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A No-Free-Lunch Theorem for Non-Uniform Distributions of Target Functions

机译:目标函数不均匀分布的非自由午餐定理

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摘要

The sharpened No-Free-Lunch-theorem (NFL-theorem) states that, regardless of the performance measure, the performance of all optimization algorithms averaged uniformly over any finite set F of functions is equal if and only if F is closed under permutation (c.u.p.). In this paper, we first summarize some consequences of this theorem, which have been proven recently: The number of subsets c.u.p. can be neglected compared to the total number of possible subsets. In particular, problem classes relevant in practice are not likely to be c.u.p. The average number of evaluations needed to find a desirable (e.g., optimal) solution can be calculated independent of the optimization algorithm in certain scenarios. Second, as the main result, the NFL-theorem is extended. Necessary and sufficient conditions for NFL-results to hold are given for arbitrary distributions of target functions. This yields the most general NFL-theorem for optimization presented so far.
机译:锐化的No-Free-Lunch定理(NFL定理)指出,无论性能指标如何,当且仅当F在置换下闭合时,所有优化算法在任何有限集F上均匀平均的性能均相等(杯子)。在本文中,我们首先总结了该定理的一些结果,这些结果最近得到了证明:子集c.u.p的数量。与可能的子集总数相比,可以忽略。特别是,与实践相关的问题类别不太可能是c.u.p。在某些情况下,可以独立于优化算法来计算找到理想(例如最佳)解决方案所需的平均评估次数。第二,作为主要结果,NFL定理得到扩展。 NFL结果保持的必要条件和充分条件为目标函数的任意分布提供了条件。这产生了迄今为止提出的最通用的NFL定理,用于优化。

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