Linear Decision Functions, with Application to Pattern Recognition

W. Highleyman
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引用次数: 160

Abstract

Many pattern recognition machines may be considered to consist of two principal parts, a receptor and a categorizer. The receptor makes certain measurements on the unknown pattern to be recognized; the categorizer determines from these measurements the particular allowable pattern class to which the unknown pattern belongs. This paper is concerned with the study of a particular class of categorizers, the linear decision function. The optimum linear decision function is the best linear approximation to the optimum decision function in the following sense: 1) "Optimum" is taken to mean minimum loss (which includes minimum error systems). 2) "Linear" is taken to mean that each pair of pattern classes is separated by one and only one hyperplane in the measurement space. This class of categorizers is of practical interest for two reasons: 1) It can be empirically designed without making any assumptions whatsoever about either the distribution of the receptor measurements or the a priori probabilities of occurrence of the pattern classes, providing an appropriate pattern source is available. 2) Its implementation is quite simple and inexpensive. Various properties of linear decision functions are discussed. One such property is that a linear decision function is guaranteed to perform at least as well as a minimum distance categorizer. Procedures are then developed for the estimation (or design) of the optimum linear decision function based upon an appropriate sampling from the pattern classes to be categorized.
线性决策函数及其在模式识别中的应用
许多模式识别机器可以被认为由两个主要部分组成,一个受体和一个分类器。受体对待识别的未知模式进行一定的测量;分类器根据这些度量确定未知模式所属的特定允许模式类。本文主要研究一类特殊的分类器——线性决策函数。最优线性决策函数是最优决策函数在以下意义上的最佳线性逼近:1)“最优”是指最小损失(包括最小误差系统)。2)“线性”是指每一对模式类在测量空间中被一个且只有一个超平面分开。这类分类器具有实际意义有两个原因:1)它可以根据经验进行设计,而无需对受体测量的分布或模式类发生的先验概率进行任何假设,只要提供适当的模式源即可。2)它的实现非常简单和廉价。讨论了线性决策函数的各种性质。一个这样的性质是,线性决策函数保证至少和最小距离分类器一样好。然后,根据要分类的模式类的适当抽样,开发用于估计(或设计)最优线性决策函数的程序。
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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