基于随机特征选择的声学建模的紧凑核模型

Avner May, Michael Collins, Daniel J. Hsu, Brian Kingsbury
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引用次数: 4

摘要

在声学建模的背景下,提出了一种简单而有效的方法来学习近似非线性核方法的紧凑随机特征模型。该方法能够探索大量的非线性特征,同时通过特征选择保持一个紧凑的模型,比现有方法更有效。对于某些核,这种随机特征选择可以看作是原始输入特征级别的非线性特征选择的一种手段,这激发了其他计算改进的方法。经验评价表明,相对于核近似的自然基线方法,所提出的方法是有效的。
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Compact kernel models for acoustic modeling via random feature selection
A simple but effective method is proposed for learning compact random feature models that approximate non-linear kernel methods, in the context of acoustic modeling. The method is able to explore a large number of non-linear features while maintaining a compact model via feature selection more efficiently than existing approaches. For certain kernels, this random feature selection may be regarded as a means of non-linear feature selection at the level of the raw input features, which motivates additional methods for computational improvements. An empirical evaluation demonstrates the effectiveness of the proposed method relative to the natural baseline method for kernel approximation.
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