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      Statistical Regression and Classification
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      Book

      Statistical Regression and Classification

      DOI link for Statistical Regression and Classification

      Statistical Regression and Classification book

      From Linear Models to Machine Learning

      Statistical Regression and Classification

      DOI link for Statistical Regression and Classification

      Statistical Regression and Classification book

      From Linear Models to Machine Learning
      ByNorman Matloff
      Edition 1st Edition
      First Published 2017
      eBook Published 27 July 2017
      Pub. Location New York
      Imprint Chapman and Hall/CRC
      DOI https://doi.org/10.1201/9781315119588
      Pages 528
      eBook ISBN 9781315119588
      Subjects Engineering & Technology, Mathematics & Statistics
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      Matloff, N. (2017). Statistical Regression and Classification: From Linear Models to Machine Learning (1st ed.). Chapman and Hall/CRC. https://doi.org/10.1201/9781315119588

      ABSTRACT

      Statistical Regression and Classification: From Linear Models to Machine Learning takes an innovative look at the traditional statistical regression course, presenting a contemporary treatment in line with today's applications and users. The text takes a modern look at regression:

      * A thorough treatment of classical linear and generalized linear models, supplemented with introductory material on machine learning methods.

      * Since classification is the focus of many contemporary applications, the book covers this topic in detail, especially the multiclass case.

      * In view of the voluminous nature of many modern datasets, there is a chapter on Big Data.

      * Has special Mathematical and Computational Complements sections at ends of chapters, and exercises are partitioned into Data, Math and Complements problems.

      * Instructors can tailor coverage for specific audiences such as majors in Statistics, Computer Science, or Economics.

      * More than 75 examples using real data.

      The book treats classical regression methods in an innovative, contemporary manner. Though some statistical learning methods are introduced, the primary methodology used is linear and generalized linear parametric models, covering both the Description and Prediction goals of regression methods. The author is just as interested in Description applications of regression, such as measuring the gender wage gap in Silicon Valley, as in forecasting tomorrow's demand for bike rentals. An entire chapter is devoted to measuring such effects, including discussion of Simpson's Paradox, multiple inference, and causation issues. Similarly, there is an entire chapter of parametric model fit, making use of both residual analysis and assessment via nonparametric analysis.

      Norman Matloff is a professor of computer science at the University of California, Davis, and was a founder of the Statistics Department at that institution. His current research focus is on recommender systems, and applications of regression methods to small area estimation and bias reduction in observational studies. He is on the editorial boards of the Journal of Statistical Computation and the R Journal. An award-winning teacher, he is the author of The Art of R Programming and Parallel Computation in Data Science: With Examples in R, C++ and CUDA.

      TABLE OF CONTENTS

      chapter 1|63 pages

      Setting the Stage

      chapter 2|58 pages

      Linear Regression Models

      chapter 3|23 pages

      Homoscedasticity and Other Assumptions in Practice

      chapter 4|31 pages

      Generalized Linear and Nonlinear Models

      chapter 5|35 pages

      Multiclass Classification Problems

      chapter 6|51 pages

      Model Fit Assessment and Improvement

      chapter 7|44 pages

      Disaggregating Regressor Effects

      chapter 8|27 pages

      Shrinkage Estimators

      chapter 9|52 pages

      Variable Selection and Dimension Reduction

      chapter 10|14 pages

      Partition-Based Methods

      chapter 11|26 pages

      Semi-Linear Methods

      chapter 12|20 pages

      Regression and Classification in Big Data

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