Interpretable Semantic Vectors from a Joint Model of Brain- and Text-Based Meaning.

Alona Fyshe, Partha P Talukdar, Brian Murphy, Tom M Mitchell
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Abstract

Vector space models (VSMs) represent word meanings as points in a high dimensional space. VSMs are typically created using a large text corpora, and so represent word semantics as observed in text. We present a new algorithm (JNNSE) that can incorporate a measure of semantics not previously used to create VSMs: brain activation data recorded while people read words. The resulting model takes advantage of the complementary strengths and weaknesses of corpus and brain activation data to give a more complete representation of semantics. Evaluations show that the model 1) matches a behavioral measure of semantics more closely, 2) can be used to predict corpus data for unseen words and 3) has predictive power that generalizes across brain imaging technologies and across subjects. We believe that the model is thus a more faithful representation of mental vocabularies.

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大脑和文本意义联合模型中的可解释语义向量
向量空间模型(VSM)将词义表示为高维空间中的点。VSM 通常使用大型文本语料库创建,因此代表的是在文本中观察到的词义。我们提出了一种新算法(JNNSE),该算法可以将以前未用于创建 VSM 的语义度量方法纳入其中:即在人们阅读单词时记录的大脑激活数据。由此产生的模型利用了语料库和脑激活数据的互补优缺点,对语义进行了更完整的表述。评估结果表明,该模型:1)与语义的行为测量更为匹配;2)可用于预测未见词语的语料库数据;3)具有跨脑成像技术和跨受试者的预测能力。因此,我们认为该模型能更忠实地反映心理词汇。
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