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Effective social content-based collaborative filtering for music recommendation

机译:有效的基于社交内容的协作式音乐过滤推荐

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摘要

Recently, music recommender systems have been proposed to help users obtain the interested music. Traditional recommender systems making attempts to discover users' musical preferences by ratings always suffer from problems of rating diversity, rating sparsity and lack of ratings. These problems result in unsatisfactory recommendation results. To deal with traditional problems, in this paper, we propose a novel music recommender system, namely Multi-modal Music Recommender system (MMR), which integrates social and collaborative information to predict users' preferences. In this work, the playcounts are transformed into collaborative information to cope with problem of lack of rating information, while item tags and artist tags are employed as social information to cope with problems of rating diversity and rating sparsity. Through optimizing the integrated social-and-collaborative information, the users' preferences can be inferred more accurately and efficiently. The experimental results reveal that, three problems can be alleviated significantly and our proposed method outperforms other state-of-the-art recommender systems in terms of RMSE (Root Mean Square Error) and NDCG (Normalized Discount Cumulative Gain).
机译:最近,已经提出了音乐推荐器系统来帮助用户获得感兴趣的音乐。试图通过等级发现用户的音乐偏好的传统推荐系统总是遭受等级多样性,等级稀疏性和等级缺乏的问题。这些问题导致推荐结果不令人满意。针对传统问题,本文提出了一种新颖的音乐推荐系统,即多模式音乐推荐系统(MMR),该系统整合了社交和协作信息以预测用户的喜好。在这项工作中,播放次数被转换为协作信息以解决缺少评级信息的问题,而项目标签和艺术家标签被用作社交信息来解决评级多样性和稀疏性的问题。通过优化整合的社交和协作信息,可以更准确,更有效地推断用户的偏好。实验结果表明,在RMSE(均方根误差)和NDCG(归一化贴现累积增益)方面,我们的方法可以显着缓解三个问题,并且我们的方法优于其他最新的推荐系统。

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