首页> 外文会议>ACM SIGKDD International Conference on Knowledge Discovery and Data Mining(KDD'06); 20060820-23; Philadelphia,PA(US) >Understandable Models Of Music Collections Based On Exhaustive Feature Generation With Temporal Statistics
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Understandable Models Of Music Collections Based On Exhaustive Feature Generation With Temporal Statistics

机译:基于时间统计的穷举特征生成的音乐收藏的可理解模型

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Data mining in large collections of polyphonic music has recently received increasing interest by companies along with the advent of commercial online distribution of music. Important applications include the categorization of songs into genres and the recommendation of songs according to musical similarity and the customer's musical preferences. Modeling genre or timbre of polyphonic music is at the core of these tasks and has been recognized as a difficult problem Many audio features have been proposed, but they do not provide easily understandable descriptions of music They do not explain why a genre was chosen or in which way one song is similar to another. We present an approach that combines large scale feature generation with meta learning techniques to obtain meaningful features for musical similarity We perform exhaustive feature generation based on temporal statistics and train regression models to summarize a subset of these features into a single descriptor of a particular notion of music. Using several such models we produce a concise semantic description of each song Genre classification models based on these semantic features are shown to be better understandable and almost as accurate as traditional methods.
机译:随着音乐在线商业发行的出现,公司越来越多地收集和弦音乐中的数据挖掘兴趣。重要的应用包括将歌曲分类为流派,以及根据音乐相似性和客户的音乐喜好推荐歌曲。对和弦音乐进行流派或音色建模是这些任务的核心,并已被认为是一个难题。已经提出了许多音频功能,但是它们并不能提供易于理解的音乐描述,也无法解释为什么选择了流派或在音乐中使用流派。一首歌与另一首相似。我们提出了一种将大规模特征生成与元学习技术相结合的方法,以获得与音乐相似的有意义的特征。我们基于时间统计信息进行详尽的特征生成,并训练回归模型以将这些特征的子集总结为一个特定概念的单个描述符。音乐。使用几个这样的模型,我们对每首歌曲产生了一个简洁的语义描述。基于这些语义特征,流派分类模型显示出比传统方法更好的理解性和准确性。

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