停止-信号范式的依赖竞赛模型

Hans Colonius, Paria Jahansa, Harry Joe, Adele Diederich
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引用次数: 0

摘要

停止信号处理的竞争模型是基于go和stop进程之间上下文无关的假设。最近的经验证据与独立种族模型的预测不一致,被解释为上下文独立性的失败。在这里,我们证明,在假设go和stop处理之间的随机依赖的同时保持上下文独立性,也可以解释观察到的违规。几个例子证明了随机依赖的种族模型是如何从统计学的一个快速发展的领域中推导出来的。停止信号处理时间的不可观测性问题等价于随机相关滤波中的一个众所周知的问题。
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Towards Dependent Race Models for the Stop-Signal Paradigm
Abstract The race model for stop signal processing is based on the assumption of context independence between the go and stop process. Recent empirical evidence inconsistent with predictions of the independent race model has been interpreted as a failure of context independence. Here we demonstrate that, keeping context independence while assuming stochastic dependency between go and stop processing, one can also account for the observed violations. Several examples demonstrate how stochastically dependent race models can be derived from copulas, a rapidly developing area of statistics. The non-observability of stop signal processing time is shown to be equivalent to a well known issue in random dependent censoring.
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