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Sparse Bayesian hierarchical mixture of experts

机译:稀疏贝叶斯专家分层混合

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Hierarchical mixture of experts (HME) is a widely adopted probabilistic divide-and-conquer regression model. We extend the variational inference algorithm for HME by using automatic relevance determination (ARD) priors. Unlike Gaussian priors, ARD allows for a few model parameters to take on large values, while forcing others to zero. Thus, using ARD priors encourages sparse models. Sparsity is known to be advantageous to the generalization capability as well as inter-pretability of the models. We present the variational inference algorithm for sparse HME in detail. Subsequently, we evaluate the sparse HME approach in building objective speech quality assessment algorithms, that are required to determine the quality of service in telecommunication networks.
机译:专家的分层混合物(HME)是一种广泛采用的概率划分和征收回归模型。通过使用自动相关性确定(ARD)前沿,我们扩展了HME的变分推理算法。与高斯前锋不同,ARD允许一些模型参数占用大值,同时强迫他人零。因此,使用ARD Priors鼓励稀疏模型。已知稀疏性是有利的泛化能力以及模型的帧间性可预测性。我们详细介绍了稀疏HME的变分推理算法。随后,我们评估建立客观语音质量评估算法中的稀疏HME方法,这是确定电信网络中服务质量所必需的。

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