最小封闭球的随机梯度下降

Hang Dang, Trung Le, Khanh-Duy Nguyen, N. Ngo
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引用次数: 0

摘要

本文将随机梯度下降框架应用于寻找最小封闭球的异常检测问题。其主要困难在于最小封闭球背后的优化问题的原始形式不是凸的,因此在理论上不能保证以良好的收敛速度收敛到全局最小值。我们通过将寻找最小封闭球的问题转化为在扩展空间中寻找最大边缘超平面的问题来解决这个问题。我们在几个基准数据集上验证了所提出的方法。实验结果表明,该方法在提高测试精度的同时,实现了显著的计算加速。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stochastic gradient descent for minimal enclosing ball
In this paper, we apply Stochastic Gradient Descent framework to the problem of finding minimal enclosing ball for anomaly detection purpose. The main difficulty lies in the fact that the primal form of the optimization problem behind minimal enclosing ball is not convex and hence a convergence to a global minima with a good convergence rate is not guaranteed in theory. We address this issue by transforming the problem of finding a minimal enclosing ball to that of finding a largest margin hyperplane in the extended space. We validate the proposed method on several benchmark datasets. The experimental results point out that our proposed method gains higher testing accuracy while simultaneously achieving a significantly computational speedup.
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