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    High-Dimensional Probability

    An Introduction with Applications in Data Science

    Author(s): Roman Vershynin

    ISBN: 9781108415194
    Publication Date: 22-11-2018
    Pages: 296
    Format: Hardback
    Sale price£54.99 GBP

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    High-Dimensional Probability

    High-Dimensional Probability

    Cambridge University Press Bookshop

    Pickup available, Usually ready in 24 hours

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    High-dimensional probability offers insight into the behavior of random vectors, random matrices, random subspaces, and objects used to quantify uncertainty in high dimensions. Drawing on ideas from probability, analysis, and geometry, it lends itself to applications in mathematics, statistics, theoretical computer science, signal processing, optimization, and more. It is the first to integrate theory, key tools, and modern applications of high-dimensional probability. Concentration inequalities form the core, and it covers both classical results such as Hoeffding's and Chernoff's inequalities and modern developments such as the matrix Bernstein's inequality. It then introduces the powerful methods based on stochastic processes, including such tools as Slepian's, Sudakov's, and Dudley's inequalities, as well as generic chaining and bounds based on VC dimension. A broad range of illustrations is embedded throughout, including classical and modern results for covariance estimation, clustering, networks, semidefinite programming, coding, dimension reduction, matrix completion, machine learning, compressed sensing, and sparse regression.