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Statistical and computational tradeoff in genetic algorithm-based estimation

机译:基于遗传算法的估计中的统计和计算权衡

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When a genetic algorithm (GA) is employed in a statistical problem, the result is affected by both variability due to sampling and the stochastic elements of algorithm. Both of these components should be controlled in order to obtain reliable results. In the present work we analyze parametric estimation problems tackled by GAs, and pursue two objectives: the first one is related to a formal variability analysis of final estimates, showing that it can be easily decomposed in the two sources of variability. In the second one we introduce a framework of GA estimation with fixed computational resources, which is a form of statistical and the computational tradeoff question, crucial in recent problems. In this situation the result should be optimal from both the statistical and computational point of view, considering the two sources of variability and the constraints on resources. Simulation studies will be presented for illustrating the proposed method and the statistical and computational tradeoff question.
机译:当在统计问题中采用遗传算法(GA)时,结果会受到采样的可变性和算法的随机性的影响。为了获得可靠的结果,应同时控制这两个组件。在当前的工作中,我们分析了遗传算法解决的参数估计问题,并追求两个目标:第一个目标与最终估计的形式变异性分析有关,表明可以很容易地将其分解为两个变异性来源。在第二篇文章中,我们介绍了具有固定计算资源的GA估计框架,这是统计和计算折衷问题的一种形式,对最近的问题至关重要。在这种情况下,考虑到可变性的两个来源和资源的限制,从统计和计算的角度来看,结果都应该是最佳的。将进行仿真研究,以说明所提出的方法以及统计和计算权衡问题。

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