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.
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.

Probability for Statistics and Machine Learning: Fundamentals and Advanced Topics
784
Probability for Statistics and Machine Learning: Fundamentals and Advanced Topics
784Product Details
ISBN-13: | 9781461428848 |
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Publisher: | Springer New York |
Publication date: | 07/14/2013 |
Series: | Springer Texts in Statistics |
Edition description: | 2011 |
Pages: | 784 |
Product dimensions: | 6.10(w) x 9.25(h) x 0.07(d) |