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Convergence Results for Generalized Pattern Search Algorithms are Tight

机译:广义模式搜索算法的收敛结果很严格

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The convergence theory of generalized pattern search algorithms for unconstrained optimization guarantees under mild conditions that the method produces a limit point satisfying first order optimality conditions related to the local differentiability of the objective function. By exploiting the flexibility allowed by the algorithm, we derive six small dimensional examples showing that the convergence results are tight in the sense that they cannot be strengthened without additional assumptions, i.e., that certain requirement imposed on pattern search algorithms are not merely artifacts of the proofs. In particular, we first show the necessity of the requirement that some algorithmic parameters are rational. We then show that, even for continuously differentiable functions, the method may generate infinitely many limit points, some of which may have non-zero gradients. Finally, we consider functions that are not strictly differentiable. We show that even when a single limit point is generated, the gradient may be non-zero, and zero may be excluded from the generalized gradient, therefore, the method does not necessarily produce a Clarke stationary point.
机译:用于无约束优化的广义模式搜索算法的收敛理论保证了在温和条件下该方法产生的极限点满足与目标函数的局部微分有关的一阶最优条件。通过利用算法允许的灵活性,我们得出了六个小尺寸的例子,这些例子表明,在没有其他假设的情况下无法加强收敛的意义上,收敛结果是紧密的,即,对模式搜索算法施加的某些要求不仅是算法的产物。证明。特别是,我们首先显示了某些算法参数必须合理的要求。然后我们表明,即使对于连续可微函数,该方法也可能生成无限多个极限点,其中一些极限点可能具有非零梯度。最后,我们考虑不能严格区分的功能。我们表明,即使生成单个极限点,梯度也可能不为零,并且零可能会从广义梯度中排除,因此,该方法不一定会产生Clarke固定点。

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