An Approach for Personalized Tag Recommendation Based on Interest Transfer Model

Yue Liu, Nan Yang, Gang Yang
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引用次数: 2

Abstract

Recently, social tagging systems become more and more popular in many Web 2.0 applications. In such systems, Users are allowed to annotate a particular resource with a freely chosen a set of tags. These user-generated tags can represent users' interests more concise and closer to human understanding. Interests will change over time. Thus, how to describe users' interests and interests transfer path become a big challenge for personalized recommendation systems. In this approach, we propose a variable-length time interval division algorithm and user interest model based on time interval. Then, in order to draw users' interests transfer path over a specific time period, we suggest interest transfer model. After that, we apply a classical community partition algorithm in our approach to separate users into communities. Finally, we raise a novel method to measure users' similarities based on interest transfer model and provide personalized tag recommendation according to similar users' interests in their next time intervals. Experimental results demonstrate the higher precision and recall with our approach than classical user-based collaborative filtering methods.
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基于兴趣转移模型的个性化标签推荐方法
最近,社会标签系统在许多Web 2.0应用程序中变得越来越流行。在这样的系统中,允许用户使用一组自由选择的标签对特定资源进行注释。这些用户生成的标签可以更简洁地表示用户的兴趣,更接近人类的理解。兴趣会随着时间而改变。因此,如何描述用户的兴趣和兴趣转移路径成为个性化推荐系统面临的一大挑战。在此方法中,我们提出了一种变长时间间隔分割算法和基于时间间隔的用户兴趣模型。然后,为了绘制用户在特定时间段内的兴趣转移路径,我们提出了兴趣转移模型。然后,我们在我们的方法中应用经典的社区划分算法将用户划分为社区。最后,我们提出了一种基于兴趣转移模型的用户相似度度量方法,并根据相似用户在下一个时间段的兴趣提供个性化的标签推荐。实验结果表明,该方法比传统的基于用户的协同过滤方法具有更高的准确率和召回率。
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