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Multinomial processing trees with response times: Changing speed and accuracy by selectively influencing a vertex

机译:多项式加工树具有响应时间:通过选择性地影响顶点来改变速度和准确性

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In many experiments a person performs a task, such as identifying a letter, and an experimental factor, such as brightness, is manipulated. Empirically, changing the level of a factor often produces a relation, stochastic dominance, on the response time cumulative distribution functions. Specifically, for levels 1 and 2 of the factor, let H-1(t) and H-2(t) be the cumulative distribution functions of the correct response time. Then one often finds that for all times t, H-1(t) >= H-2(t). We consider a Multinomial Processing Tree in which arcs have a probability of being selected and require time to be selected. It is natural to consider the effect of a factor on products of probability and time. At levels 1 and 2 of the factor, let pi(1) and pi(2) be the probability of a correct response. The factor produces weighted stochastic dominance if pi(1)H-1(t) >= pi(2)H-2(t) for all times t. An experimental factor selectively influences a vertex in a Multinomial Processing Tree if changing the level of the factor changes parameters at a single vertex, leaving all else invariant. We consider conditions under which a factor selectively influencing a vertex in a Multinomial Processing Tree produces weighted stochastic dominance. Our assumptions allow parameters in a Multinomial Processing Tree to vary from trial to trial, and to be correlated through dependence on a common random variable. Further, the same Multinomial Processing Tree need not be used on every trial, there may be a mixture of Multinomial Processing Trees. We demonstrate results of theorems with a simulation. (C) 2019 Elsevier Inc. All rights reserved.
机译:在许多实验中,人们执行任务,例如识别字母,并且操纵亮度等实验因素。在响应时间累积分布函数上,改变因素的水平往往会产生关系,随机优势。具体地,对于因子的级别1和2,让H-1(t)和H-2(t)是正确响应时间的累积分布函数。然后一次经常发现所有时间t,h-1(t)> = h-2(t)。我们考虑一个多项式处理树,其中弧具有被选择的概率并且需要选择时间。考虑对概率和时间产品的影响是自然的。在因子的第1和第2级,让PI(1)和PI(2)是正确响应的概率。如果PI(1)H-1(T)> = PI(2)H-2(T),则该因子产生加权随机优势。如果在单个顶点处改变因子的级别,则在多项式处理树中选择性地影响多项式处理树中的顶点,留下所有其他不变量。我们考虑在多项式处理树中选择性地影响顶点的因素产生的条件产生加权随机优势。我们的假设允许多项式处理树中的参数因试验而异,并通过依赖于常见的随机变量来关联。此外,每个试验不需要使用相同的多项加工树,可能存在多项加工树的混合。我们展示了模拟的定理结果。 (c)2019 Elsevier Inc.保留所有权利。

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