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High-order feature-based mixture models of classification learning predict individual learning curves and enable personalized teaching

机译:基于高阶特征的分类学习混合模型可预测单个学习曲线并实现个性化教学

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摘要

Pattern classification learning tasks are commonly used to explore learning strategies in human subjects. The universal and individual traits of learning such tasks reflect our cognitive abilities and have been of interest both psychophysically and clinically. From a computational perspective, these tasks are hard, because the number of patterns and rules one could consider even in simple cases is exponentially large. Thus, when we learn to classify we must use simplifying assumptions and generalize. Studies of human behavior in probabilistic learning tasks have focused on rules in which pattern cues are independent, and also described individual behavior in terms of simple, single-cue, feature-based models. Here, we conducted psychophysical experiments in which people learned to classify binary sequences according to deterministic rules of different complexity, including high-order, multicue-dependent rules. We show that human performance on such tasks is very diverse, but that a class of reinforcement learning-like models that use a mixture of features captures individual learning behavior surprisingly well. These models reflect the important role of subjects’ priors, and their reliance on high-order features even when learning a low-order rule. Further, we show that these models predict future individual answers to a high degree of accuracy. We then use these models to build personally optimized teaching sessions and boost learning.
机译:模式分类学习任务通常用于探索人类受试者的学习策略。学习此类任务的普遍特征和个体特征反映了我们的认知能力,并且在心理和临床上都引起了人们的兴趣。从计算的角度来看,这些任务非常艰巨,因为即使在简单的情况下,人们也可以考虑的模式和规则的数量成倍增加。因此,当我们学习分类时,必须使用简化的假设并进行概括。概率学习任务中人类行为的研究集中于模式提示独立的规则,并且还基于简单,单线索,基于特征的模型描述了个体行为。在这里,我们进行了心理物理实验,使人们学会了根据不同复杂性的确定性规则(包括高阶,依赖多线索的规则)对二进制序列进行分类。我们表明,人类在此类任务上的表现非常多样化,但是使用强化特征的类混合功能模型可以很好地捕获个人学习行为。这些模型反映了对象先验的重要作用,以及他们在学习低阶规则时对高阶特征的依赖。此外,我们显示这些模型可以高度准确地预测未来的个人答案。然后,我们使用这些模型来构建个人优化的教学课程并促进学习。

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