Distributed specificity for automatic terminology extraction

Ehsan Amjadian, D. Inkpen, T. Paribakht, F. Faez
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引用次数: 17

Abstract

The present article explores two novel methods that integrate distributed representations with terminology extraction. Both methods assess the specificity of a word (unigram) to the target corpus by leveraging its distributed representation in the target domain as well as in the general domain. The first approach adopts this distributed specificity as a filter, and the second directly applies it to the corpus. The filter can be mounted on any other Automatic Terminology Extraction (ATE) method, allows merging any number of other ATE methods, and achieves remarkable results with minimal training. The direct approach does not perform as high as the filtering approach, but it reemphasizes that using distributed specificity as the words’ representation, very little data is required to train an ATE classifier. This encourages more minimally supervised ATE algorithms in the future.
分布式专用性的自动术语提取
本文探讨了两种集成分布式表示和术语提取的新方法。这两种方法都通过利用词在目标领域和一般领域中的分布式表示来评估词(单图)对目标语料库的特异性。第一种方法采用这种分布式特异性作为过滤器,第二种方法直接将其应用于语料库。该过滤器可以安装在任何其他自动术语提取(ATE)方法上,允许合并任何数量的其他ATE方法,并以最少的训练获得显着的结果。直接方法的性能不如过滤方法高,但它再次强调使用分布式特异性作为单词的表示,训练ATE分类器只需要很少的数据。这鼓励了未来更多的最小化监督ATE算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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