基于异构网络的音乐类型分类实例选择

A. Silva, Paulo Viviurka Do Carmo, R. Marcacini, D. F. Silva
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引用次数: 2

摘要

在涉及音乐数据的场景中,通常有高维数据和不同的模式,如音频和文本,在机器学习任务中花费更多。实例选择是一种很有前途的预处理方法,可以减少这些挑战。为了探索音乐信息的多模态,我们将音乐数据实例选择引入异构网络模型。我们提出并评估了十种不同的异构网络,以识别与各种音乐特征相关的更具代表性的关系,包括歌曲、艺术家、流派和旋律谱。所获得的结果使我们能够根据可用数据的数量和特征所具有的信息类型来定义哪种网络结构更合适。最后,我们分析了音乐特征的相关性,这种关系并不有助于实例选择。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Instance Selection for Music Genre Classification using Heterogeneous Networks
In scenarios involving musical data, there are usually high-dimensional data and different modalities, such as audio and text, that cost more in machine learning tasks. Instance selection is a promising approach as pre-processing step to reduce these challenges. With the intent to explore the multimodality in music information, we introduce musical data instance selection into heterogeneous network models. We propose and evaluate ten different heterogeneous networks to identify more representative relationships with various musical features related, including songs, artists, genres, and melspectrogram. The results obtained allow us to define which network structure is more appropriate considering the volume of available data and the type of information that the features have. Finally, we analyze the relevance of the musical features, and the relationship does not contribute for instance selection.
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