地理空间音乐推荐的混合检索方法

M. Schedl, Dominik Schnitzer
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引用次数: 38

摘要

音乐检索和推荐算法的最新进展强调了遵循多模态方法的必要性,以便超越仅使用音频、网络或协同过滤数据的方法所施加的限制。在本文中,我们提出了混合音乐推荐算法,该算法结合了音乐内容、音乐上下文和用户上下文的信息,特别是集成了相似度的位置感知加权。利用最先进的技术提取音频特征和上下文网络特征,以及从微博(MusicMicro)推断的音乐聆听活动的新颖标准化数据集,我们提出了几个多模态检索功能。本文的主要贡献在于:(i)利用首个标准化的微博音乐收听事件数据集,对最先进的音频特征和网络特征之间的混合系数进行了系统评价;(ii)利用微博用户的位置信息,提出了新的地理空间音乐推荐方法,并对其进行了综合评价。
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Hybrid retrieval approaches to geospatial music recommendation
Recent advances in music retrieval and recommendation algorithms highlight the necessity to follow multimodal approaches in order to transcend limits imposed by methods that solely use audio, web, or collaborative filtering data. In this paper, we propose hybrid music recommendation algorithms that combine information on the music content, the music context, and the user context, in particular, integrating location-aware weighting of similarities. Using state-of-the-art techniques to extract audio features and contextual web features, and a novel standardized data set of music listening activities inferred from microblogs (MusicMicro), we propose several multimodal retrieval functions. The main contributions of this paper are (i) a systematic evaluation of mixture coefficients between state-of-the-art audio features and web features, using the first standardized microblog data set of music listening events for retrieval purposes and (ii) novel geospatial music recommendation approaches using location information of microblog users, and a comprehensive evaluation thereof.
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