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On Competitiveness of Nearest-Neighbor-Based Music Classification: A Methodological Critique

机译:基于最近邻的音乐分类的竞争力:一种方法论批评

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摘要

The traditional role of nearest-neighbor classification in music classification research is that of a straw man opponent for the learning approach of the hour. Recent work in high-dimensional indexing has shown that approximate nearest-neighbor algorithms are extremely scalable, yielding results of reasonable quality from billions of high-dimensional features. With such efficient large-scale classifiers, the traditional music classification methodology of aggregating and compressing the audio features is incorrect; instead the approximate nearest-neighbor classifier should be given an extensive data collection to work with. We present a case study, using a well-known MIR classification benchmark with well-known music features, which shows that a simple nearest-neighbor classifier performs very competitively when given ample data. In this position paper, we therefore argue that nearest-neighbor classification has been treated unfairly in the literature and may be much more competitive than previously thought.
机译:最近邻的分类在音乐分类研究中的传统作用是一名秸秆男人对手的学习方法。最近在高维索率的工作表明,近似最近邻的算法是极其可扩展的,从数十亿的高维功能产生合理质量的结果。利用如此有效的大型分类器,聚集和压缩音频特征的传统音乐分类方法是不正确的;相反,应给出近似最近的邻居分类器来使用广泛的数据收集。我们展示了一个案例研究,使用具有众所周知的音乐特征的众所周知的MIR分类基准,这表明在给定的充分数据时,简单的最近邻分类分类器非常竞争地执行。因此,在这个位置文件中,我们认为最近邻的分类已经在文献中不公平地对待,并且可能比以前想象的更具竞争力。

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