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Predicting Key Recognition Difficulty in Music Using Statistical Learning Techniques

机译:使用统计学习技术预测音乐中的键识别难度

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In this paper, the authors use statistical models to predict the difficulty of recognizing musical keys from polyphonic audio signals. The key recognition difficulty provides important background information when comparing the performance of audio key finding algorithms that often evaluated using different private data sets. Given an audio recording, represented as extracted acoustic features, the authors applied multiple linear regression and proportional odds model to predict the difficulty level of the recording, annotated by three musicians as an integer on a 5-point Likert scale. The authors evaluated the predictions by using root mean square error, Pearson correlation coefficient, exact accuracy, and adjacent accuracy. The authors also discussed issues such as differences found between the musicians 'annotations and the consistency of those annotations. To identify potential causes to the perceived difficulty for the individual musicians, the authors applied decision tree-based filtering with bagging. By using weighted naieve Bayes, the authors examined the effectiveness of each identified feature via a classification task.
机译:在本文中,作者使用统计模型来预测从和弦音频信号中识别音乐键的难度。当比较经常使用不同的私有数据集进行评估的音频密钥查找算法的性能时,密钥识别难度提供了重要的背景信息。给定一个音频记录,表示为提取的声学特征,作者使用多元线性回归和比例赔率模型来预测录音的难度,并由三位音乐家在5点Likert量表上标注为整数。作者通过使用均方根误差,Pearson相关系数,精确度和邻近度来评估预测。作者还讨论了诸如音乐家注释之间的差异以及这些注释的一致性之类的问题。为了找出导致个别音乐家感觉困难的潜在原因,作者将基于决策树的过滤与装袋一起应用。通过使用加权朴素贝叶斯,作者通过分类任务检查了每个已识别特征的有效性。

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