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Pseudo Independent Conditional Approximation for Training the Mixtures of Gaussian Processes

机译:伪独立条件逼近训练高斯过程的混合

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The mixture of Gaussian processes (MGP) is a powerful probabilistic model for regression and classification. However, how to effectively infer the posteriors and learn the parameters in the model is still a very challenging problem due to the exponential complexity of computation. Although several approximation schemes have been utilized to reduce the computational cost, they usually do not provide reasonable interpretations. In this paper, we first propose a specific variational approximation mechanism for the MGP model in which the joint distribution of latent indicators and latent functions can be factorized as the product of two independent variational distributions. The resulted inference procedure can be well interpreted under the framework of information theory. Inspired by this perspective, we then propose a new approximation method called pseudo independent conditional approximation (PIC) for training the MGP model. It is demonstrated by the experimental results that our proposed training method is more effective than the other existing methods.
机译:高斯过程(MGP)的混合是用于回归和分类的强大概率模型。然而,由于计算的指数复杂性,如何有效地推断后验者并学习模型中的参数仍然是一个非常具有挑战性的问题。尽管已经采用了几种近似方案来减少计算成本,但是它们通常不能提供合理的解释。在本文中,我们首先为MGP模型提出了一种特定的变分逼近机制,其中潜在指标和潜在函数的联合分布可以分解为两个独立的变分分布的乘积。在信息论的框架下,可以很好地解释所产生的推理过程。受此观点的启发,我们然后提出了一种新的近似方法,称为伪独立条件近似(PIC),用于训练MGP模型。实验结果表明,我们提出的训练方法比其他现有方法更有效。

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