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Comprehensive Analysis of Word Sensing Tool and Techniques for Enhancing Classification Accuracy of Query String

机译:全面提高词串分类精度的词感测工具和技术分析

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Word sense in the field of natural language processing (NLP) is a corner stone for appropriate word selection. Aword can contain more than one sense, but machine can’t extract the actual sense of the given particular content. Implication of this situation is mismatch between the user requirements and result generates through the machine. e.g., User wants to search a query “What is word sensing?” The machine can’t find the relation between these two words “word”, “sensing”. Relationship between words cannot be extracted by the machine and more results corresponding to sensing is displayed and user requirements corresponding to “Word Sensing” as a whole are rejected. primary reason for this mismatch is due to static dictionary possessed by web servers. Techniques we are analysis different types of techniques and algorithms for the word sense. The major techniques are which used to word sense are knowledge based approaches are based on different knowledge sources as machine readable dictionaries to extract the sense like thesauri, Word net are machine readable dictionaries to find the word sense, Supervised learning technique is a manually extract the sense from the data. In this process trained the target words through the labelling, unsupervised learning technique in this process words are no needs to be trained target data are based on the clustering, Semi-Supervised learning technique is a hybrid approach of the supervised and unsupervised. In this process target words are based on the particular content. Tools for building word database to be accessed by the web applications including Word Net, Image Net and Babel Net are discussed in this literature. Our Contribution we conduct comprehensive review of knowledge based, supervised, unsupervised and semi- supervised learning techniques used in the field of word sensing and detect the best word sensing mechanism for fetching only relevant material from the web while decreasing the execution time for content retrieval.
机译:自然语言处理(NLP)领域中的词义是选择适当词的基石。单词可以包含多种含义,但是机器无法提取给定特定内容的实际含义。这种情况的暗示是用户要求与通过机器生成的结果之间不匹配。例如,用户要搜索“什么是单词感应?”查询机器找不到这两个单词“ word”,“ sensing”之间的关系。机器无法提取单词之间的关系,并且显示了更多与感测相对应的结果,并且整体上拒绝了与“单词感测”相对应的用户要求。这种不匹配的主要原因是由于Web服务器拥有静态字典。技术我们正在分析用于词义的不同类型的技术和算法。用于词义的主要技术是基于知识的方法,它们基于不同的知识来源,如机器可读词典来提取词库,而词网是机器可读词典来找到词义,监督学习技术是手动提取词义。从数据中了解。在这个过程中,通过标签训练目标词,无监督学习技术在这个过程中不需要训练目标数据是基于聚类的,半监督学习技术是有监督和无监督的混合方法。在此过程中,目标词基于特定内容。在此文献中讨论了用于构建可由Web应用程序(包括Word Net,Image Net和Babel Net)访问的word数据库的工具。我们的贡献是对词感知领域中基于知识的,有监督的,无监督的和半监督的学习技术进行全面的审查,并检测最佳的词检测机制,以便仅从网络中获取相关材料,同时减少内容检索的执行时间。

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