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ANALYSIS OF THE PERFORMANCE OF A PARAMETRIC AND NONPARAMETRIC CLASSIFICATION SYSTEM: AN APPLICATION TO FEATURE SELECTION AND EXTRACTION IN RADAR TARGET IDENTIFICATION.

机译:参数和非参数分类系统的性能分析:在雷达目标识别中的特征选择和提取中的应用。

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摘要

This dissertation investigates new parametric and nonparametric bounds on the Bayes risk that can be used as a criterion in feature selection and extraction in radar target identification (RTI).; For the parametric case, where the form of the underlying statistical distributions is known, Bayesian decision theory offers a well-motivated methodology for the design of parametric classifiers. This investigation provides new bounds on the Bayes risk for both simple and composite classes. Bounds on the Bayes risk for M classes are derived in terms of the risk functions for (M - 1) classes, and so on until the result depends on the Pairwise Bayes risks.; When the parameters of the underlying distributions are unknown, an analysis of the effect of finite sample size and dimensionality on these bounds is given for the case of supervised learning. For the case of unsupervised learning, the parameters of these distributions are evaluated by using the maximum likelihood technique by means of an iterative method and an appropriate algorithm.; Finally, for the nonparametric case, where the form of the underlying statistical distributions is unknown, a nonparametric technique, the nearest-neighbor (N N) rule, is used to provide estimated bounds on the Bayes risk. Two methods are proposed to produce a finite sample size risk close to the asymptotic one. The difference between the finite sample size risk and the asymptotic risk is used as the criterion of improvement.
机译:本文研究了贝叶斯风险的新参数和非参数边界,这些边界可作为雷达目标识别(RTI)中特征选择和提取的标准。对于已知基本统计分布形式的参数情况,贝叶斯决策理论为参数分类器的设计提供了一种积极的方法。这项研究为简单和复合类的贝叶斯风险提供了新的界限。 M类的贝叶斯风险界限是根据(M-1)类的风险函数得出的,依此类推,直到结果取决于成对贝叶斯风险为止。当基础分布的参数未知时,对于监督学习的情况,将对有限样本大小和维度对这些范围的影响进行分析。对于无监督学习,这些分布的参数通过最大似然技术通过迭代方法和适当的算法进行评估。最后,对于非参数情况,其中基础统计分布的形式是未知的,可使用非参数技术,即最近邻居(N N)规则来提供贝叶斯风险的估计范围。提出了两种方法来产生接近渐近方法的有限样本量风险。有限样本量风险和渐近风险之间的差异被用作改善的标准。

著录项

  • 作者

    DJOUADI, ABDELHAMID.;

  • 作者单位

    The Ohio State University.;

  • 授予单位 The Ohio State University.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 1987
  • 页码 175 p.
  • 总页数 175
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 无线电电子学、电信技术;
  • 关键词

  • 入库时间 2022-08-17 11:51:00

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