基于印地语WordNet的分层聚类语义消歧技术

Nirali Patel, Bhargesh Patel, Rajvi Parikh, Brijesh Bhatt
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引用次数: 4

摘要

词义消歧在计算语言学的各个应用中都是至关重要的。WSD是自然语言处理(NLP)中的一个具有挑战性的问题。虽然有很多针对WSD的算法,但是对于选择最优的WSD算法的研究还很少。水务署有三种方法,即以知识为基础的方法、监督方法和无监督方法。此外,还可以使用给定方法的组合。监督方法需要手工创建大量的语义标注语料库,这在计算上花费了更多的时间和精力。基于知识的方法需要机器可读的词典、词义清单、辞典等,这些都依赖于自己对单词词义的解释;而无监督方法使用无意义标注的语料库,它是基于共同出现的词具有相似性的工作现象。本研究以印地语为研究对象,采用余弦、Jaccard和dice三种不同相似度度量的分层聚类算法,聚类结果与IIT Bombay的产品印地语WordNet重叠,通过聚类对相似词进行分组,提高了词义消歧的结果。
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Hierarchical clustering technique for word sense disambiguation using Hindi WordNet
Word Sense Disambiguation (WSD) is crucial and its significance is prominent in every application of computational linguistics. WSD is a challenging problem of Natural Language Processing (NLP). Though there are lots of algorithms for WSD available, still little work is carried out for choosing optimal algorithm for that. Three approaches are available for WSD, namely, Knowledge-based approach, Supervised approach and Unsupervised approach. Also, one can use the combination of given approaches. Supervised approach needs large amounts of manually created sense-annotated corpus which takes computationally more amount of time and effort. Knowledge-based approach requires machine readable dictionaries, sense inventories, thesauri, etc, which are dependent on own interpretation about word's sense; Whereas unsupervised approach uses sense-unannotated corpus and it is based on the phenomenon of working that words that co-occur have similarity. This research is for Hindi language which uses Hierarchical clustering algorithm with different similarity measures which are cosine, Jaccard and dice, the result of clusters is overlapped with Hindi WordNet a product of IIT Bombay which improves result of word sense disambiguation as clustering does grouping of words which are similar.
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