7. 输入位于锥内的多元线性问题的自适应逼近

Yuhan Ding, F. J. Hickernell, P. Kritzer, Simon Mak
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引用次数: 2

摘要

研究了一般多元线性问题的自适应逼近算法,其中输入函数集为非凸锥。众所周知,对于凸输入集,自适应算法的性能并不比非自适应算法好,但对于非凸输入集,情况可能有所不同。这里考虑的一个典型例子是基于级数展开的函数逼近。给定误差容限,我们使用输入的一系列系数来构造一个近似解,使误差不超过该容限。我们研究了可以根据导频样本限定输入范数的情况,以及我们跟踪输入序列系数衰减率的情况。此外,我们还考虑了推断坐标和平滑重要性有意义的情况。除了进行误差分析外,我们还研究了算法的信息成本和问题的计算复杂度,并确定了可以避免维数诅咒的条件。
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7. Adaptive approximation for multivariate linear problems with inputs lying in a cone
We study adaptive approximation algorithms for general multivariate linear problems where the sets of input functions are non-convex cones. While it is known that adaptive algorithms perform essentially no better than non-adaptive algorithms for convex input sets, the situation may be different for non-convex sets. A typical example considered here is function approximation based on series expansions. Given an error tolerance, we use series coefficients of the input to construct an approximate solution such that the error does not exceed this tolerance. We study the situation where we can bound the norm of the input based on a pilot sample, and the situation where we keep track of the decay rate of the series coefficients of the input. Moreover, we consider situations where it makes sense to infer coordinate and smoothness importance. Besides performing an error analysis, we also study the information cost of our algorithms and the computational complexity of our problems, and we identify conditions under which we can avoid a curse of dimensionality.
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