuals and Violation of Assumptions. Cross Validation, Cp, and Other Criteria for Model Selection.
13. One-Factor Experiments: General. Analysis-of-Variance Technique. The Strategy of Experimental Design. One-Way Analysis of Variance: Completely Randomized Design. Tests for the Equality of Several Variances. Single-Degree-of-Freedom Comparisons. Multiple Comparisons. Comparing Treatments with a Control. Comparing a Set of Treatments in Blocks. Randomized Complete Block Designs. Graphical Methods and Further Diagnostics. Latin Squares. Random Effects Models. Regression Approach to Analysis of Variance. Power of Analysis-of-Variance Tests. Case Study. 14. Factorial Experiments.
Introduction. Interaction and the Two-Factor Experiment. Two-Factor Analysis of Variance. Graphical Analysis in the Two-Factor Problem. Three-Factor Experiments. Specific Multifactor Models. MODEL II and III Factorial Experiments. Choice of Sample Size.
15. 2^k Factorial Experiments and Fractions. Introduction. Analysis of Variance. Nonreplicated 2^k Factorial Experiment. Case Study. Factorial Experiments in Incomplete Blocks. Partial Confounding. Factorial Experiments in a Regression Setting. Case Study: Coal Cleansing Experiment. Fractional Factorial Experiments. Analysis of Fractional Factorial Experiments. Higher Fractions and Screening Designs. Construction of Resolution III and Resolution IV Designs with 8, 16, and 32 Design Points. Other Two-Level Resolution III Designs; The Plackett-Burman. Designs. Taguchi's Robust Parameter Design.
16. Nonparametric Statistics.
Nonparametric Tests. Sign Test. Signed-Rank Test. Rank-Sum Test. Krukal-Wallis Test. Runs Test. Tolerance Limits. Rank Correlation Coefficient.
17. Statistical Quality Control. Introduction. Nature of the Control Limits. Purposes of the Control Chart. Control Charts for Variables. Control Charts for Attributes. Cusum Control Charts. Bibliography.
Appendix: Statistical Tables. Answers to Exercises.

#### Bu Türde Çok Satanlar

###### Kredi Kartına Taksit İmkanı
• • 3 Taksit

• 3 Taksit

• 3 Taksit

©1996-2019 Pandora Yayın ve Kitap Hizmetleri A.Ş.

Mersis No: 0721-0430-4310-0015