基于网络搜索引擎的认知代理:综述

S. Meenakshi, Gauri Agarwal, Saumya Bakshi, S. Bhatter, P. Sivakumar
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引用次数: 5

摘要

搜索引擎(SE)是目前使用最多的信息检索工具。尽管用户大量使用搜索引擎,但他们理解用户上下文和情感的能力有限,这给用户带来了维持搜索势头的高负荷。因此,对包括用户在内的网络搜索过程进行了研究。其目的是减少SE和用户之间的上下文和情感不匹配。个性化用户查询处理、用户当前知识更新、信息检索效率和用户满意度是该领域需要解决的主要挑战。为了满足用户的高层次需求,提高搜索的智能化水平,文献中提出了各种基于认知代理的SE模型。在当前的搜索引擎场景中,认知代理面临的挑战是从环境中获取足够的感知,理解环境,从海量的数据中收集知识和检索信息。讨论了语义搜索引擎领域的最新进展、知识收集技术和信息检索方法,这些方法可以更好地解决基于认知代理的搜索引擎所面临的挑战。总的来说,我们的目标是通过减少查询的重复来增强搜索体验,并使用户更容易检索他们感兴趣的高度相关的文档。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cognitive Agents for Web Based Search Engines: A Review
Search Engine (SE) is the most used information retrieval tool in the present scenario. In spite of the huge involvement of users in search engines, their limited capabilities to understand the user context and emotions places high load on the user to maintain the search momentum. Thus the research is being done on the web search process including the users. The aim is to reduce the contextual and emotional mismatch between the SE's and users. Personalized user query processing, current knowledge updation on users, information retrieval effectiveness and user satisfaction are the major challenges to be addressed in this field. To meet the high level requirements of the users and to improve the intellectualization level of the search, various cognitive agent based SE models are proposed in the literature. The challenges of the cognitive agents in present search engine scenario are obtaining sufficient percepts from the environment, understanding it, gathering the knowledge and retrieving the information from the huge volume of data. Recent advancements in the field of semantic search engines, knowledge gathering techniques and information retrieval methods are discussed which can better the cognitive agent based search engines by addressing the challenges. Overall the goal is to enhance the search experience by fewer repetitions of queries and making it easier for the users to retrieve the highly relevant documents of their interest.
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