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Natural Language Query to NoSQL Generation Using Query-Response Model

机译:使用查询响应模型对NoSQL生成进行自然语言查询

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This paper proposes an automated query-response model termed Natural Language Query to NoSQL Generation using Query-Response Model (NLNSM) that can manage various types of natural language queries from the user. The NLNSM System uses POS Tagging and combination based technique to handle assertive, interrogative, imperative, compound and complex type query sentences from the user. The algorithm of NLNSM generates NoSQL query for each of the natural language queries (NL) to retrieve data from the MongoDB database resident within the NLNSM. The NLNSM system is also able to extract exact noun or noun phrases from natural language queries posted by the user without any interruption. The usage of MongoDB has added advantage for the system. Unlike traditional databases, MongoDB uses JSON Scripts or Binary JSON (also termed as BSON) which is smaller and faster for computation with easier parsing techniques. Moreover, in MongoDB, one collection holds different documents where the number of fields, content and size of the document can differ from one document to another. It also supports dynamic queries on documents, is highly scalable and enables faster and efficient access of datasets.
机译:本文提出了一种自动查询响应模型,称为使用查询响应模型(NLNSM)的NoSQL生成的自然语言查询,该模型可以管理来自用户的各种类型的自然语言查询。 NLNSM系统使用POS标记和基于组合的技术来处理来自用户的主张,疑问,命令,复合和复杂类型的查询语句。 NLNSM的算法会为每个自然语言查询(NL)生成NoSQL查询,以从驻留在NLNSM中的MongoDB数据库中检索数据。 NLNSM系统还能够从用户发布的自然语言查询中提取准确的名词或名词短语,而不会受到任何干扰。 MongoDB的使用为系统增加了优势。与传统数据库不同,MongoDB使用JSON脚本或Binary JSON(也称为BSON),它们通过使用更容易的解析技术而变得更小,更快。此外,在MongoDB中,一个集合可保存不同的文档,其中一个文档之间的字段数,内容和大小可能会有所不同。它还支持对文档的动态查询,具有高度可伸缩性,并可以更快,更有效地访问数据集。

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