Estimating word co-occurrence probabilities from pretrained static embeddings using a log-bilinear model

Richard Futrell
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引用次数: 1

Abstract

We investigate how to use pretrained static word embeddings to deliver improved estimates of bilexical co-occurrence probabilities: conditional probabilities of one word given a single other word in a specific relationship. Such probabilities play important roles in psycholinguistics, corpus linguistics, and usage-based cognitive modeling of language more generally. We propose a log-bilinear model taking pretrained vector representations of the two words as input, enabling generalization based on the distributional information contained in both vectors. We show that this model outperforms baselines in estimating probabilities of adjectives given nouns that they attributively modify, and probabilities of nominal direct objects given their head verbs, given limited training data in Arabic, English, Korean, and Spanish.
使用对数双线性模型估计预训练静态嵌入的词共现概率
我们研究了如何使用预训练的静态词嵌入来提供双字共现概率的改进估计:一个词在特定关系中给定单个另一个词的条件概率。这种概率在心理语言学、语料库语言学和基于使用的语言认知模型中发挥着重要作用。我们提出了一个对数双线性模型,将两个词的预训练向量表示作为输入,基于两个向量中包含的分布信息实现泛化。我们表明,在给定阿拉伯语、英语、韩语和西班牙语有限的训练数据的情况下,该模型在估计给定属性修饰名词的形容词概率和给定头部动词的名义直接对象概率方面优于基线。
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