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Semantic Models as a Combination of Free Association Norms and Corpus-Based Correlations

机译:语义模型是自由联想规范和基于语料库的关联的组合

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We present computational models capable of understanding and conveying concepts based on word associations. We discover word associations automatically using corpus-based semantic models with Wikipedia as the corpus. The best model effectively combines corpus-based models with preexisting databases of free association norms gathered from human volunteers. We use this model to play human-directed and computer-directed word guessing games (games with a purpose similar to Catch Phrase or Taboo) and show that this model can measurably convey and understand some aspect of word meaning. The results highlight the fact that human-derived word associations and corpus-derived word associations can play complementary roles in semantic models.
机译:我们提出了能够理解和传达基于单词联想的概念的计算模型。我们使用以维基百科为语料库的基于语料库的语义模型自动发现单词关联。最佳模型有效地将基于语料库的模型与从人类志愿者那里收集的自由联想规范的现有数据库有效地结合在一起。我们使用此模型玩以人为导向和计算机控制的猜词游戏(目的类似于“赶时髦”或“禁忌”的游戏),并证明该模型可以相当程度地传达和理解单词含义的某些方面。结果突出了这样一个事实,即人源词关联和语料库词关联在语义模型中可以起互补作用。

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