• Random Fourier Features


    K-DSN

    深度堆叠网络

    Random Features for Large-Scale Kernel Machines
    To accelerate the training of kernel machines, we propose to map the input data
    to a randomized low-dimensional feature space and then apply existing fast linear
    methods. Our randomized features are designed so that the inner products of the
    transformed data are approximately equal to those in the feature space of a user
    specified shift-invariant kernel. We explore two sets of random features, provide
    convergence bounds on their ability to approximate various radial basis kernels,
    and show that in large-scale classification and regression tasks linear machine
    learning algorithms that use these features outperform state-of-the-art large-scale
    kernel machines.
    On the Error of Random Fourier Features

    https://www.cs.cmu.edu/~dsutherl/papers/rff_uai15.pdf

    Kernel methods give powerful, flexible, and the-
    oretically grounded approaches to solving many
    problems in machine learning. The standard ap-
    proach, however, requires pairwise evaluations
    of a kernel function, which can lead to scalabil-
    ity issues for very large datasets. Rahimi and
    Recht (2007) suggested a popular approach to
    handling this problem, known as random Fourier
    features. The quality of this approximation, how-
    ever, is not well understood. We improve the uni-
    form error bound of that paper, as well as giving
    novel understandings of the embedding’s vari-
    ance, approximation error, and use in some ma-
    chine learning methods. We also point out that
    surprisingly, of the two main variants of those
    features, the more widely used is strictly higher-
    variance for the Gaussian kernel and has worse
    bounds.
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  • 原文地址:https://www.cnblogs.com/rsapaper/p/7538466.html
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