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Composing Music with Grammar Argumented Neural Networks and Note-Level Encoding

机译:用语法自变量神经网络和音符级编码进行音乐创作

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Creating aesthetically pleasing pieces of art, including music, has been a long-term goal for artificial intelligence research. Despite recent successes of long-short term memory (LSTM) neural networks in sequential learning, LSTM neural networks have not, by themselves, been able to generate natural-sounding music conforming to music theory. To transcend this inadequacy, we put forward a novel method for music composition that combines the LSTM with Grammars motivated by music theory. The main tenets of music theory are encoded as grammar argumented (GA) filters on the training data, such that the machine can be trained to generate music inheriting the naturalness of human-composed pieces from the original dataset while adhering to the rules of music theory. Unlike previous approaches, pitches and durations are encoded as one semantic entity, which we refer to as note-level encoding. This allows easy implementation of music theory grammars, as well as closer emulation of the thinking pattern of a musician.
机译:创造令人愉悦的艺术品,包括音乐,一直是人工智能研究的长期目标。尽管最近在顺序学习中获得了长期短期记忆(LSTM)神经网络的成功,但是LSTM神经网络本身还无法生成符合音乐理论的听起来自然的音乐。为了克服这种不足,我们提出了一种新的音乐创作方法,该方法将LSTM与受音乐理论启发的文法结合起来。音乐理论的主要原则被编码为训练数据上的语法自变量(GA)过滤器,因此可以训练机器以继承原始数据集中人类合成乐曲的自然性而生成音乐,同时遵守音乐理论的规则。与以前的方法不同,音高和持续时间被编码为一个语义实体,我们将其称为音符级编码。这样可以轻松实现音乐理论语法,并更紧密地模仿音乐家的思维方式。

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