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ITSO: a novel inverse transform sampling-based optimization algorithm for stochastic search

机译:ITSO:一种基于逆变换抽样的随机搜索优化算法

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摘要

Optimization algorithms appear in the core calculations of numerous Artificial Intelligence (AI) and Machine Learning methods and Engineering and Business applications. Following recent works on AI's theoretical deficiencies, a rigour context for the optimization problem of a black-box objective function is developed. The algorithm stems directly from the theory of probability, instead of presumed inspiration. Thus the convergence properties of the proposed methodology are inherently stable. In particular, the proposed optimizer utilizes an algorithmic implementation of the n-dimensional inverse transform sampling as a search strategy. No control parameters are required to be tuned, and the trade-off among exploration and exploitation is, by definition, satisfied. A theoretical proof is provided, concluding that when falling into the proposed framework, either directly or incidentally, any optimization algorithm converges. The numerical experiments verify the theoretical results on the efficacy of the algorithm apropos reaching the sought optimum.
机译:优化算法出现在众多人工智能 (AI) 和机器学习方法以及工程和商业应用程序的核心计算中。在最近关于人工智能理论缺陷的研究之后,为黑盒目标函数的优化问题建立了一个严谨的背景。该算法直接源于概率理论,而不是假定的灵感。因此,所提方法的收敛特性本质上是稳定的。具体而言,所提出的优化器利用n维逆变换采样的算法实现作为搜索策略。不需要调整控制参数,根据定义,勘探和开发之间的权衡是满足的。提供了理论证明,得出的结论是,当直接或偶然地落入所提出的框架时,任何优化算法都会收敛。数值实验验证了算法达到最佳效果的理论结果。

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