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Online recommender system for radio station hosting based on information fusion and adaptive tag-aware profiling

机译:基于信息融合和自适应标签感知的广播电台托管在线推荐系统

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摘要

We present a new recommender system developed for the Russian interactive radio network FMhost. To the best of our knowledge, it is the first model and associated case study for recommending radio stations hosted by real DJs rather than automatically built streamed playlists. To address such problems as cold start, gray sheep, boosting of rankings, preference and repertoire dynamics, and absence of explicit feedback, the underlying model combines a collaborative user-based approach with personalized information from tags of listened tracks in order to match user and radio station profiles. This is made possible with adaptive tag-aware profiling that follows an online learning strategy based on user history. We compare the proposed algorithms with singular value decomposition (SVD) in terms of precision, recall, and normalized discounted cumulative gain (NDCG) measures; experiments show that in our case the fusion based approach demonstrates the best results. In addition, we give a theoretical analysis of some useful properties of fusion-based linear combination methods in terms of graded ordered sets. (C) 2016 Elsevier Ltd. All rights reserved.
机译:我们介绍了为俄罗斯交互式无线电网络FMhost开发的新推荐系统。据我们所知,这是第一个推荐真实DJ主持而不是自动构建流式播放列表的广播电台的模型和相关案例研究。为了解决冷启动,灰羊,排名提升,偏好和曲目动态以及缺少明确反馈等问题,该基础模型将基于用户的协作方法与来自已听曲目标签的个性化信息相结合,以匹配用户和电台配置文件。遵循基于用户历史记录的在线学习策略,通过自适应标记感知分析可以实现这一点。我们在精度,召回率和归一化折现累积增益(NDCG)度量方面将提出的算法与奇异值分解(SVD)进行了比较;实验表明,在我们的案例中,基于融合的方法证明了最佳结果。此外,我们从梯度有序集的角度对基于融合的线性组合方法的一些有用特性进行了理论分析。 (C)2016 Elsevier Ltd.保留所有权利。

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