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A Spreading Activation Framework for Tracking Conceptual Complexity of Texts

机译:用于跟踪文本概念复杂性的扩展激活框架

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We propose an unsupervised approach for assessing conceptual complexity of texts, based on spreading activation. Using DBpedia knowledge graph as a proxy to long-term memory, mentioned concepts become activated and trigger further activation as the text is sequentially traversed. Drawing inspiration from psycholinguistic theories of reading comprehension, we model memory processes such as semantic priming, sentence wrap-up, and forgetting. We show that our models capture various aspects of conceptual text complexity and significantly outperform current state of the art.
机译:我们基于扩展激活,提出了一种无监督的方法来评估文本的概念复杂性。使用DBpedia知识图作为长期记忆的代理,当依次遍历文本时,上述概念将被激活并触发进一步的激活。从阅读理解的心理语言学理论中汲取灵感,我们为记忆过程建模,例如语义启动,句子包裹和遗忘。我们表明,我们的模型捕获了概念性文本复杂性的各个方面,并且大大超过了当前的技术水平。

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