网络控制认知模型中的元认知与多重策略

D. Reitter
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引用次数: 16

摘要

我们提出了一个执行动态库存和流量控制任务的认知模型,在该模型中,受试者通过抵消系统变化的外部变量来控制系统。该模型使用元认知层,从两类策略中选择任务策略:精确计算和不精确估计。该模型是在ACT-R理论中制定的,使用基于实例的学习和从陈述性记忆中混合检索来连续监测每种策略的成功。该模型低估了任务策略的其他部分,其时间是根据经验数据确定的无偏估计。模型的预测是根据从新的实验条件中收集的数据进行评估的,这些数据没有告知模型的发展,并且包括不连续和嘈杂的环境变化函数和控制延迟。模型和数据都表现出主体误差的突然变化和控制的一般学习;该模型还正确地预测了幅度似是而非的振荡。凭借其预测,该模型在2009年动态股票和流动建模挑战的参赛作品中排名第一。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Metacognition and Multiple Strategies in a Cognitive Model of Online Control
Metacognition and Multiple Strategies in a Cognitive Model of Online Control We present a cognitive model performing the Dynamic Stocks&Flows control task, in which subjects control a system by counteracting a systematically changing external variable. The model uses a metacognitive layer that chooses a task strategy drawn from of two classes of strategies: precise calculation and imprecise estimation. The model, formulated within the ACT-R theory, monitors the success of each strategy continuously using instance-based learning and blended retrieval from declarative memory. The model underspecifies other portions of the task strategies, whose timing was determined as unbiased estimate from empirical data. The model's predictions were evaluated on data collected from novel experimental conditions, which did not inform the model's development and included discontinuous and noisy environmental change functions and a control delay. The model as well as the data show sudden changes in subject error and general learning of control; the model also correctly predicted oscillations of plausible magnitude. With its predictions, the model ranked first among the entries to the 2009 Dynamic Stocks&Flows modeling challenge.
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