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Quantifying stimulus discriminability: A comparison of information theory and ideal observer analysis

机译:量化刺激可辨性:信息理论与理想观察者分析的比较

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摘要

Performance in sensory discrimination tasks is commonly quantified using either information theory or ideal observer analysis. These two quantitative frameworks are often assumed to be equivalent. For example, higher mutual information is said to correspond to improved performance of an ideal observer in a stimulus estimation task. To the contrary, drawing on and extending previous results, we show that five information-theoretic quantities (entropy, response-conditional entropy, specific information, equivocation, and mutual information) violate this assumption. More positively, we show how these information measures can be used to calculate upper and lower bounds on ideal observer performance, and vice versa. The results show that the mathematical resources of ideal observer analysis are preferable to information theory for evaluating performance in a stimulus discrimination task. We also discuss the applicability of information theory to questions that ideal observer analysis cannot address.
机译:通常使用信息论或理想的观察者分析来量化感官辨别任务中的表现。通常认为这两个定量框架是等效的。例如,据称较高的互信息对应于刺激估计任务中理想观察者的性能提高。相反,利用并扩展先前的结果,我们表明五个信息理论量(熵,响应条件熵,特定信息,模棱两可和互信息)违反了这一假设。更积极地,我们展示了如何使用这些信息度量来计算理想观察者性能的上限和下限,反之亦然。结果表明,理想的观察者分析的数学资源比信息论更可用于评价刺激识别任务的性能。我们还将讨论信息理论对理想观察者分析无法解决的问题的适用性。

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