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首页> 外文期刊>Cognitive Psychology >The Parallel Episodic Processing (PEP) model 2.0: A single computational model of stimulus-response binding, contingency learning, power curves, and mixing costs
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The Parallel Episodic Processing (PEP) model 2.0: A single computational model of stimulus-response binding, contingency learning, power curves, and mixing costs

机译:并行情节处理(PEP)模型2.0:刺激-响应绑定,偶发性学习,功率曲线和混合成本的单个计算模型

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The current paper presents an extension of the Parallel Episodic Processing model. The model is developed for simulating behaviour in performance (i.e., speeded response time) tasks and learns to anticipate both how and when to respond based on retrieval of memories of previous trials. With one fixed parameter set, the model is shown to successfully simulate a wide range of different findings. These include: practice curves in the Stroop paradigm, contingency learning effects, learning acquisition curves, stimulus-response binding effects, mixing costs, and various findings from the attentional control domain. The results demonstrate several important points. First, the same retrieval mechanism parsimoniously explains stimulus-response binding, contingency learning, and practice effects. Second, as performance improves with practice, any effects will shrink with it. Third, a model of simple learning processes is sufficient to explain phenomena that are typically (but perhaps incorrectly) interpreted in terms of higher-order control processes. More generally, we argue that computational models with a fixed parameter set and wider breadth should be preferred over those that are restricted to a narrow set of phenomena. (C) 2016 Elsevier Inc. All rights reserved.
机译:本文提出了并行情节处理模型的扩展。开发该模型是为了模拟性能(即,加快响应时间)任务中的行为,并基于对先前试验的记忆来学习预测如何以及何时响应。通过一个固定参数集,该模型可以成功模拟各种不同的发现。这些包括:Stroop范式中的练习曲线,偶发性学习效果,学习习得曲线,刺激响应绑定效果,混合成本以及注意力控制领域的各种发现。结果证明了几个要点。首先,相同的检索机制简约地解释了刺激-反应的约束,偶然性学习和实践效果。其次,随着性能的提高,实践效果会随之下降。第三,简单的学习过程模型足以解释通常由高阶控制过程解释的现象(但可能不正确)。更笼统地说,我们认为具有固定参数集和较宽广度的计算模型应优于那些仅限于一组现象的模型。 (C)2016 Elsevier Inc.保留所有权利。

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