Evaluating the Consistency of Word Embeddings from Small Data

Jelke Bloem, Antske Fokkens, Aurélie Herbelot, Computational Lexicology
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引用次数: 9

Abstract

In this work, we address the evaluation of distributional semantic models trained on smaller, domain-specific texts, specifically, philosophical text. Specifically, we inspect the behaviour of models using a pre-trained background space in learning. We propose a measure of consistency which can be used as an evaluation metric when no in-domain gold-standard data is available. This measure simply computes the ability of a model to learn similar embeddings from different parts of some homogeneous data. We show that in spite of being a simple evaluation, consistency actually depends on various combinations of factors, including the nature of the data itself, the model used to train the semantic space, and the frequency of the learnt terms, both in the background space and in the in-domain data of interest.
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基于小数据的词嵌入一致性评估
在这项工作中,我们解决了在较小的、特定领域的文本(特别是哲学文本)上训练的分布式语义模型的评估。具体来说,我们在学习中使用预训练的背景空间来检查模型的行为。我们提出了一种一致性度量,当没有域内金标准数据可用时,它可以用作评估度量。这种方法简单地计算模型从同质数据的不同部分学习相似嵌入的能力。我们表明,尽管是一个简单的评估,但一致性实际上取决于各种因素的组合,包括数据本身的性质,用于训练语义空间的模型,以及在背景空间和感兴趣的域内数据中学习的术语的频率。
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