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Nonparametric Regression via Variance-Adjusted Gradient Boosting Gaussian Process Regression

机译:通过方差调整后的渐变增强高斯进程回归非参数回归

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摘要

Regression models have broad applications in data analytics. Gaussian process regression is a nonparametric regression model that learns nonlinear maps from input features to real-valued output using a kernel function that constructs the covariance matrix among all pairs of data. Gaussian process regression often performs well in various applications. However, the time complexity of Gaussian process regression is O(n(3)) for a training dataset of size n. The cubic time complexity hinders Gaussian process regression from scaling up to large datasets. Guided by the properties of Gaussian distributions, we developed a variance-adjusted gradient boosting algorithm for approximating a Gaussian process regression (VAGR). VAGR sequentially approximates the full Gaussian process regression model using the residuals computed from variance-adjusted predictions based on randomly sampled training subsets. VAGR has a time complexity of O(nm(3)) for a training dataset of size n and the chosen batch size m. The reduced time complexity allows us to apply VAGR to much larger datasets compared with the full Gaussian process regression. Our experiments suggest that VAGR has a prediction performance comparable to or better than models that include random forest, gradient boosting machines, support vector regressions, and stochastic variational inference for Gaussian process regression.
机译:回归模型在数据分析中具有广泛的应用。高斯进程回归是一个非参数回归模型,它使用在所有数据对中构造协方差矩阵构建协方差矩阵的内核函数,从输入特征到真实值输出的非线性回归模型。高斯进程回归通常在各种应用中表现良好。但是,高斯过程回归的时间复杂性是尺寸n的训练数据集的O(n(3))。立方时间复杂性阻碍了高斯进程回归从扩大到大型数据集。通过高斯分布的特性为指导,我们开发了一种方差调整后的渐变升压算法,用于近似高斯过程回归(VAGR)。 VAGR顺序地近似于基于随机采样的训练子集从方差调整的预测计算的残差来顺序地近似于高斯过程回归模型。 VAGR具有尺寸N和所选批量大小的训练数据集的O(nm(3))的时间复杂性。减少时间复杂性允许我们与完整的高斯进程回归相比,我们将VAGR施加到更大的数据集。我们的实验表明,VAGR具有比包含随机森林,梯度升压机,支持向量回归和高斯过程回归的随机变分推理的模型的预测性能。

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