Review of Semantic Importance and Role of using Ontologies in Web Information Retrieval Techniques

Ashraf Ali
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Abstract

The Web contains an enormous amount of information, which is managed to accumulate, researched, and regularly used by many users. The nature of the Web is multilingual and growing very fast with its diverse nature of data including unstructured or semi-structured data such as Websites, texts, journals, and files. Obtaining critical relevant data from such vast data with its diverse nature has been a monotonous and challenging task. Simple key phrase data gathering systems rely heavily on statistics, resulting in a word incompatibility problem related to a specific word's inescapable semantic and situation variants. As a result, there is an urgent need to arrange such colossal data systematically to find out the relevant information that can be quickly analyzed and fulfill the users' needs in the relevant context. Over the years ontologies are widely used in the semantic Web to contain unorganized information systematic and structured manner. Still, they have also significantly enhanced the efficiency of various information recovery approaches. Ontological information gathering systems recover files focused on the semantic relation of the search request and the searchable information. This paper examines contemporary ontology-based information extraction techniques for texts, interactive media, and multilingual data types. Moreover, the study tried to compare and classify the most significant developments utilized in the search and retrieval techniques and their major disadvantages and benefits.
本体在Web信息检索技术中的语义重要性和作用综述
Web包含大量的信息,这些信息被许多用户设法积累、研究和定期使用。Web的本质是多语言的,并且随着其数据的多样性(包括非结构化或半结构化数据,如网站、文本、期刊和文件)而快速增长。从如此庞大且具有多样性的数据中获取关键的相关数据是一项单调而富有挑战性的任务。简单的关键短语数据收集系统严重依赖于统计数据,导致与特定单词不可避免的语义和情境变体相关的单词不兼容问题。因此,迫切需要对如此庞大的数据进行系统的整理,找出可以快速分析的相关信息,满足用户在相关语境下的需求。多年来,本体被广泛地应用于语义Web中,以系统和结构化的方式包含无组织的信息。尽管如此,它们也显著提高了各种信息恢复方法的效率。本体论信息收集系统主要关注检索请求与可检索信息之间的语义关系。本文研究了当代基于本体的文本、交互媒体和多语言数据类型的信息提取技术。此外,本研究还试图比较和分类在检索技术中使用的最重要的发展及其主要的缺点和好处。
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