A simple algorithm for convex hull determination in high dimensions

H. Khosravani, A. Ruano, P. Ferreira
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引用次数: 13

Abstract

Selecting suitable data for neural network training, out of a larger set, is an important task. For approximation problems, as the role of the model is a nonlinear interpolator, the training data should cover the whole range where the model must be used, i.e., the samples belonging to the convex hull of the data should belong to the training set. Convex hull is also widely applied in reducing training data for SVM classification. The determination of the samples in the convex-hull of a set of high dimensions, however, is a time-complex task. In this paper, a simple algorithm for this problem is proposed.
一个简单的高维凸包确定算法
从一个更大的数据集中选择合适的神经网络训练数据是一个重要的任务。对于逼近问题,由于模型的作用是一个非线性插值器,所以训练数据应该覆盖必须使用模型的整个范围,即属于数据凸包的样本应该属于训练集。凸包也被广泛应用于SVM分类的训练数据约简。然而,在一组高维凸壳中样品的测定是一项费时复杂的任务。本文提出了一种求解该问题的简单算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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