Intelligent System for Ranking Big Data in Search Engine

M. -, M. E. EL-Hasnony
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引用次数: 0

Abstract

The spread of Internet sources has increased the volume of big data that is difficult to handle in traditional ways. So, most users need modern search systems to facilitate the search and retrieval of information in the presence of big data. However, the main challenge in the first and second conventional generations of search engines are linking different web data based on the syntax of keywords not on the semantic meaning and without a knowledge base. This manuscript proposes a framework based on modern technologies such as ETI processes, ontology graphs, and indexing RDF using wide column NoSQL technique. The main contribution of our work is introducing a mathematical model that is used to calculate the similarity score between a query and stored RDF documents based on semantic relations. Various operations were carried out to measure the proposed model's efficiency using data sources such as DBpedia, YAGO dataset. According to experimental results, the proposed model is achieving high precision compared to other related systems.
搜索引擎大数据排序智能系统
互联网资源的传播增加了传统方式难以处理的大数据量。因此,大多数用户需要现代化的搜索系统,以便在大数据存在的情况下方便地搜索和检索信息。然而,第一代和第二代传统搜索引擎面临的主要挑战是基于关键字的语法而不是语义和没有知识库来链接不同的网络数据。本文提出了一个基于现代技术的框架,如ETI过程、本体图和使用宽列NoSQL技术索引RDF。我们工作的主要贡献是引入了一个数学模型,用于根据语义关系计算查询和存储的RDF文档之间的相似性得分。使用DBpedia、YAGO数据集等数据源进行了各种操作来衡量所提出模型的效率。实验结果表明,与其他相关系统相比,该模型具有较高的精度。
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