利用设备和音频数据在用户感知的听环境中标记音乐

Karim M. Ibrahim, Elena V. Epure, G. Peeters, G. Richard
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引用次数: 0

摘要

随着音乐变得越来越容易获得,尤其是在音乐流媒体平台上,人们开始有不同的偏好,以适应他们不同的收听环境,也被称为语境。因此,在向用户推荐音乐时,考虑到用户的情况越来越受到关注。以前的工作已经提出了用户感知的自动标签器,从音乐内容和用户的全局收听偏好中推断出与情境相关的标签。然而,在实际的音乐检索系统中,只有在假定上下文类是由用户显式提供的情况下才能使用自动标记器。在这项工作中,为了设计一个完全自动化的音乐检索系统,我们建议从用户的流数据中消除用户的收听信息的歧义。也就是说,我们提出了一个系统,该系统可以在特定时间为用户生成情境播放列表1)通过利用用户感知的音乐自动标记器,2)通过从流数据(例如设备,网络)和用户的一般个人资料信息(例如年龄)自动推断用户的情况。实验表明,这种上下文感知的个性化音乐检索系统是可行的,但在新用户、新曲目或上下文类数量增加的情况下,性能会下降。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploiting Device and Audio Data to Tag Music with User-Aware Listening Contexts
As music has become more available especially on music streaming platforms, people have started to have distinct preferences to fit to their varying listening situations, also known as context. Hence, there has been a growing interest in considering the user's situation when recommending music to users. Previous works have proposed user-aware autotaggers to infer situation-related tags from music content and user's global listening preferences. However, in a practical music retrieval system, the autotagger could be only used by assuming that the context class is explicitly provided by the user. In this work, for designing a fully automatised music retrieval system, we propose to disambiguate the user's listening information from their stream data. Namely, we propose a system which can generate a situational playlist for a user at a certain time 1) by leveraging user-aware music autotaggers, and 2) by automatically inferring the user's situation from stream data (e.g. device, network) and user's general profile information (e.g. age). Experiments show that such a context-aware personalized music retrieval system is feasible, but the performance decreases in the case of new users, new tracks or when the number of context classes increases.
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