基于用户偏好分析的酒店推荐

Kai Zhang, Keqiang Wang, Xiaoling Wang, Cheqing Jin, Aoying Zhou
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引用次数: 41

摘要

推荐系统通过分析用户的偏好,提供个性化的建议。但是,当遇到稀疏数据时,特别是遇到冷启动用户时,性能会急剧下降。酒店是一类由于评价频率极低而饱受稀疏性问题困扰的商品。为了解决这些问题,本文提出了一种新颖的酒店推荐框架。主要贡献包括:1)将协作过滤(CF)与基于内容的过滤(CBF)方法相结合,克服了稀疏性问题,同时保证了较高的准确率。2)引入旅游意向,为用户偏好分析提供附加信息。3)为了提供尽可能广泛的建议,采用了多样性技术。4)在真实的Ctrip1数据集上进行了多次实验,结果表明所提出的混合框架与经典方法相比具有一定的竞争力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hotel recommendation based on user preference analysis
Recommender system offers personalized suggestions by analyzing user preference. However, the performance falls sharply when it encounters sparse data, especially meets a cold start user. Hotel is such kind of goods that suffers a lot from sparsity issue due to extremely low rating frequency. In order to handle these issues, this paper proposes a novel hotel recommendation framework. The main contribution includes: 1) We combine collaboration filtering (CF) with content-based (CBF) method to overcome sparsity issue, while ensuring high accuracy. 2) Travel intents are introduced to provide additional information for user preference analysis. 3) To provide as broad as possible recommendations, diversity techniques are employed. 4) Several experiments are conducted on the real Ctrip1 dataset, the results show that the proposed hybrid framework is competitive against classical approaches.
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