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Musical Composer Identification through Probabilistic and Feedforward Neural Networks

机译:通过概率和前馈神经网络识别音乐作曲家

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摘要

During the last decade many efforts for music information retrieval have been made utilizing Computational Intelligence methods. Here, we examine the information capacity of the Dodecaphonic Trace Vector for composer classification and identification. To this end, we utilize Probabilistic Neural Networks for the construction of a "similarity matrix" of different composers and analyze the Dodecaphonic Trace Vector's ability to identify a composer through trained Feedforward Neural Networks. The training procedure is based on classical gradient-based methods as well as on the Differential Evolution algorithm. An experimental analysis on the pieces of seven classical composers is presented to gain insight about the most important strengths and weaknesses of the aforementioned approach.
机译:在过去的十年中,利用计算智能方法为音乐信息检索做出了许多努力。在这里,我们检查了十二指肠跟踪矢量对作曲家分类和识别的信息能力。为此,我们利用概率神经网络来构建不同作曲家的“相似性矩阵”,并通过训练前馈神经网络来分析Docapcapic Trace Vector识别作曲家的能力。训练过程基于经典的基于梯度的方法以及差分进化算法。对七个古典作曲家的作品进行了实验分析,以了解上述方法最重要的优点和缺点。

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