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Sparse Gaussian processes with manifold-preserving graph reduction

机译:具有流形保持图缩减的稀疏高斯过程

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Gaussian processes are a popular and effective Bayesian method for classification and regression. Due to the cube time complexity with respect to the size of the training set, time consumption will be too high for Gaussian processes to deal with big data sets. Based on the manifold assumption, manifold-preserving graph reduction (MPGR) is a simple and efficient graph sparsification method originally proposed for sparse semi-supervised learning. High representative points are selected, while outliers and noisy points are excluded by MPGR with low time consumption. In this paper, we apply MPGR to sparse supervised learning, and utilize MPGR to get a sparse representation of Gaussian processes. A fatal shortcoming of MPGR is that it does not effectively consider the influence of outputs to Gaussian processes. We proceed to exploit outputs for sparse Gaussian processes by embedding a method that considers outputs in the MPGR framework, and propose manifold-preserving graph reduction with outputs (MPGRO) for sparse Gaussian processes. In this paper, we utilize informative vector machine (IVM) for MPGRO. Experimental results on seven real data sets show that MPGR is better than IVM for sparse Gaussian processes, and MPGRO is better than MPGR and IVM for sparse Gaussian processes and is comparable on error rates to the method utilizing full training sets.
机译:高斯过程是用于分类和回归的流行且有效的贝叶斯方法。由于多维数据集时间相对于训练集的大小而言很复杂,因此时间消耗对于高斯进程无法处理大数据集。基于流形假设,流形保留图约简(MPGR)是一种最初针对稀疏半监督学习而提出的简单有效的图稀疏化方法。选择高代表点,而MPGR排除异常点和嘈杂点,且耗时少。在本文中,我们将MPGR应用于稀疏的监督学习,并利用MPGR来获得高斯过程的稀疏表示。 MPGR的致命缺点是它没有有效地考虑输出对高斯过程的影响。我们通过在MPGR框架中嵌入考虑输出的方法来继续开发稀疏高斯过程的输出,并提出针对稀疏高斯过程的带有输出的流形保持图约简(MPGRO)。在本文中,我们将信息向量机(IVM)用于MPGRO。在七个真实数据集上的实验结果表明,对于稀疏的高斯过程,MPGR优于IVM,对于稀疏的高斯过程,MPGRO优于MPGR和IVM,并且在错误率上与采用完整训练集的方法相当。

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