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Optimal multivariate classification by linear thresholding

机译:通过线性阈值优化多元分类

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The purpose of this paper is two-fold: 1. We pose the problem of linear thresholding, a classification scheme that uses a threshold variable on multivariate measurements. We begin with formalizing the problem for dichotomy (i.e., with two options, such as true or false), then further generalize the problem for trichotomy (i.e., with three options, such as true, false, or unknown). We present necessary conditions for optimality along with numerical examples. 2. We pose the problem of linear mixed-initiative nested thresholding, a classification architecture that exploits a primary, workload-independent, trichotomous classifier and a secondary, workload-dependent, dichotomous classifier in a nested structure with multivariate measurements. We provide necessary conditions for optimality and proof-of-concept numerical examples.
机译:本文的目的有两个方面:1.我们提出了线性阈值问题,这是一种在多变量测量中使用阈值变量的分类方案。我们首先将二分法的问题形式化(即有两个选择,如是或否),然后再进一步推广三分法问题(即有三个选择,如是,假或未知)。我们提供最佳条件的必要条件以及数值示例。 2.我们提出了线性混合起始嵌套阈值的问题,该分类体系结构在具有多元度量的嵌套结构中利用了主要的,独立于工作负载的三分类器和次要的,依赖于工作量的二分类器。我们为优化和概念验证的数值示例提供了必要的条件。

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