We present a dimension-incremental algorithm for the nonlinear approximation of high-dimensional functions in an arbitrary bounded orthonormal product basis. Our goal is to detect a suitable truncation of the basis expansion of the function, where the corresponding basis support is assumed to be unknown. Our method is based on point evaluations of the considered function and adaptively builds an index set of a suitable basis support, such that the approximately largest basis coefficients are still included. Throughout the work, there are various minor modifications of the algorithm discussed as well, which may yield additional benefits in several situations. For the first time, we provide a proof of a detection guarantee for such an index set in the function approximation case under certain assumptions on the sub-methods used within our algorithm, which can be used as a foundation for similar statements in various other situations as well. Some numerical examples in different settings underline the effectiveness and accuracy of our method.
翻译:我们在任意的封闭正态产品基础上为高维函数的非线性近似提出了一个尺寸加分算法。我们的目标是在假设相应的基础支持未知的情况下,发现该功能基础扩展的适当缺省,我们的方法基于对所考虑的功能的点评价,适应性地建立一套适当基础支持的指数,从而仍然包括大约最大的基系数。在整个工作过程中,对讨论的算法也做了一些微小的修改,在几种情况下可能会产生额外的好处。我们第一次提供了证据,证明根据我们算法中使用的次方法的某些假设,在功能近似情况下为设定的这种指数提供了检测保证,这种指数可以用作在各种其他情况下作类似陈述的基础。在不同情况下,一些数字例子强调了我们方法的有效性和准确性。