A Double Metan-Semantic Search Model Based on Ontology and Semantic Similarity: Asthma Disease

Mourad Belabed, Abdeslem Dennai
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Abstract

With the exponential and rapid growth of online resources in recent years, there has been a huge increase in the use of search engines; these are also one of the most common ways to navigate the Web content without taking into account, in general, the request meaning by which was successfully added the user’s webpage provides us with a lot of results. This problem has led to the integration of semantics in the search for information on the Web (Semantic Web). The use of semantic tools, such as ontology, WordNet dictionary, semantic similarity measure, etc., has contributed to the semantic search development and more particularly, semantic Metan-search. The success of semantic search is closely linked to the availability of domain ontologies. The objective of this paper is to propose a double model of repetitive semantic search, called Double Metan-Semantic Search Model (2[Formula: see text]-SSM). On the one hand, it is assisted and based on the concepts extracted from the user’s search domain ontology, which will permit the user to choose a concept from this list of concepts and launch their search; on the other hand, it is free, in that the user enters their own concept and launches their search. This is based on WordNet tool, user’s same search domain ontology and the semantic similarity calculation techniques between concepts in the same ontology. The result of this model is a set of URL links. The term Metan indicates that the search is done in depth ([Formula: see text]-SS) via choosing each time a URL result by the user. Its experimentation in the asthma disease field gave very promising results in quantity and quality of information via the URL link results (semantic support).
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基于本体和语义相似度的双元语义搜索模型:哮喘疾病
随着近年来在线资源的指数级快速增长,搜索引擎的使用也大幅增加;这些也是浏览Web内容最常见的方式之一,通常情况下,通过成功添加请求的含义,用户的网页为我们提供了很多结果。这个问题导致了在网络上搜索信息的语义集成(语义网)。语义工具的使用,如本体、WordNet词典、语义相似度度量等,促进了语义搜索,特别是语义元搜索的发展。语义搜索的成功与否与领域本体的可用性密切相关。本文的目的是提出一种重复语义搜索的双重模型,称为双重元语义搜索模型(2[公式:见文本]-SSM)。一方面,它基于从用户搜索领域本体中提取的概念,允许用户从这个概念列表中选择一个概念并启动他们的搜索;另一方面,它是免费的,因为用户输入他们自己的概念并启动他们的搜索。这是基于WordNet工具、用户相同搜索领域本体和同一本体中概念之间的语义相似度计算技术。这个模型的结果是一组URL链接。术语Metan表示通过每次选择用户的URL结果来进行深度搜索([公式:见文本]-SS)。它在哮喘疾病领域的实验通过URL链接结果(语义支持)在数量和质量上都取得了非常有希望的结果。
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