The Ohio State University.
Psychol Rev. 2019 Oct;126(5):660-692. doi: 10.1037/rev0000148. Epub 2019 Apr 11.
We develop a computational model-the adaptive representation model (ARM)-for relating 2 classic theories of learning dynamics: instance and strength theory. Within the model, we show how the principles of instance and strength theories can be instantiated, so that the validity of their assumptions can be tested against experimental data. We show how under some conditions, models embodying instance representations can be considered a special case of a strength-based representation. We discuss a number of mechanisms for producing adaptive behaviors in dynamic environments, and detail how they may be instantiated within ARM. To evaluate the relative strengths of the proposed mechanisms, we construct a suite of 10 model variants, and fit them to single-trial choice response time data from three experiments. The first experiment involves dynamic shifts in the frequency of category exposure, the second experiment involves shifts in the means of the category distributions, and the third experiment involves shifts in both the mean and variance of the category distributions. We evaluate model performance by assessing model fit, penalized for complexity, at both the individual and aggregate levels. We show that the mechanisms of prediction error and lateral inhibition are strong contributors to the successes of the model variants considered here. Our results suggest that the joint distribution of choice and response time can be thought of as an emergent property of an evolving representation mapping stimulus attributes to their appropriate response assignment. (PsycINFO Database Record (c) 2019 APA, all rights reserved).
我们开发了一种计算模型——自适应表示模型(ARM)——用于关联学习动力学的两个经典理论:实例理论和强度理论。在该模型中,我们展示了如何实例化实例和强度理论的原则,以便可以根据实验数据检验其假设的有效性。我们展示了在某些条件下,体现实例表示的模型可以被视为基于强度的表示的特殊情况。我们讨论了在动态环境中产生自适应行为的多种机制,并详细说明了它们如何在 ARM 中实例化。为了评估所提出机制的相对优势,我们构建了一套 10 个模型变体,并将其拟合到来自三个实验的单次试验选择反应时数据。第一个实验涉及类别曝光频率的动态变化,第二个实验涉及类别分布均值的变化,第三个实验涉及类别分布均值和方差的变化。我们通过评估个体和总体水平上的模型拟合度和复杂度惩罚来评估模型性能。我们表明,预测误差和侧向抑制的机制是模型变体成功的重要贡献者。我们的结果表明,选择和反应时间的联合分布可以被视为刺激属性与其相应反应分配之间不断演变的表示映射的涌现属性。(PsycINFO 数据库记录(c)2019 APA,保留所有权利)。