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Dynamic threshold setting via bayesian information criterion (BIC) in HMM training

机译:蜂窝训练中贝叶斯信息标准(BIC)的动态阈值设置

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In this paper, an approach of dynamic threshold setting via Bayesian Information Criterion (BIC) in HMM training is described. The BIC threshold setting is applied to two important applications. Firstly. it is used to set the thresholds for decision tree based state typing, in place of the conventional approach of using a heuristic constant threshold. Secondly, it is applied to choosing the number of Gaussian mixture at state mixing-up stage. Experimental results on LVCSR Chinese dictation task indicate that BIC can dynamcially set thresholds for cluster splitting accroding to the underlying complexity of the cluster parameters. Also significant performanc eimprovement is achieved with the dynamic BIC threshold setting.
机译:本文描述了通过HMM训练中通过贝叶斯信息标准(BIC)的动态阈值设置的方法。 BIC阈值设置应用于两个重要应用。首先。它用于设置基于决策树的状态键入的阈值,代替使用启发式恒定阈值的传统方法。其次,它应用于在状态混合阶段选择高斯混合物的数量。 LVCSR中文检测任务的实验结果表明BIC可以将群集拆分的阈值设置为群集参数的基础复杂性。通过动态BIC阈值设置实现了显着的性能EIMPROVEMEMENT。

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