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Semantic Search using Modular Ontology Learning and Case-Based Reasoning

机译:语义搜索使用模块化本体学习和基于案例的推理

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In this paper, we present a semantic search approach based on Case-based reasoning and modular Ontology learning. A case is defined by a set of similar queries associated with its relevant results. The case base is used for ontology learning and for contextualizing the search process. Modular ontologies are designed to be used for case representation and indexing. Our work aims at improving ontology-based information retrieval by the integration of the traditional information retrieval process, the use of ontology learning (OL) and the Case-Based Reasoning (CBR) process. In fact, the proposed approach uses the CBR with semantic Web language markup -by ontology- for case representation and indexing. Ontology-based similarity is used to retrieve similar cases and to provide end users with alternative documents recommendations. The main contribution of this work is the use of a CBR mechanism and an ontological representation for two purposes: Resource Retrieval from Web and ontology learning and enrichment from cases. This approach builds a knowledge corpus - represented by ontology modules - resulting from the collaboration actions of users. The experiment shows an improvement in terms of results' precision and ontology learning relevance.
机译:在本文中,我们基于基于案例的推理和模块化本体学习的语义搜索方法。案例由与其相关结果相关联的一组类似查询来定义。案例基础用于本体学习和上下文化搜索过程。模块化本体设计用于用于案例表示和索引。我们的工作旨在通过整合传统信息检索过程,使用本体学习(OL)和基于案例的推理(CBR)过程来改善基于本体的信息检索。实际上,所提出的方法使用CBR与语义Web语言标记-By本体 - 以案例表示和索引。基于本体的类似性用于检索类似的情况并提供具有替代文档的最终用户建议。这项工作的主要贡献是使用CBR机制和本文的本体论代表性:资源从网页和本体学习和富集的案件中的富集。这种方法构建了一个知识语料库 - 由本体模块表示 - 由用户的协作动作产生。实验表明了结果的精度和本体学习相关性方面的改进。

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