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Graph-Theoretic Properties of Networks Based on Word Association Norms: Implications for Models of Lexical Semantic Memory

机译:基于词联想规范的网络图论特性:对词汇语义记忆模型的启示

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We compared the ability of three different contextual models of lexical semantic memory (BEAGLE, Latent Semantic Analysis, and the Topic model) and of a simple associative model (POC) to predict the properties of semantic networks derived from word association norms. None of the semantic models were able to accurately predict all of the network properties. All three contextual models over-predicted clustering in the norms, whereas the associative model under-predicted clustering. Only a hybrid model that assumed that some of the responses were based on a contextual model and others on an associative network (POC) successfully predicted all of the network properties and predicted a word's top five associates as well as or better than the better of the two constituent models. The results suggest that participants switch between a contextual representation and an associative network when generating free associations. We discuss the role that each of these representations may play in lexical semantic memory. Concordant with recent multicomponent theories of semantic memory, the associative network may encode coordinate relations between concepts (e.g., the relation between pea and bean, or between sparrow and robin), and contextual representations may be used to process information about more abstract concepts.
机译:我们比较了词汇语义记忆的三个不同上下文模型(BEAGLE,潜在语义分析和主题模型)和简单关联模型(POC)预测从单词关联规范派生的语义网络的能力。所有语义模型都无法准确预测所有网络属性。这三个上下文模型都过度预测了规范中的聚类,而关联模型则低估了聚类。只有假设某些响应基于上下文模型而其他响应基于关联网络(POC)的混合模型才能成功预测所有网络属性,并预测单词的前五名关联者,以及甚至优于其中的更好者两个组成模型。结果表明,参与者在生成自由关联时会在上下文表示和关联网络之间切换。我们讨论了这些表示形式在词汇语义记忆中可能扮演的角色。与最近的语义记忆的多分量理论一致,关联网络可以编码概念之间的坐标关系(例如,豌豆和豆之间,或麻雀和知更鸟之间的关系),并且上下文表示可以用于处理有关更多抽象概念的信息。

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