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Integrating Multiplicative Features into Supervised Distributional Methods for Lexical Entailment

机译:将乘法特征集成到词汇分布的监督分布方法中

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摘要

Supervised distributional methods are applied successfully in lexical entailment. but recent work questioned whether these methods actually learn a relation between two words. Specifically, Levy et al. (2015) claimed that linear classifiers learn only separate properties of each word. We suggest a cheap and easy way to boost the performance of these methods by integrating multiplicative features into commonly used representations. We provide an extensive evaluation with different classifiers and evaluation setups, and suggest a suitable evaluation setup for the task, eliminating biases existing in previous ones.
机译:监督分布方法已成功地应用于词汇蕴涵中。但是最近的工作质疑这些方法是否实际上学习了两个单词之间的关系。具体来说,Levy等。 (2015)声称线性分类器只学习每个单词的单独属性。我们建议通过将乘法特征集成到常用表示中的一种廉价,简便的方法来提高这些方法的性能。我们提供了具有不同分类器和评估设置的广泛评估,并针对该任务提出了合适的评估设置,从而消除了先前评估中存在的偏差。

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