Modern statistical approaches to reception in communication theory

D. V. Meter, D. Middleton
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引用次数: 84

Abstract

When reception in the theory of communication is recognized as a problem in statistical inference, system design and system analysis appear as the counterparts of designing and evaluating statistical tests. This paper discusses the optimum properties of designs based on statistical decision theory from the risk point of view, and from that of information theory. Connections between risk and information loss are established, which result in a unified theory of system design. This includes Minimax methods capable in principle of handling all degrees of a priori knowledge of signal and noise statistics, new methods for comparing actual and ideal systems for the same purpose, and new interpretations of previously used formulations as special cases of the more general theory. Both detection and extraction of signals in noise are considered, the former as a problem of testing statistical hypotheses and the latter as one of estimating parameters. Formulation of the general reception problem as a decision operation is followed by a summary of statistical decision theory from the risk point of view, with some examples of Bayes and Minimax tests and optimum classes of decision rules. Applications to detection show the optimum nature of likelihood ratio receivers as a class, and indicate methods for defining the minimum detectable signal and for comparing system performance. As an illustration, curves of Bayes and Minimax risk are given for detection of a pulsed carrier in noise. Applications to extraction show the nature of optimum extraction and the roles of the mean square error and maximum likelihood criteria from the more general point of view of risk theory. Conditions under which information loss is an extremum in detection and extraction are established, and information loss itself as a criterion of performance is compared with that of the risk measure.
传播理论中接收的现代统计方法
当传播理论中的接受问题被认为是统计推理中的一个问题时,系统设计和系统分析就成为设计和评估统计检验的对应物。本文从风险的角度和信息论的角度讨论了基于统计决策理论的设计的最优性质。建立了风险与信息丢失之间的联系,从而形成了统一的系统设计理论。这包括原则上能够处理所有程度的信号和噪声统计的先验知识的极大极小方法,为同一目的比较实际系统和理想系统的新方法,以及对以前使用的公式作为更一般理论的特殊情况的新解释。考虑了噪声中信号的检测和提取,前者是检验统计假设的问题,后者是估计参数的问题。将一般接收问题表述为决策操作,然后从风险的角度总结统计决策理论,并举例说明贝叶斯和极大极小检验以及决策规则的最优类。检测应用显示了似然比接收机作为一类的最佳性质,并指出了定义最小可检测信号和比较系统性能的方法。作为说明,给出了在噪声条件下脉冲载波检测的贝叶斯和极大极小风险曲线。从风险理论的更一般的观点来看,提取的应用表明了最佳提取的性质以及均方误差和最大似然准则的作用。建立了信息损失在检测和提取中达到极值的条件,并将信息损失本身作为性能标准与风险度量的性能标准进行了比较。
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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