用于测量和预测音乐作品可记性的数据集和基线

Li-Yang Tseng, Tzu-Ling Lin, Hong-Han Shuai, Jen-Wei Huang, Wen-Whei Chang
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引用次数: 0

摘要

如今,人类经常接触音乐,无论是通过自愿的流媒体服务,还是在广告休息时间偶遇。尽管音乐种类繁多,但某些曲目仍然更令人难忘,而且往往更受欢迎。受这一现象的启发,我们专注于测量和预测音乐的可记忆性。为此,我们采用一种新颖的交互式实验程序,收集了一个带有可靠可记性标签的新音乐作品数据集。然后,我们利用可解释特征和音频旋律谱图作为输入,训练基线来预测和分析音乐的可记性。据我们所知,我们是第一个使用基于数据驱动的深度学习方法来探索音乐可记性的人。通过一系列实验和消融研究,我们证明,虽然还有改进的余地,但利用有限的数据预测音乐可记性是可行的。某些内在元素,如更高的情感、唤醒和更快的节奏,有助于音乐的记忆。随着预测技术的不断发展,音乐推荐系统和音乐风格转换等现实生活中的应用无疑将受益于这一新的研究领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Dataset and Baselines for Measuring and Predicting the Music Piece Memorability
Nowadays, humans are constantly exposed to music, whether through voluntary streaming services or incidental encounters during commercial breaks. Despite the abundance of music, certain pieces remain more memorable and often gain greater popularity. Inspired by this phenomenon, we focus on measuring and predicting music memorability. To achieve this, we collect a new music piece dataset with reliable memorability labels using a novel interactive experimental procedure. We then train baselines to predict and analyze music memorability, leveraging both interpretable features and audio mel-spectrograms as inputs. To the best of our knowledge, we are the first to explore music memorability using data-driven deep learning-based methods. Through a series of experiments and ablation studies, we demonstrate that while there is room for improvement, predicting music memorability with limited data is possible. Certain intrinsic elements, such as higher valence, arousal, and faster tempo, contribute to memorable music. As prediction techniques continue to evolve, real-life applications like music recommendation systems and music style transfer will undoubtedly benefit from this new area of research.
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