基于文本分类的在线评论上下文提取方法

F. Lahlou, A. Mountassir, H. Benbrahim, I. Kassou
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引用次数: 11

摘要

推荐系统是根据用户的个人资料过滤信息,并建议可能符合他们偏好的项目的系统。虽然现有的大多数研究只考虑用户和项目来计算推荐,但上下文感知推荐系统(CARS)除了考虑用户和项目之外,还考虑与上下文相关的其他特征。CARS研究的第一个问题是确定上下文特征。在本文中,我们研究了使用文本分类技术从用户评论中提取上下文特征。我们通过实验来确定我们数据集的最佳分类算法。我们对酒店评论的方式进行评估。我们专注于从这些评论中提取旅行类型,作为上下文信息。结果表明,多项朴素贝叶斯在我们的数据集上表现最好,Fl得分为60.1%。由于上下文信息并不总是在评论中提供,我们认为我们的结果是有希望的。我们得出结论,这一研究领域需要深入研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Text Classification based method for context extraction from online reviews
Recommender systems are systems that filter information depending on users' profiles and suggest items that might match their preferences. While the majority of existing researches compute recommendation by considering only users and items, Context Aware Recommendation Systems (CARS) consider, in addition to users and items, others features related to the context. A first issue in CARS studies is to identify the contextual features. In this paper, we investigate the use of Text Classification techniques to extract contextual features from users' reviews. We conduct experiments to identify the best classification algorithm for our dataset. We evaluate our approach on hotel reviews. We focus on extracting the trip type, as contextual information, from these reviews. Results show that the Multinomial Naive Bayes performs best in our dataset, with a Fl score of 60.1 %. Since contextual information are not always provided in the reviews, we think that our results are promising. We conclude that this research area needs deeper studies.
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