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Consistent Music Recommendation in Heterogeneous Pervasive Environment

机译:在异构普遍环境中的一致音乐推荐

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Seamlessly integrating services in a heterogeneous environment is a hot topic in pervasive computing. Given information explosion, it is wise to provide users services of recommending personalized information, although recommendation quality in a P2P network usually can not be compared with that in a centralized environment. In this paper, we introduce a music collaborative filtering system combining centralized and P2P recommendation algorithms together, which aims to provide consistent music recommendation services in a heterogeneous pervasive environment. Instead of bothering users for explicit ratings, we first track their listening behaviors and then extract implicit ratings using a new extraction mechanism. Meanwhile, we adopt a double-criteria strategy for the centralized algorithm, which integrates song recommendation and artist recommendation together. Moreover, we design a novel scalable gossip-based P2P recommendation algorithm that takes advantage of centralized services as much as possible with contexts switching. In addition, we shed some lights on the serendipity problem that is common in most recommendation systems.
机译:在异构环境中无缝集成服务是普遍存器计算中的热门话题。鉴于信息爆炸,提供推荐个性化信息的用户服务是明智的,尽管P2P网络中的推荐质量通常不能与集中环境中的建议进行比较。在本文中,我们介绍了一种音乐协作过滤系统,将集中式和P2P推荐算法结合在一起,该系统旨在在异构普遍存在环境中提供一致的音乐推荐服务。我们首先使用新的提取机制跟踪其聆听行为,而不是打扰用户进行明确评级,而不是打扰过度评级。同时,我们采用了集中算法的双标准策略,将歌曲推荐和艺术家推荐集成在一起。此外,我们设计了一种新颖的扩展八卦的P2P推荐算法,可以使用上下文切换尽可能多地利用集中服务。此外,我们在大多数推荐系统中均为奇异问题的灯光。

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