Don Hilary J, Beesley Tom, Livesey Evan J
School of Psychology.
Department of Psychology.
J Exp Psychol Anim Learn Cogn. 2019 Apr;45(2):143-162. doi: 10.1037/xan0000196. Epub 2019 Mar 14.
Several attention-based models of associative learning are built upon the learned predictiveness principle, whereby learning is optimized by attending to the most predictive features and ignoring the least predictive features. Despite their functional similarity, these models differ in their formal mechanisms and thus may produce very different predictions in some circumstances. As we demonstrate, this is particularly evident in the inverse base-rate effect. Using simulations with a modified Mackintosh model and the EXIT model, we found that models based on the learned predictiveness principle can account for rare-outcome choice biases associated with the inverse base-rate effect, despite making opposite predictions for relative attention to rare versus common predictors. The models also make different predictions regarding changes in attention across training, and effects of context associations on attention to cues. Using a human causal learning task, we replicated the inverse base-rate effect and a recently reported reduction in this effect when the context is not predictive of the common outcome and used eye-tracking to test model predictions about changes in attention both prior to making a decision, and during feedback. The results support the predictions made by EXIT, where the rare predictor commands greater attention than the common predictor throughout training. In addition, patterns of attention prior to making a decision differed to those during feedback, where effects of using a partially predictive context were evident only prior to making a prediction. (PsycINFO Database Record (c) 2019 APA, all rights reserved).
几种基于注意力的联想学习模型是建立在习得预测性原则之上的,即通过关注最具预测性的特征并忽略最不具预测性的特征来优化学习。尽管它们在功能上相似,但这些模型在形式机制上有所不同,因此在某些情况下可能会产生非常不同的预测。正如我们所证明的,这在逆基率效应中尤为明显。通过对修改后的麦金托什模型和EXIT模型进行模拟,我们发现基于习得预测性原则的模型可以解释与逆基率效应相关的罕见结果选择偏差,尽管对于罕见预测因子与常见预测因子的相对关注度做出了相反的预测。这些模型在训练过程中注意力的变化以及情境关联对线索注意力的影响方面也做出了不同的预测。使用一项人类因果学习任务,我们重现了逆基率效应以及最近报道的当情境不能预测常见结果时该效应的降低,并使用眼动追踪来测试模型关于决策前和反馈期间注意力变化的预测。结果支持了EXIT模型的预测,即在整个训练过程中,罕见预测因子比常见预测因子吸引了更多的注意力。此外,决策前的注意力模式与反馈期间的不同,在反馈期间,使用部分预测性情境的影响仅在做出预测之前明显。(PsycINFO数据库记录(c)2019美国心理学会,保留所有权利)