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A Machine-Learning Approach to Autonomous Music Composition

机译:自主音乐创作的机器学习方法

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Several music composition systems exist that generate blues chord progressions, jazz improvisation, or classical pieces. Such systems often work by applying a set of rules explicitly provided to the system to determine what sequence of output values is appropriate. Others use pattern recognition and generation techniques such as Markov models. These systems often suffer from mediocre performance and limited generality. We propose a system that goes from raw musical data to feature vector representation to classification models. We employ sliding window sequential machine learning techniques to generate classifiers that correspond to a training set of musical data. Our approach has the advantage of greater generality than explicitly specified musical grammar rules and the potential to apply a wide variety of powerful existing non-sequential learning algorithms. We present the design and implementation of the composition system. We demonstrate the efficacy of the method, show and analyze successful samples of its output, and discuss ways in which it might be improved.
机译:存在几种产生蓝调和弦进行,爵士即兴演奏或古典乐曲的音乐创作系统。这样的系统通常通过应用明确提供给系统的一组规则来确定哪种输出值顺序是合适的。其他人则使用模式识别和生成技术,例如马尔可夫模型。这些系统通常性能中等且通用性有限。我们提出了一个从原始音乐数据到特征向量表示再到分类模型的系统。我们采用滑动窗口顺序机器学习技术来生成与音乐数据训练集相对应的分类器。与明确指定的音乐语法规则相比,我们的方法具有更大的通用性,并且有可能应用各种强大的现有非顺序学习算法。我们介绍了构图系统的设计和实现。我们演示了该方法的有效性,显示并分析了其输出的成功示例,并讨论了可能对其进行改进的方法。

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