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Survey and Gap Analysis of Word Sense Disambiguation Approaches on Unstructured Texts

机译:非结构化文本词义消歧方法的调查与差距分析

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Word Sense Disambiguation (WSD) is considered as one of the pivotal problems of Semantic classification among polysemous words that can be addressed using Natural Language Processing (NLP) for identifying the sense of the ambiguous word in a particular context. The application areas of WSD pertain to machine translation, information extraction and retrieval (IE-IR), dialogue systems, and automatic summarization kind of NLP solutions. This paper presents a survey on WSD approaches in major AI-NLP methods by comparing different approaches for WSD in supervised, unsupervised, and knowledge based algorithms. This paper also aims at providing gap analysis in surveyed WSD systems comparing strengths and weaknesses of various surveyed systems and their accuracy. Based on the findings, a future hybrid approach synergizing rule-based and machine learning based methods are contemplated. The findings of this survey are envisaged through an ongoing research on WSD based Meta-Search algorithm under C-DAC purview for an Intelligent NLP based system to detect the actual sense of search queries and providing semantic classification of news headlines and snippets containing ambiguous words.
机译:词义消歧(WSD)被认为是多义词中语义分类的关键问题之一,可以使用自然语言处理(NLP)来解决多义词在特定上下文中识别歧义词的意义。 WSD的应用领域涉及机器翻译,信息提取和检索(IE-IR),对话系统以及自动摘要类型的NLP解决方案。本文通过比较在监督,无监督和基于知识的算法中对WSD的不同方法,对主要AI-NLP方法中的WSD方法进行了概述。本文还旨在提供被调查的WSD系统中的差距分析,以比较各种被调查系统的优缺点及其准确性。基于这些发现,可以构想出一种未来的混合方法,它将基于规则的方法与基于机器学习的方法进行协同。通过在C-DAC权限下对基于WSD的Meta-Search算法进行的一项持续研究,可以预测该调查的结果,该算法用于基于NLP的智能系统,以检测实际的搜索查询意义,并提供新闻标题和包含歧义词的摘要的语义分类。

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