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Word Usage Similarity Estimation with Sentence Representations and Automatic Substitutes

机译:带有句子表示和自动替换的单词用法相似度估计

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Usage similarity estimation addresses the semantic proximity of word instances in different contexts. We apply contextualized (ELMo and BERT) word and sentence embeddings to this task, and propose supervised models that leverage these representations for prediction. Our models are further assisted by lexical substitute annotations automatically assigned to word instances by context2vec, a neural model that relies on a bidirectional LSTM. We perform an extensive comparison of existing word and sentence representations on benchmark datasets addressing both graded and binary similarity. The best performing models outperform previous methods in both settings.
机译:使用相似性估计解决了在不同上下文中单词实例的语义接近性。我们将上下文化(ELMo和BERT)词和句子嵌入应用于此任务,并提出利用这些表示形式进行预测的监督模型。我们的模型进一步由context2vec自动分配给单词实例的词法替换注释所辅助,后者是一种依赖于双向LSTM的神经模型。我们对基准数据集上的现有单词和句子表示形式进行了广泛的比较,以解决分级相似性和二进制相似性。在这两种设置中,性能最好的模型都优于以前的方法。

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