最小编辑距离的自适应智能元搜索引擎

Asma Kanwal, Arif Wicaksono Septyanto, Muhammad Hassan Ghulam Muhammad, Raed A. Said, Muhammad Farrukh, Muhammad Ibrahim
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引用次数: 3

摘要

在当今时代,由于网站上的光谱大量增加,对信息检索的要求很高。搜索引擎是从数据网络中获取信息和显示不相关数据的基本工具,这会浪费时间。考虑到时间是一种宝贵的商品,是我们周围一切事物的标志。为了克服时间浪费,优化时间利用,设计了元搜索引擎。元搜索引擎用于获取相关数据。现有的元搜索引擎基于关键词和语义查询来显示相关数据。基于语义查询的结果在结果中仍然存在一些不相关性。本文分析了基于机器学习算法的语义查询。本文假设通过查询扩展机制改进了结果。作者还删除了来自多个搜索引擎的重复url。最小编辑距离算法用于测量标题,片段之间的相似性,如果测量的相似性大于0.6,则必须删除该标题和片段。排序过程中,生成检索在相关文档顶部的相关文档。与现有元搜索引擎进行对比分析,智能元搜索引擎(IMSE)的总体性能保持在74.17%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptively Intelligent Meta-search Engine with Minimum Edit Distance
In current era retrieval of information has attained high demand due to spectra from websites has abundantly increased. Search Engines are basic tools to get information from the web of data and show irrelevant data causing wastage of time. Considering the fact that time is a precious commodity and is the hallmark of everything around us. To overcome the wastage of time and for its optimum utilization meta-search engines are design. Meta-Search Engine use to fetch relevant data. Existing meta-search engine shows their relevant data based on keywords as well as a semantic query. Semantic query-based results still have some irrelevancy in the results. In this paper, we analyze the semantic query based on machine learning algorithms. This paper hypothesizes improved results through the query expansion mechanism. Author also remove duplicated URLs that come from multiple search engines. Minimum Edit Distance algorithm is used to measure the similarity between titles, snippets and if measuring similarity is more than 0.6 then it must remove that title and snippet. Ranking process, generated retrieval of the relevant document at the top relevant document. Comparative analysis of proposed work is done with existing meta-search engines, overall performance of Intelligent Meta-Search Engine (IMSE) remains 74.17%.
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