MemoMusic:一个基于情感和记忆的个性化音乐推荐框架

Luntian Mou, Jueying Li, Juehui Li, Feng Gao, Ramesh C. Jain, Baocai Yin
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引用次数: 5

摘要

音乐是公认的人类表达情感和调节情绪状态的有效方式。但感知到的音乐情感是主观的,很大程度上取决于文化、环境和生活经历。因此,个性化的音乐推荐对于获得用户满意度和引导听者进入更积极的情绪状态是必要的。现有的基于情感的音乐推荐和个性化音乐推荐工作往往缺乏考虑过去生活经历对音乐情感感知的影响。我们认为,与音乐相关的记忆在决定听音乐后的新情绪状态方面可能起着至关重要的作用。为了验证我们的假设,我们提出了一个名为MemoMusic的个性化音乐推荐框架,它根据个人当前的情绪状态和与所听音乐相关的可能记忆来估计听者的新情绪状态。在初步实验中,收集了60首钢琴曲的数据集,并使用Valence-Arousal模型从古典音乐、流行音乐和燕尼音乐三大类中进行标记。实验结果表明,记忆实际上是决定音乐情感感知的重要因素。而基于情感和记忆的MemoMusic在改善听者的情绪状态方面取得了很好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MemoMusic: A Personalized Music Recommendation Framework Based on Emotion and Memory
Music is universally recognized as an effective way for human to express emotion and regulate emotional states. But perceived music emotion is subjective and much dependent on culture, environment, and life experience. Therefore, personalized music recommendation is necessary to gain user satisfaction and navigate a listener to a more positive emotional state as well. Existing work on emotion- based music recommendation and personalized music recommendation often lack of considering the impact of past life experiences on music emotion perceiving. We argue that memories associated with music could play a vital role in determining the new emotional states after music listening. To verify our hypothesis, we propose a personalized music recommendation framework called MemoMusic, which estimates the new emotional state of a listener based on an individual’s current emotional state and possible memory associated with the music being listened to. For the preliminary experiment, a dataset of 60 piano music was collected and labelled using the Valence-Arousal model from three categories of Classical, Popular, and Yanni music. Experimental results demonstrate that memory is actually an important factor in determining perceived music emotion. And MemoMusic based on emotion and memory achieves a good performance in terms of improving a listener’s emotional states.
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