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Deployment of Neutrosophic Technology to Retrieve Answer for Queries Posed in Natural Language

机译:部署中智技术来检索自然语言中的查询答案

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In this paper, we have we have introduced a new intelligent soft-computing method of neutrosophic search with ranks and a new neutrosophic rank sets for neutrosophic relational data model (NRDM). Essentially the data and documents on the Web are heterogeneous; inconsistency is unavoidable in Web mining. Using the presentation and reasoning method of our data model, it is easier to capture imperfect information on the Web which will provide more potentially valued-added information. In Bioinformatics there is a proliferation of data sources. Each research group and each new experimental technique seems to generate yet another source of valuable data. But these data can be incomplete and imprecise, and even inconsistent. We could not simply throw away one data in favor of other data. So now we can represent and extract useful information from these data as a challenge. Thus it is a kind of an intelligent search for match in order to answer imprecise queries of the lay users. Our method, being an intelligent soft-computing method, will support the users to make and find the answers to their queries without iteratively refining them by trial and error. This important issue of closeness cannot be addressed with the crisp mathematics. That is why we have used the Neutrosophic tools. Neutrosophicsearch method could be easily incorporated in the existing commercial query languages of DBMS to serve the lay users better. So in this Paper Authors are suggesting NRDM and Rank Sets to solve the imprecise query based on Rank Neutrosophic search which is a combination -Neutrosophic Proximity search and αNeuirosopnic-equality Search
机译:在本文中,我们为中智关系数据模型(NRDM)引入了一种新的具有等级的中智搜索智能软计算方法和新的中智排名集。本质上,Web上的数据和文档是异构的。 Web挖掘中不可避免的出现不一致的情况。使用我们的数据模型的表示和推理方法,可以更轻松地在Web上捕获不完善的信息,从而提供更多潜在的增值信息。在生物信息学中,数据源激增。每个研究小组和每种新的实验技术似乎都产生了另一批有价值的数据。但是这些数据可能是不完整和不精确的,甚至是不一致的。我们不能简单地抛弃一个数据而取而代之的是其他数据。因此,现在我们可以表示并从这些数据中提取有用的信息,这是一个挑战。因此,它是一种智能的匹配搜索,以回答外行用户的不精确查询。我们的方法是一种智能的软计算方法,它将支持用户做出并找到他们的查询的答案,而无需通过反复试验来反复完善它们。紧密的数学这个重要的问题是无法解决的。这就是为什么我们使用中智工具。 Neutrosophicsearch方法可以轻松地集成到DBMS的现有商业查询语言中,以更好地为外行用户提供服务。因此,在本文中,作者建议使用NRDM和等级集来解决基于等级中智搜索的不精确查询,其中等级中智搜索是-中智邻近搜索和αNerososopnic-等式搜索的组合

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