Achieving advancements in automatic recognition of emotions that music can induce require considering multiplicity and simultaneity of emotions. Comparison of different machine learning algorithms performing multilabel and multiclass classification is the core of our work. The study analyzes the implementation of the Geneva Emotional Music Scale 9 in the Emotify music dataset and investigates its adoption from a machine-learning perspective. We approach the scenario of emotions expression/induction through music as a multilabel and multiclass problem, where multiple emotion labels can be adopted for the same music track by each annotator (multilabel), and each emotion can be identified or not in the music (multiclass). The aim is the automatic recognition of induced emotions through music.
翻译:我们的工作核心是比较执行多标签和多级分类的不同机器学习算法。本研究分析了日内瓦情感音乐9级级在音乐数据集中的执行情况,并从机器学习的角度来调查其采用情况。我们通过音乐将情感表达/感应的情景作为一个多标签和多级问题来看待,每个代言人(多级)可以在同一音乐轨道上采用多种情感标签,而每种情感都可以在音乐中识别或不识别(多级),目的是通过音乐自动识别诱发的情感。