分块训练有助于学习多种模式

Andre O. Beukers, Silvy H. P. Collin, Ross P. Kempner, Nicholas T. Franklin, Samuel J. Gershman, Kenneth A. Norman
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摘要

我们每个人都拥有一个心理图式库,其中规定了不同类型的事件是如何发生的。这些图式是如何获得的呢?一个关键的挑战是,学习一个新的图式可能会对旧知识造成灾难性的干扰。解决这一难题的方法之一是使用交错训练来学习一个能容纳所有图式的表征。然而,另一类模型则认为,当出现较大预测错误时,可以通过拆分新表征来避免灾难性干扰。一个关键的差异化预测是,根据分裂模型,即使在封闭的训练课程中也能避免灾难性干扰。我们利用贝叶斯模型和神经网络模型进行了一系列半自然实验和模拟,以比较模式学习的 "分裂 "假说和 "非分裂 "假说的预测结果。我们发现,与交错式课程相比,分块式课程的学习成绩更好,并利用贝叶斯模型解释了这些结果,该模型结合了表象分裂以应对较大的预测误差。在后续实验中,我们验证了模型的预测,即在学习早期插入阻断训练比在学习后期插入阻断训练的学习成绩更好。我们的结果表明,不同的学习环境(即课程)在形成图式构成方面发挥着重要作用。贝叶斯模型结合了表象分裂,可以解释在阻塞式学习环境下的记忆效果优于交错式学习环境下的记忆效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Blocked training facilitates learning of multiple schemas
We all possess a mental library of schemas that specify how different types of events unfold. How are these schemas acquired? A key challenge is that learning a new schema can catastrophically interfere with old knowledge. One solution to this dilemma is to use interleaved training to learn a single representation that accommodates all schemas. However, another class of models posits that catastrophic interference can be avoided by splitting off new representations when large prediction errors occur. A key differentiating prediction is that, according to splitting models, catastrophic interference can be prevented even under blocked training curricula. We conducted a series of semi-naturalistic experiments and simulations with Bayesian and neural network models to compare the predictions made by the “splitting” versus “non-splitting” hypotheses of schema learning. We found better performance in blocked compared to interleaved curricula, and explain these results using a Bayesian model that incorporates representational splitting in response to large prediction errors. In a follow-up experiment, we validated the model prediction that inserting blocked training early in learning leads to better learning performance than inserting blocked training later in learning. Our results suggest that different learning environments (i.e., curricula) play an important role in shaping schema composition. A Bayesian model incorporating representational splitting explains better memory performance in blocked compared to interleaved learning contexts.
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