Direct search computational methods for maximum likelihood parameter estimation

N. Gupta
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Abstract

Though the theory of the maximum likelihood method for parameter estimation in dynamic systems is well developed, its application to complex systems has been limited by the unavailability of fast and reliable computational algorithms to maximize the likelihood function. Gradient-based algorithms have been mostly used for this purpose until now. A summary of such techniques was given by Gupta and Mehra (1974). Recent experience with algorithms which do not explicitly compute the gradients of the innovations or the likelihood function indicates that such algorithms offer potential benefits over gradient-based algorithms. This paper surveys direct search optimization methods and compares them to the algorithms requiring a direct computation of the gradients. An example problem is presented to show the class of problems for which such methods are likely to be useful.
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最大似然参数估计的直接搜索计算方法
尽管动态系统参数估计的极大似然方法理论已经发展得很好,但由于无法获得快速可靠的最大化似然函数的计算算法,限制了其在复杂系统中的应用。到目前为止,基于梯度的算法主要用于此目的。这种技术的总结是由古普塔和梅赫拉(1974)给出的。最近对不明确计算创新的梯度或似然函数的算法的经验表明,这种算法比基于梯度的算法具有潜在的优势。本文综述了直接搜索优化方法,并将其与需要直接计算梯度的算法进行了比较。文中给出了一个示例问题来说明这类方法可能有用的问题。
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