Gaussian Processes (GPs) are widely recognized as powerful non-parametric models for regression and classification. Traditional GP frameworks predominantly operate under the assumption that the inputs are either accurately known or subject to zero-mean noise. However, several real-world applications such as mobile sensors have imperfect localization, leading to inputs with biased errors. These biases can typically be estimated through measurements collected over time using, for example, Kalman filters. To avoid recomputation of the entire GP model when better estimates of the inputs used in the training data become available, we introduce a technique for updating a trained GP model to incorporate updated estimates of the inputs. By leveraging the differentiability of the mean and covariance functions derived from the squared exponential kernel, a second-order correction algorithm is developed to update the trained GP models. Precomputed Jacobians and Hessians of kernels enable real-time refinement of the mean and covariance predictions. The efficacy of the developed approach is demonstrated using two simulation studies, with error analyses revealing improvements in both predictive accuracy and uncertainty quantification.
翻译:高斯过程(GPs)被广泛认为是用于回归和分类的强大非参数模型。传统的GP框架主要基于输入准确已知或受零均值噪声影响的假设。然而,许多实际应用(如移动传感器)存在定位不精确的问题,导致输入存在有偏误差。这些偏差通常可以通过随时间收集的测量值(例如使用卡尔曼滤波器)进行估计。为了避免在获得训练数据中所用输入的更优估计时重新计算整个GP模型,我们引入了一种更新已训练GP模型的技术,以纳入输入的最新估计。通过利用由平方指数核导出的均值函数和协方差函数的可微性,我们开发了一种二阶校正算法来更新已训练的GP模型。预计算核的雅可比矩阵和海森矩阵使得均值和协方差预测能够实时优化。通过两项仿真研究验证了所提方法的有效性,误差分析表明其在预测精度和不确定性量化方面均有所改进。