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Mixture of robust Gaussian processes and its hard-cut EM algorithm with variational bounding approximation

机译:具有变分近似的鲁棒高斯过程的混合及其硬切割的EM算法

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摘要

The Gaussian process is a powerful statistical learning model and has been applied widely in nonlinear regression and classification. However, it fails to model multi-modal data from a non-stationary source since a prior Gaussian process is generally stationary. Based on the idea of the mixture of experts, the mixture of Gaussian processes was established to increase the model flexibility. On the other hand, the Gaussian process is also sensitive to outliers and thus robust Gaussian processes have been suggested to own the heavy-tailed property. In practical applications, the datasets may be multi-modal and contain outliers at the same time. In order to overcome these two difficulties together, we propose a mixture of robust Gaussian processes (MRGP) model and establish a precise hard-cut EM algorithm for learning its parameters. Since the exact solving process is intractable due to the fact that non-Gaussian probability density functions of the noises are adopted into the likelihood of the proposed model on the dataset, we employ a variational bounding method to approximate the marginal likelihood functions so that the hard-cut EM algorithm can be implemented effectively. Moreover, we conduct various experiments on both synthetic and real-world datasets to evaluate and compare our proposed MRGP method with several competitive nonlinear regression methods. The experimental results demonstrate that our MRGP model with the hard-cut EM algorithm is much more effective and robust than the competitive nonlinear regression models.(c) 2021 Elsevier B.V. All rights reserved.
机译:高斯进程是一个强大的统计学习模型,并且已被广泛应用于非线性回归和分类。然而,由于先前的高斯过程通常是静止的,它无法从非静止源模拟多模态数据。基于专家混合的思想,建立了高斯过程的混合物,以提高模型灵活性。另一方面,高斯过程对异常值也敏感,因此已经建议拥有稳健的高斯工艺来拥有重尾财产。在实际应用中,数据集可以是多模态,同时包含异常值。为了克服这两种困难在一起,我们提出了一种鲁棒高斯过程(MRGP)模型的混合,并建立了一种精确的硬切割EM算法,用于学习其参数。由于确切的解决过程是棘手的,因为由于噪声的非高斯概率密度函数被采用在数据集上提出的模型的可能性中,因此我们采用了变分边界方法来近似于难以实现的难题函数-CUT EM算法可以有效地实现。此外,我们对合成和现实世界数据集进行各种实验,以评估和比较我们提出的MRGP方法,具有几种竞争非线性回归方法。实验结果表明,我们的MRGP模型与硬切口的EM算法比竞争非线性回归模型更有效和强大。(c)2021 Elsevier B.v.保留所有权利。

著录项

  • 来源
    《Neurocomputing》 |2021年第10期|224-238|共15页
  • 作者

    Li Tao; Wu Di; Ma Jinwen;

  • 作者单位

    Peking Univ Sch Math Sci Dept Informat Sci Beijing 100871 Peoples R China|Peking Univ LMAM Beijing 100871 Peoples R China;

    Shaanxi Normal Univ Sch Comp Sci Xian 710100 Peoples R China;

    Peking Univ Sch Math Sci Dept Informat Sci Beijing 100871 Peoples R China|Peking Univ LMAM Beijing 100871 Peoples R China;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Gaussian processes; EM algorithm; Variational inference; Robust regression; Multi-modal data;

    机译:高斯过程;EM算法;变分推理;强大的回归;多模态数据;

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