使用社会标签和用户评价模式进行协同过滤

Iljoo Kim, Vipul Gupta
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引用次数: 3

摘要

网络上大量的在线信息使得找到更好的方法从嘈杂的数据中分离出重要的信息变得更加重要。推荐系统可以帮助用户处理信息过载问题,但在目前可用的方法中,它们的性能似乎停滞不前。在这项研究中,作者提出并研究了一种新的用户分析方法,该方法使用协作标记信息来增强推荐性能。他们以电影推荐为例,对提出的混合方法进行了评估。作者还通过经验评估了各种现有的推荐方法,并与新提出的方法进行了比较,使用敏感性分析来研究不同用户评级或标记模式的潜在用途,以提高推荐的准确性。结果不仅表明了所建议的方法的有效性和竞争性,而且还为进一步的研究提供了重要的启示和方向,包括基于用户的不同评级或标记模式在单个系统中应用多种推荐方法的可能性。
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Using Social Tags and User Rating Patterns for Collaborative Filtering
The overwhelming supply of online information on the Web makes finding better ways to separate important information from the noisy data ever more important. Recommender systems may help users deal with the information overloading issue, yet their performance appears to have stalled in currently available approaches. In this study, the authors propose and examine a novel user profiling approach that uses collaborative tagging information to enhance recommendation performance. They evaluate the proposed hybrid approach, illustrated in the context of movie recommendation. The authors also empirically evaluate various existing recommendation approaches in comparison with the newly proposed approach using sensitivity analyses to investigate the potential use of varied user rating or tagging patterns to improve recommendations accuracy. The results don't just indicate the effective and competitive performance of the suggested approach, but they also suggest important implications and directions for further research, including the potential associated with applying multiple recommendation approaches within a single system based on the different rating or tagging patterns of the user.
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