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On the Optimality of Likelihood Ratio Test for Prospect Theory-Based Binary Hypothesis Testing

机译:基于前景理论的二元假设检验的似然比检验的最优性

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In this letter, the optimality of the likelihood ratio test (LRT) is investigated for binary hypothesis testing problems in the presence of a behavioral decision-maker. By utilizing prospect theory, a behavioral decision-maker is modeled to cognitively distort probabilities and costs based on some weight and value functions, respectively. It is proved that the LRT may or may not be an optimal decision rule for prospect theory-based binary hypothesis testing, and conditions are derived to specify different scenarios. In addition, it is shown that when the LRT is an optimal decision rule, it corresponds to a randomized decision rule in some cases; i.e., nonrandomized LRTs may not be optimal. This is unlike Bayesian binary hypothesis testing, in which the optimal decision rule can always be expressed in the form of a nonrandomized LRT. Finally, it is proved that the optimal decision rule for prospect theory-based binary hypothesis testing can always be represented by a decision rule that randomizes at most two LRTs. Two examples are presented to corroborate the theoretical results.
机译:在这封信中,针对存在行为决策者的情况下的二元假设检验问题,研究了似然比检验(LRT)的最优性。通过使用前景理论,对行为决策者进行建模,以分别基于某些权重和价值函数在认知上扭曲概率和成本。事实证明,对于基于前景理论的二元假设检验,LRT可能不是最佳决策规则,并且推导了条件以指定不同的场景。另外,可以看出,当LRT是最佳决策规则时,在某些情况下它对应于随机决策规则。即非随机LRT可能不是最佳选择。这与贝叶斯二元假设检验不同,在贝叶斯二元假设检验中,最佳决策规则始终可以以非随机LRT的形式表示。最后,证明了基于前景理论的二元假设检验的最佳决策规则始终可以由最多随机化两个LRT的决策规则表示。给出两个例子以证实理论结果。

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