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Probability for Statistics and Machine Learning [electronic resource] : Fundamentals and Advanced Topics / by Anirban DasGupta.
Author
DasGupta, Anirban
[Browse]
Format
Book
Language
English
Εdition
1st ed. 2011.
Published/Created
New York, NY : Springer New York : Imprint: Springer, 2011.
Description
1 online resource (795 p.)
Details
Subject(s)
Statistics .
[Browse]
Probabilities
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Computer simulation
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Bioinformatics
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Series
Springer Texts in Statistics,
[More in this series]
Springer Texts in Statistics, 1431-875X
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Subseries of
Springer Texts in Statistics
Summary note
This book provides a versatile and lucid treatment of classic as well as modern probability theory, while integrating them with core topics in statistical theory and also some key tools in machine learning. It is written in an extremely accessible style, with elaborate motivating discussions and numerous worked out examples and exercises. The book has 20 chapters on a wide range of topics, 423 worked out examples, and 808 exercises. It is unique in its unification of probability and statistics, its coverage and its superb exercise sets, detailed bibliography, and in its substantive treatment of many topics of current importance. This book can be used as a text for a year long graduate course in statistics, computer science, or mathematics, for self-study, and as an invaluable research reference on probabiliity and its applications. Particularly worth mentioning are the treatments of distribution theory, asymptotics, simulation and Markov Chain Monte Carlo, Markov chains and martingales, Gaussian processes, VC theory, probability metrics, large deviations, bootstrap, the EM algorithm, confidence intervals, maximum likelihood and Bayes estimates, exponential families, kernels, and Hilbert spaces, and a self contained complete review of univariate probability.
Notes
Description based upon print version of record.
Bibliographic references
Includes bibliographical references and indexes.
Source of description
Description based on publisher supplied metadata and other sources.
Language note
English
Contents
Chapter 1. Review of Univariate Probability
Chapter 2. Multivariate Discrete Distributions
Chapter 3. Multidimensional Densities
Chapter 4. Advance Distribution Theory
Chapter 5. Multivariate Normal and Related Distributions
Chapter 6. Finite Sample Theory of Order Statistics and Extremes
Chapter 7. Essential Asymptotics and Applications
Chapter 8. Characteristic Functions and Applications
Chapter 9. Asymptotics of Extremes and Order Statistics
Chapter 10. Markov Chains and Applications
Chapter 11. Random Walks
Chapter 12. Brownian Motion and Gaussian Processes
Chapter 13. Posson Processes and Applications
Chapter 14. Discrete Time Martingales and Concentration Inequalities
Chapter 15. Probability Metrics
Chapter 16. Empirical Processes and VC Theory
Chapter 17. Large Deviations
Chapter 18. The Exponential Family and Statistical Applications
Chapter 19. Simulation and Markov Chain Monte Carlo
Chapter 20. Useful Tools for Statistics and Machine Learning
Appendix A. Symbols, Useful Formulas, and Normal Table.
Show 18 more Contents items
ISBN
1-4419-9634-6
OCLC
733543400
1066192396
Doi
10.1007/978-1-4419-9634-3
Statement on language in description
Princeton University Library aims to describe library materials in a manner that is respectful to the individuals and communities who create, use, and are represented in the collections we manage.
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