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Using Autonomous Agents to Improvise Music Compositions in Real-Time

机译:使用自治代理实时修改音乐作品

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This paper outlines an approach to real-time music generation using melody and harmony focused agents in a process inspired by jazz improvisation. A harmony agent employs a Long Short-Term Memory (LSTM) artificial neural network trained on the chord progressions of 2986 jazz 'standard' compositions using a network structure novel to chord sequence analysis. The melody agent uses a rule-based system of manipulating provided, pre-composed melodies to improvise new themes and variations. The agents take turns in leading the direction of the composition based on a rating system that rewards harmonic consistency and melodic flow. In developing the multi-agent system it was found that implementing embedded spaces in the LSTM encoding process resulted in significant improvements to chord sequence learning.
机译:本文概述了一种在爵士即兴创作启发的过程中,使用以旋律和和声为中心的主体进行实时音乐生成的方法。和声代理使用对2986爵士“标准”乐曲的和弦进行训练的长短期记忆(LSTM)人工神经网络,使用一种对和弦序列分析新颖的网络结构。旋律代理使用基于规则的系统来操纵提供的,预先合成的旋律,以即兴创作新的主题和变体。这些代理根据奖励谐波一致性和旋律流的评级系统,轮流领导作品的发展方向。在开发多智能体系统时,发现在LSTM编码过程中实现嵌入空间可显着改善和弦序列学习。

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