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SNDocRank: a Social Network-Based Video Search Ranking Framework

机译:SNDocRank:基于社交网络的视频搜索排名框架

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Multimedia ranking algorithms are usually user-neutral and measure the importance and relevance of documents by only using the visual contents and meta-data. However, users' interests and preferences are often diverse, and may demand different results even with the same queries. How can we integrate user interests in ranking algorithms to improve search results? Here, we introduce Social Network Document Rank (SNDocRank), a new ranking framework that considers a searcher's social network, and apply it to video search. SNDocRank integrates traditional tf-idf ranking with our Multi-level Actor Similarity (MAS) algorithm, which measures the similarity between social networks of a searcher and document owners. Results from our evaluation study with a social network and video data from YouTube show that SNDocRank offers search results more relevant to user's interests than other traditional ranking methods.
机译:多媒体排名算法通常是用户中立的,仅通过使用视觉内容和元数据来衡量文档的重要性和相关性。但是,用户的兴趣和偏好通常是多种多样的,即使使用相同的查询,也可能要求不同的结果。我们如何将用户兴趣整合到排名算法中以改善搜索结果?在这里,我们介绍了社交网络文档排名(SNDocRank),这是一种考虑搜索者社交网络的新排名框架,并将其应用于视频搜索。 SNDocRank将传统的tf-idf排名与我们的多级演员相似度(MAS)算法集成在一起,该算法可衡量搜索者的社交网络与文档所有者之间的相似度。我们通过社交网络进行的评估研究结果以及YouTube的视频数据表明,与其他传统排名方法相比,SNDocRank提供的搜索结果与用户的兴趣更相关。

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