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Global Minimizer of Large Scale Stochastic Rosenbrock Function: Canonical Duality Approach

机译:大规模随机Rosenbrock函数的全局最小化:规范对偶方法

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Canonical duality theory for solving the well-known benchmark test problem of stochastic Rosenbrock function is explored by two canonical transformations. Global optimality criterion is analytically obtained, which shows that the stochastic disturbance of these parameters could be eliminated by a proper canonical dual transformation. Numerical simulations illustrate the canonical duality theory is potentially powerful for solving this benchmark test problem and many other challenging problems in global optimization and complex network systems.
机译:通过两次规范变换,探索了用于解决随机Rosenbrock函数基准测试问题的规范对偶理论。通过分析得出全局最优准则,表明通过适当的规范对偶变换可以消除这些参数的随机干扰。数值模拟表明,规范对偶理论在解决此基准测试问题以及全局优化和复杂网络系统中的许多其他挑战性问题方面具有强大的潜力。

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