清晰度聚类:通过多层次分析改进词义消歧

ShivKishan Dubey
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摘要

在自然语言处理中,词义消歧(WSD)是一项至关重要的工作,旨在确定一个含混词语在上下文中的准确含义。传统的 WSD 方法通常涉及监督学习方法和词库(如 WordNet)。然而,这些方法在处理词义复杂性和捕捉细粒度差异方面存在不足。在本文中,为了提高词义消歧的精确度和粒度,我们提出了多层次聚类方法,该方法可以深入嵌套层次,定位关联上下文词组,并根据词义对其进行分类。有了这种方法,我们就能更有效地处理多义词和同义词,以及检测词义的细微差别。 对 SemCor 语料库的实际调查证明了多级聚类在 WSD 中的性能得分。所提出的方法根据上下文术语在语义上的关联程度成功地分离了聚类和分组,从而提高了消歧效果。由于聚类过程可以在较大的聚类中识别较小的聚类,因此可以更详细地了解词义及其关系。这些结果证明了多层次聚类是如何提高 WSD 的粒度和准确性的。我们的解决方案克服了传统方法的缺点,并通过结合聚类算法提供了更精细的词义表示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Clustering for Clarity: Improving Word Sense Disambiguation through Multilevel Analysis
In natural language processing, a critical activity known as word sense disambiguation (WSD) seeks to ascertain the precise meaning of an ambiguous wordin context. Traditional methods for WSD frequently involve supervised learning methods and lexical databases like WordNet. However, these methods fallshort in managing word meaning complexity and capturing fine-grained differences. In this paper, for increasing the precision and granularity of word sensedisambiguation we proposed multilevel clustering method that goes deeper in the nested levels as locate groups of linked context words and categorize themaccording to their word meanings. With this method, we can more effectively manage polysemy and homonymy as well as detect minute differences in meaning.          An actual investigation of the SemCor corpus demonstrates the performance score of multilevel clustering in WSD. This proposed method successfullyseparated clusters and groups context terms according to how semantically related they are, producing improved disambiguation outcomes. A more detailedknowledge of word senses and their relationships may be obtained thanks to the clustering process, which makes it possible to identify smaller clusters inside larger clusters. The outcomes demonstrate how multilevel clustering may enhance the granularity and accuracy of WSD. Our solution overcomes the drawbacks of conventional approaches and provides a more fine-grained representation of word senses by combining clustering algorithms.
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