Gaussian Processes (GPs) are a class of kernel methods that have shown to be very useful in geoscience applications. They are widely used because they are simple, flexible and provide very accurate estimates for nonlinear problems, especially in parameter retrieval. An addition to a predictive mean function, GPs come equipped with a useful property: the predictive variance function which provides confidence intervals for the predictions. The GP formulation usually assumes that there is no input noise in the training and testing points, only in the observations. However, this is often not the case in Earth observation problems where an accurate assessment of the instrument error is usually available. In this paper, we showcase how the derivative of a GP model can be used to provide an analytical error propagation formulation and we analyze the predictive variance and the propagated error terms in a temperature prediction problem from infrared sounding data.
翻译:Gausian Processes (GPs) 是一种在地球科学应用中非常有用的内核方法,被广泛使用,因为它们简单、灵活,对非线性问题提供非常准确的估计,特别是在参数检索方面。除了一种预测平均函数外,GPs还配备了有用的属性:为预测提供信任间隔的预测差异函数。GP的配方通常假定培训和测试点没有输入噪音,只在观测中。然而,在地球观测问题中,通常没有准确评估仪器错误的情况并非如此。在本文中,我们展示如何利用GP模型的衍生物来提供分析性错误传播配方,我们分析红外探测数据在温度预测问题中的预测差异和扩散错误术语。