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PBR: A Personalized Book Resource Recommendation System

机译:PBR:个性化的图书资源推荐系统

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摘要

Recommendation system is widely applied for online resource retrieval, especially in digital publishing industry. A good recommendation system can help the users to efficiently find the desirable reading materials from the massive online resources. However, the conventional recommendation systems are always facing the cold-start problem, and it is difficult to provide the personalized service in an efficient way, since the users' preference may change sometimes. To address the problems above, this work introduces a personalized book resource recommendation system, which well utilizes the tag information of book resources to interact with the users. The user feedback will deliver their real-time preference, and the system can provide more precise recommendation candidates to improve the service quality. In this demo, we will introduce the overall framework and some important modules of the recommendation system, with relevant technical details. We will show the system functions by providing the visual results of the actual book resource recommendation.
机译:推荐系统广泛应用于在线资源检索,特别是在数字出版行业。一个好的推荐系统可以帮助用户从大量的在线资源中有效地找到所需的阅读材料。然而,常规推荐系统总是面临冷启动问题,并且由于用户的偏好有时可能改变,因此难以以有效的方式提供个性化服务。为了解决上述问题,本工作引入了个性化的图书资源推荐系统,该系统很好地利用图书资源的标签信息与用户进行交互。用户反馈将传递他们的实时偏好,并且系统可以提供更精确的推荐候选以提高服务质量。在此演示中,我们将介绍推荐系统的总体框架和一些重要模块,以及相关的技术细节。我们将通过提供实际书籍资源推荐的可视结果来显示系统功能。

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