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Min-Max Spaces and Complexity Reduction in Min-Max Expansions

机译:最小最大空间和最小最大扩展中的复杂度降低

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摘要

Idempotent methods have been found to be extremely helpful in the numerical solution of certain classes of nonlinear control problems. In those methods, one uses the fact that the value function lies in the space of semiconvex functions (in the case of maximizing controllers), and approximates this value using a truncated max-plus basis expansion. In some classes, the value function is actually convex, and then one specifically approximates with suprema (i.e., max-plus sums) of affine functions. Note that the space of convex functions is a max-plus linear space, or moduloid. In extending those concepts to game problems, one finds a different function space, and different algebra, to be appropriate. Here we consider functions which may be represented using infima (i.e., min-max sums) of max-plus affine functions. It is natural to refer to the class of functions so represented as the min-max linear space (or moduloid) of max-plus hypo-convex functions. We examine this space, the associated notion of duality and min-max basis expansions. In using these methods for solution of control problems, and now games, a critical step is complexity-reduction. In particular, one needs to find reduced-complexity expansions which approximate the function as well as possible. We obtain a solution to this complexity-reduction problem in the case of min-max expansions.
机译:已经发现等幂方法在某些类型的非线性控制问题的数值解中非常有用。在这些方法中,使用值函数位于半凸函数空间中的事实(在最大化控制器的情况下),并使用截断的最大加基展开来近似此值。在某些类中,值函数实际上是凸的,然后用仿射函数的超函数(即最大加和)专门近似。请注意,凸函数的空间是最大加线性空间或模数。在将这些概念扩展到游戏问题时,人们发现了不同的功能空间和不同的代数是合适的。在这里,我们考虑可以使用最大加仿射函数的INF(即最小-最大和)表示的函数。很自然地将函数的类别表示为max-plus次凸函数的min-max线性空间(或模量)。我们研究了这个空间,对偶性和最小-最大基数展开的相关概念。在使用这些方法解决控制问题以及现在的游戏时,关键一步是降低复杂性。特别地,需要找到降低复杂度的扩展,该扩展尽可能地接近该功能。在最小-最大展开的情况下,我们获得了解决此复杂性降低问题的方法。

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