A music generation model based on Bi-LSTM

yong bai
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Abstract

The unidirectional LSTM based music generation model does not take into account the influence of future information when generating music. It solely focuses on learning the dependencies of the current moment on past information, resulting in music with poor stability and subpar quality. To address this issue, we have developed a music generation model based on bidirectional LSTM. During the training phase, this model effectively captures musical information from both past and future time steps, resulting in a probability distribution of musical elements that closely approximates real-world music. This, in turn, leads to enhanced structural stability and improved music quality in the generated compositions. Finally, we conducted validation experiments on our proposed approach, and the results unequivocally demonstrate its effectiveness.
基于 Bi-LSTM 的音乐生成模型
基于单向 LSTM 的音乐生成模型在生成音乐时没有考虑未来信息的影响。它只专注于学习当前时刻对过去信息的依赖性,导致音乐稳定性差、质量不高。针对这一问题,我们开发了一种基于双向 LSTM 的音乐生成模型。在训练阶段,该模型能有效捕捉来自过去和未来时间步骤的音乐信息,从而产生与真实世界音乐非常接近的音乐元素概率分布。这反过来又增强了生成作品的结构稳定性,提高了音乐质量。最后,我们对所提出的方法进行了验证实验,结果明确证明了该方法的有效性。
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