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CROSSLINGUAL ADAPTATION OF SEMI-CONTINUOUS HMMS USING MAXIMUM LIKELIHOOD AND MAXIMUM A POSTERIORI CONVEX REGRESSION

机译:使用最大似然和最大后凸凸回归进行半连续HMMS的跨语言适应

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In this work we present a novel adaptation design for semicontinuous HMMs (SCHMM). The method, which is developed in the scope of a crosslingual model adaptation task, consists in adjusting the states’ mixture weights associated to the prototype densities of the codebook. The mixture weights of the target language are modelled as convex combinations of prototype weights. They are defined by an acoustic regression scheme applied to the source models, followed by a refinement using probabilistic latent semantic analysis (PLSA). In order to find suitable combination weights for the convex combinations we present a maximum likelihood (ML) as well as a maximum a posteriori (MAP) estimate. Thus, we name them maximum likelihood convex regression (MLCR) and maximum a posteriori convex regression (MAPCR). Finally, a crosslingual model adaptation task transferring multilingual Spanish-English-German HMMs to Slovenian demonstrates the performance of the method.
机译:在这项工作中,我们提出了一种针对半连续HMM(SCHMM)的新颖的适应设计。该方法是在跨语言模型适应任务的范围内开发的,该方法包括调整与代码本的原型密度相关的状态混合权重。目标语言的混合权重被建模为原型权重的凸组合。通过应用到源模型的声学回归方案定义它们,然后使用概率潜在语义分析(PLSA)进行细化。为了找到适合于凸组合的组合权重,我们给出了最大似然(ML)和最大后验(MAP)估计。因此,我们将它们命名为最大似然凸回归(MLCR)和最大后验凸回归(MAPCR)。最后,将多语言西班牙语-英语-德语HMM转移到斯洛文尼亚语的跨语言模型适应任务证明了该方法的性能。

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