基于内容的推荐语义标签排序

M. Fan, Qiang Zhou, T. Zheng
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引用次数: 8

摘要

针对协同过滤的冷启动问题,提出了一种基于内容的社交标签推荐方法,该方法考虑了标签与资源描述之间的关系。有一种常见的现象是,某些标签没有出现在相应的描述中,但它们之间确实存在语义关联。目前最先进的方法很少考虑到这一现象,因此仍然需要改进。在本文中,我们提出了一种新的基于内容的社会标签排序方案,旨在推荐描述中可能不包含的语义标签。该方案首先利用经验方法获取词间的量化语义关系,然后根据描述和获得的量化语义构建加权标签有向图,最后使用改进的基于图的排序算法来细化每个候选标签的评分进行推荐。在中英文数据集上的实验结果表明,该方法比几种基于内容的方法性能更好。
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Content-Based Semantic Tag Ranking for Recommendation
Content-based social tagging recommendation, which considers the relationship between the tags and the descriptions contained in resources, is proposed to remedy the cold-start problem of collaborative filtering. There is such a common phenomenon that certain tag does not appear in the corresponding description, however, they do semantically relate with each other. State-of-the-art methods seldom consider this phenomenon and thus still need to be improved. In this paper, we propose a novel content-based social tag ranking scheme, aiming to recommend the semantic tags that the descriptions may not contain. The scheme firstly acquires the quantized semantic relationships between words with empirical methods, then constructs the weighted tag-digraph based on the descriptions and acquired quantized semantics, and finally performs a modified graph-based ranking algorithm to refine the score of each candidate tag for recommendation. Experimental results on both English and Chinese datasets show that the proposed scheme performs better than several state-of-the-art content-based methods.
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