Department of Psychology, City, University of London, UK.
Department of Psychology, UCLA, United States.
Cognition. 2021 Aug;213:104621. doi: 10.1016/j.cognition.2021.104621. Epub 2021 Feb 17.
Learning often requires splitting continuous signals into recurring units, such as the discrete words constituting fluent speech; these units then need to be encoded in memory. A prominent candidate mechanism involves statistical learning of co-occurrence statistics like transitional probabilities (TPs), reflecting the idea that items from the same unit (e.g., syllables within a word) predict each other better than items from different units. TP computations are surprisingly flexible and sophisticated. Humans are sensitive to forward and backward TPs, compute TPs between adjacent items and longer-distance items, and even recognize TPs in novel units. We explain these hallmarks of statistical learning with a simple model with tunable, Hebbian excitatory connections and inhibitory interactions controlling the overall activation. With weak forgetting, activations are long-lasting, yielding associations among all items; with strong forgetting, no associations ensue as activations do not outlast stimuli; with intermediate forgetting, the network reproduces the hallmarks above. Forgetting thus is a key determinant of these sophisticated learning abilities. Further, in line with earlier dissociations between statistical learning and memory encoding, our model reproduces the hallmarks of statistical learning in the absence of a memory store in which items could be placed.
学习通常需要将连续信号分解为重复的单元,例如构成流畅语音的离散单词;然后需要将这些单元编码到记忆中。一个突出的候选机制涉及到共现统计的统计学习,例如转移概率(TP),反映了来自同一单元的项目(例如,一个词中的音节)彼此之间的预测性优于来自不同单元的项目的想法。TP 计算具有惊人的灵活性和复杂性。人类对前向和后向 TP、相邻项目和更长距离项目之间的 TP 以及甚至对新单元中的 TP 都很敏感。我们使用具有可调谐的赫布兴奋性连接和抑制性相互作用的简单模型来解释这些统计学习的特征,这些连接和相互作用控制着整体激活。遗忘较弱时,激活是持久的,会导致所有项目之间的关联;遗忘较强时,由于激活不会持续超过刺激,因此不会产生关联;遗忘适中时,网络会再现上述特征。因此,遗忘是这些复杂学习能力的关键决定因素。此外,与统计学习和记忆编码之间的早期分离一致,我们的模型在没有可以放置项目的记忆存储的情况下再现了统计学习的特征。