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The Construction of Semantic Memory: Grammar-Based Representations Learned from Relational Episodic Information

机译:语义记忆的构建:从关系情节信息中学习的基于语法的表示

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摘要

After acquisition, memories underlie a process of consolidation, making them more resistant to interference and brain injury. Memory consolidation involves systems-level interactions, most importantly between the hippocampus and associated structures, which takes part in the initial encoding of memory, and the neocortex, which supports long-term storage. This dichotomy parallels the contrast between episodic memory (tied to the hippocampal formation), collecting an autobiographical stream of experiences, and semantic memory, a repertoire of facts and statistical regularities about the world, involving the neocortex at large. Experimental evidence points to a gradual transformation of memories, following encoding, from an episodic to a semantic character. This may require an exchange of information between different memory modules during inactive periods. We propose a theory for such interactions and for the formation of semantic memory, in which episodic memory is encoded as relational data. Semantic memory is modeled as a modified stochastic grammar, which learns to parse episodic configurations expressed as an association matrix. The grammar produces tree-like representations of episodes, describing the relationships between its main constituents at multiple levels of categorization, based on its current knowledge of world regularities. These regularities are learned by the grammar from episodic memory information, through an expectation-maximization procedure, analogous to the inside–outside algorithm for stochastic context-free grammars. We propose that a Monte-Carlo sampling version of this algorithm can be mapped on the dynamics of “sleep replay” of previously acquired information in the hippocampus and neocortex. We propose that the model can reproduce several properties of semantic memory such as decontextualization, top-down processing, and creation of schemata.
机译:采集后,记忆是巩固过程的基础,使它们更能抵抗干扰和脑损伤。记忆整合涉及系统级的交互作用,最重要的是海马体和相关结构之间的相互作用(参与记忆的初始编码)和新皮质(支持长期存储)之间的相互作用。这种二分法与情节性记忆(与海马结构相关),自传经历的收集和语义记忆,有关世界的事实和统计规律的汇编(涉及整个新皮层)之间的对比相似。实验证据表明,在编码之后,记忆会逐渐从情景性转换为语义性。这可能需要在不活动期间在不同内存模块之间交换信息。我们提出了一种用于这种相互作用和语义记忆形成的理论,其中情节记忆被编码为关系数据。语义记忆被建模为修改后的随机语法,该语法学会了解析表达为关联矩阵的情节配置。语法根据当前对世界规律性的了解,以树状表示情节,在多个分类级别上描述其主要成分之间的关​​系。这些规则是语法从情节记忆信息中通过期望最大化过程学习的,类似于随机上下文无关语法的内外算法。我们建议可以将此算法的蒙特卡洛采样版本映射到海马和新皮层中先前获取的信息的“睡眠重放”动力学上。我们建议该模型可以重现语义记忆的几个属性,例如去上下文化,自上而下的处理以及图式的创建。

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