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Performance measures for dynamic signal detection

机译:动态信号检测的性能指标

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摘要

For more than half a century, experimental studies of various kinds of detection and discrimination behavior have tended to rely on the simple, two-stage statistical decision model known as signal detection theory. An apparent weakness of this classical framework is its assumption that making a decision is equivalent to choosing a decision criterion or boundary to map perceptual or evidence states to a binary classification response. This static representation leads to several fundamental mispredictions about qualitative properties of discrimination, each of which is characteristic of a dynamic detection process. In this article, we show that there is a robust solution to a second class of problems introduced originally by detection theorists, but later mostly abandoned - the problem of estimating the detectability of the signal when the decision process is sequential. In an empirical application, a detectability statistic defined on a crude description of the temporal dynamics of the detection process is shown to be roughly constant under manipulations of both response preference and response speed. The estimated stringency of the stopping condition decreased in conjunction with a decrease in signal strength in time, consistent with the hypothesis that sensory information is retrieved from a decaying memory store. The analysis also makes it possible to estimate the bivariate distribution of the sensory and non-sensory components of the response time.
机译:在半个多世纪的时间里,各种检测和辨别行为的实验研究趋向于依赖于简单的两阶段统计决策模型,即信号检测理论。这种经典框架的一个明显弱点是它的假设,即做出决策等同于选择决策标准或边界以将感知或证据状态映射到二元分类响应。这种静态表示导致对歧视的定性性质的一些基本错误预测,每种错误预测都是动态检测过程的特征。在本文中,我们证明了对最初由检测理论家提出的第二类问题有一个可靠的解决方案,但后来却大都被抛弃了-当决策过程是顺序的时,估计信号的可检测性问题。在经验应用中,在响应优先级和响应速度的操纵下,对检测过程的时间动态的粗略描述中定义的可检测性统计数据显示为大致恒定。停止条件的估计严格度随着时间上信号强度的降低而降低,这与从衰减的存储器中检索到感官信息的假设相一致。该分析还可以估计响应时间的感觉和非感觉成分的二元分布。

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