Learning Combinations of Multiple Feature Representations for Music Emotion Prediction

J. Madsen, B. S. Jensen, Jan Larsen
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引用次数: 8

Abstract

Music consists of several structures and patterns evolving through time which greatly influences the human decoding of higher-level cognitive aspects of music like the emotions expressed in music. For tasks, such as genre, tag and emotion recognition, these structures have often been identified and used as individual and non-temporal features and representations. In this work, we address the hypothesis whether using multiple temporal and non-temporal representations of different features is beneficial for modeling music structure with the aim to predict the emotions expressed in music. We test this hypothesis by representing temporal and non-temporal structures using generative models of multiple audio features. The representations are used in a discriminative setting via the Product Probability Kernel and the Gaussian Process model enabling Multiple Kernel Learning, finding optimized combinations of both features and temporal/ non-temporal representations. We show the increased predictive performance using the combination of different features and representations along with the great interpretive prospects of this approach.
基于多特征表示的音乐情感预测学习组合
音乐由几个结构和模式组成,随着时间的推移而演变,这极大地影响了人类对音乐的更高层次认知方面的解码,比如音乐中表达的情感。对于类型、标签和情感识别等任务,这些结构通常被识别并用作个体和非时间特征和表征。在这项工作中,我们提出了这样一个假设,即使用不同特征的多个时间和非时间表征是否有利于为音乐结构建模,以预测音乐中表达的情感。我们通过使用多个音频特征的生成模型来表示时间和非时间结构来验证这一假设。这些表征通过乘积概率核和高斯过程模型在判别设置中使用,支持多核学习,找到特征和时间/非时间表征的优化组合。我们展示了使用不同特征和表示的组合来提高预测性能,以及这种方法的巨大解释前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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