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首页> 外文期刊>Applied Intelligence: The International Journal of Artificial Intelligence, Neural Networks, and Complex Problem-Solving Technologies >Type-2 fuzzy ontology-based opinion mining and information extraction: A proposal to automate the hotel reservation system
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Type-2 fuzzy ontology-based opinion mining and information extraction: A proposal to automate the hotel reservation system

机译:基于2型模糊本体的观点挖掘和信息提取:酒店预订系统自动化的建议

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摘要

The volume of traveling websites is rapidly increasing. This makes relevant information extraction more challenging. Several fuzzy ontology-based systems have been proposed to decrease the manual work of a full-text query search engine and opinion mining. However, most search engines are keyword-based, and available full-text search engine systems are still imperfect at extracting precise information using different types of user queries. In opinion mining, travelers do not declare their hotel opinions entirely but express individual feature opinions in reviews. Hotel reviews have numerous uncertainties, and most featured opinions are based on complex linguistic wording (small, big, very good and very bad). Available ontology-based systems cannot extract blurred information from reviews to provide better solutions. To solve these problems, this paper proposes a new extraction and opinion mining system based on a type-2 fuzzy ontology called T2FOBOMIE. The system reformulates the user's full-text query to extract the user requirement and convert it into the format of a proper classical full-text search engine query. The proposed system retrieves targeted hotel reviews and extracts feature opinions from reviews using a fuzzy domain ontology. The fuzzy domain ontology, user information and hotel information are integrated to form a type-2 fuzzy merged ontology for the retrieving of feature polarity and individual hotel polarity. The Prot,g, OWL-2 (Ontology Web Language) tool is used to develop the type-2 fuzzy ontology. A series of experiments were designed and demonstrated that T2FOBOMIE performance is highly productive for analyzing reviews and accurate opinion mining.
机译:旅游网站的数量正在迅速增加。这使得相关信息的提取更具挑战性。已经提出了几种基于模糊本体的系统,以减少全文查询搜索引擎和意见挖掘的人工工作。但是,大多数搜索引擎都是基于关键字的,并且可用的全文本搜索引擎系统在使用不同类型的用户查询来提取精确信息方面仍然不完善。在观点挖掘中,旅行者不会完全宣告他们的酒店意见,而是在评论中表达个人特征的意见。酒店点评有很多不确定性,而最具特色的意见是基于复杂的语言措辞(大小,大小,非常好和非常差)。可用的基于本体的系统无法从评论中提取模糊的信息以提供更好的解决方案。为了解决这些问题,本文提出了一种新的基于2型模糊本体T2FOBOMIE的提取和观点挖掘系统。系统重新格式化用户的全文查询,以提取用户需求,并将其转换为适当的经典全文搜索引擎查询的格式。所提出的系统使用模糊域本体检索目标酒店评论并从评论中提取特征意见。模糊域本体,用户信息和酒店信息被集成以形成类型2模糊合并本体,用于检索特征极性和单个酒店极性。 Prot,g,OWL-2(本体网络语言)工具用于开发2型模糊本体。设计并进行了一系列实验,证明T2FOBOMIE的性能对于分析评论和准确的意见挖掘具有很高的生产力。

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