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Implications of Visual Attention Phenomena for Models of Preferential Choice

机译:视觉注意现象对偏好选择模型的启示

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摘要

We use computational modeling to examine the ability of evidence accumulation models to produce the reaction time (RT) distributions and attentional biases found in behavioral and eye-tracking research. We focus on simulating RTs and attention in binary choice with particular emphasis on whether different models can predict the late onset bias (LOB), commonly found in eye movements during choice (sometimes called the gaze cascade). The first finding is that this bias is predicted by models even when attention is entirely random and independent of the choice process. This shows that the LOB is not evidence of a feedback loop between evidence accumulation and attention. Second, we examine models with a relative evidence decision rule and an absolute evidence rule. In the relative models a decision is made once the difference in evidence accumulated for 2 items reaches a threshold. In the absolute models, a decision is made once 1 item accumulates a certain amount of evidence, independently of how much is accumulated for a competitor. Our core result is simple—the existence of the late onset gaze bias to the option ultimately chosen, together with a positively skewed RT distribution means that the stopping rule must be relative not absolute. A large scale grid search of parameter space shows that absolute threshold models struggle to predict these phenomena even when incorporating evidence decay and assumptions of either mutual inhibition or feedforward inhibition.
机译:我们使用计算模型来检查证据累积模型产生反应时间(RT)分布和行为和眼动追踪研究中发现的注意偏差的能力。我们专注于模拟RTs和二元选择中的注意力,尤其着重于不同的模型是否可以预测在选择期间的眼球运动(有时称为凝视级联)中常见的迟发性偏见(LOB)。最初的发现是,即使注意力完全是随机的并且与选择过程无关,这种偏倚也是由模型预测的。这表明LOB并不是证据积累和注意力之间的反馈循环的证据。其次,我们检查具有相对证据决策规则和绝对证据规则的模型。在相对模型中,一旦针对两个项目累积的证据差异达到阈值,便会做出决策。在绝对模型中,一旦一件物品累积了一定数量的证据,便会做出决定,而与竞争对手的累积量无关。我们的核心结果很简单-最终选择的选项出现迟发视线偏差,并且RT分布呈正偏斜,这意味着停止规则必须相对而不是绝对的。对参数空间的大规模网格搜索显示,即使结合证据衰减和互抑制或前馈抑制的假设,绝对阈值模型也难以预测这些现象。

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