核机学习的随机子集选择。

Jason Rhinelander, Xiaoping P Liu
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引用次数: 7

摘要

内核机在机器学习的应用中得到了广泛的应用。支持向量机(svm)是核机的一个子集,在分类、回归和异常检测任务中具有很好的泛化性。传统支持向量机的训练过程涉及求解二次规划问题。QP问题的计算量与训练样本的数量呈超线性关系,通常用于数据的离线批处理。内核机器通过在训练期间保留观察数据的子集来运行。包含在这个子集中的数据向量被称为支持向量(SVs)。本文介绍了一种子集选择方法,用于在在线变化的环境中使用内核机。我们的算法通过在计算核展开时选择sv子集时使用随机索引技术来工作。这里描述的工作是新颖的,因为它将核基函数的选择与所使用的训练算法分开。这里提出的子集选择算法可以与任何在线训练技术结合使用。由于在线环境的实时性要求,在线内核机器的计算效率非常重要。我们的算法是一个重要的贡献,因为它随训练样本的数量线性扩展,并且与当前的训练技术兼容。我们的算法在计算效率方面优于标准技术,并在我们的实验中提供了更高的识别精度。我们提供了使用模拟和现实世界数据集的实验结果来验证我们的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stochastic subset selection for learning with kernel machines.

Kernel machines have gained much popularity in applications of machine learning. Support vector machines (SVMs) are a subset of kernel machines and generalize well for classification, regression, and anomaly detection tasks. The training procedure for traditional SVMs involves solving a quadratic programming (QP) problem. The QP problem scales super linearly in computational effort with the number of training samples and is often used for the offline batch processing of data. Kernel machines operate by retaining a subset of observed data during training. The data vectors contained within this subset are referred to as support vectors (SVs). The work presented in this paper introduces a subset selection method for the use of kernel machines in online, changing environments. Our algorithm works by using a stochastic indexing technique when selecting a subset of SVs when computing the kernel expansion. The work described here is novel because it separates the selection of kernel basis functions from the training algorithm used. The subset selection algorithm presented here can be used in conjunction with any online training technique. It is important for online kernel machines to be computationally efficient due to the real-time requirements of online environments. Our algorithm is an important contribution because it scales linearly with the number of training samples and is compatible with current training techniques. Our algorithm outperforms standard techniques in terms of computational efficiency and provides increased recognition accuracy in our experiments. We provide results from experiments using both simulated and real-world data sets to verify our algorithm.

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