School of Psychology, National Research University Higher School of Economics, Moscow, Russia.
Department of Psychology, University of Iceland, Reykjavik, Iceland.
Q J Exp Psychol (Hove). 2023 Mar;76(3):497-510. doi: 10.1177/17470218221094572. Epub 2022 May 19.
Foraging as a natural visual search for multiple targets has increasingly been studied in humans in recent years. Here, we aimed to model the differences in foraging strategies between feature and conjunction foraging tasks found by Á. Kristjánsson et al. Bundesen proposed the theory of visual attention (TVA) as a computational model of attentional function that divides the selection process into filtering and pigeonholing. The theory describes a mechanism by which the strength of sensory evidence serves to categorise elements. We combined these ideas to train augmented Naïve Bayesian classifiers using data from Á. Kristjánsson et al. as input. Specifically, we attempted to answer whether it is possible to predict how frequently observers switch between different target types during consecutive selections (switches) during feature and conjunction foraging using Bayesian classifiers. We formulated 11 new parameters that represent key sensory and bias information that could be used for each selection during the foraging task and tested them with multiple Bayesian models. Separate Bayesian networks were trained on feature and conjunction foraging data, and parameters that had no impact on the model's predictability were pruned away. We report high accuracy for switch prediction in both tasks from the classifiers, although the model for conjunction foraging was more accurate. We also report our Bayesian parameters in terms of their theoretical associations with TVA parameters, (denoting the pertinence value), and (denoting the decision-making bias).
近年来,人们越来越多地研究人类的自然视觉搜索多目标觅食行为。在这里,我们旨在模拟 Á. Kristjánsson 等人发现的特征搜索和联合搜索任务之间的觅食策略差异。Bundesen 提出了视觉注意理论 (TVA),作为注意力功能的计算模型,将选择过程分为过滤和分类。该理论描述了一种机制,通过该机制,感官证据的强度有助于对元素进行分类。我们结合这些想法,使用 Á. Kristjánsson 等人的数据来训练增强的朴素贝叶斯分类器作为输入。具体来说,我们试图回答是否可以使用贝叶斯分类器预测观察者在特征搜索和联合搜索觅食任务中连续选择(切换)期间,在不同目标类型之间切换的频率。我们为觅食任务中的每个选择制定了 11 个新的参数,这些参数代表了可以用于每个选择的关键感官和偏差信息,并使用多个贝叶斯模型对其进行了测试。在特征搜索和联合搜索数据上分别训练了贝叶斯网络,并剔除了对模型可预测性没有影响的参数。我们报告了分类器在两个任务中切换预测的高准确性,尽管联合搜索的模型更准确。我们还根据与 TVA 参数的理论关联报告了我们的贝叶斯参数, (表示相关性值)和 (表示决策偏差)。