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Toward a tight upper bound for the error probability of the binary Gaussian classification problem

机译:迈向二元高斯分类问题的误差概率的上界

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It is well known that the error probability, of the binary Gaussian classification problem with different class covariance matrices, cannot be generally evaluated exactly because of the lack of closed-form expression. This fact pointed out the need to find a tight upper bound for the error probability. This issue has been for more than 50 years ago and is still of interest. All derived upper-bounds are not free of flaws. They might be loose, computationally inefficient particularly in highly dimensional situations, or excessively time consuming if high degree of accuracy is desired. In this paper, a new technique is developed to estimate a tight upper bound for the error probability of the well-known binary Gaussian classification problem with different covariance matrices. The basic idea of the proposed technique is to replace the optimal Bayes decision boundary with suboptimal boundaries which provide an easy-to-calculate upper bound for the error probability. In particular, three types of decision boundaries are investigated: planes, elliptic cylinders, and cones. The new decision boundaries are selected in such a way as to provide the tightest possible upper bound. The proposed technique is found to provide an upper bound, tighter than many of the often used bounds such as the Chernoff bound and the Bayesian-distance bound. In addition, the computation time of the proposed bound is much less than that required by the Monte-Carlo simulation technique. When applied to real world classification problems, obtained from the UCI repository [H. Chernoff, A measure for asymptotic efficiency of a hypothesis based on a sum of observations, Ann. Math. Statist. 23 (1952) 493-507.], the proposed bound was found to provide a tight bound for the analytical error probability of the quadratic discriminant analysis (QDA) classifier and a good approximation to its empirical error probability. Crown Copyright (C) 2007 Published by Elsevier Ltd. All rights reserved.
机译:众所周知,由于缺少封闭形式的表达,具有不同类别协方差矩阵的二元高斯分类问题的错误概率通常无法准确评估。这个事实表明有必要为错误概率找到一个严格的上限。这个问题已经有50多年了,至今仍然很有趣。所有派生的上限并非没有缺陷。它们可能比较松散,特别是在高尺寸情况下,计算效率低下,或者如果需要很高的精度,则可能会浪费大量时间。在本文中,开发了一种新技术来估计具有不同协方差矩阵的众所周知的二进制高斯分类问题的错误概率的严格上限。所提出的技术的基本思想是用次优边界代替最优贝叶斯决策边界,这为误差概率提供了易于计算的上限。特别是,研究了三种类型的决策边界:平面,椭圆圆柱体和圆锥体。选择新的决策边界,以提供尽可能严格的上限。发现所提出的技术提供了一个上限,比许多常用的界限(例如切尔诺夫界限和贝叶斯距离界限)更紧密。另外,建议边界的计算时间比蒙特卡洛模拟技术所需的时间少得多。当应用于现实世界中的分类问题时,可从UCI存储库中获得[H. Chernoff,基于观察值总和的假设的渐近效率度量,Ann。数学。统计员。 [J.Am.Chem.Soc.23(1952)493-507。]中发现,提出的边界为二次判别分析(QDA)分类器的分析误差概率提供了一个严格的边界,并为它的经验误差概率提供了一个很好的近似值。 Crown版权所有(C)2007,由Elsevier Ltd.发行。保留所有权利。

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