A Fast and Efficient Estimation of the Parameters of a Model of Accident Frequencies via an MM Algorithm

Issa Cherif Geraldo, Edoh Katchekpele, T. A. Kpanzou
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引用次数: 1

Abstract

In this paper, we consider a multivariate statistical model of accident frequencies having a variable number of parameters and whose parameters are dependent and subject to box constraints and linear equality constraints. We design a minorization-maximization (MM) algorithm and an accelerated MM algorithm to compute the maximum likelihood estimates of the parameters. We illustrate, through simulations, the performance of our proposed MM algorithm and its accelerated version by comparing them to Newton-Raphson (NR) and quasi-Newton algorithms. The results suggest that the MM algorithm and its accelerated version are better in terms of convergence proportion and, as the number of parameters increases, they are also better in terms of computation time.
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基于MM算法的事故频率模型参数快速有效估计
在本文中,我们考虑了一个具有可变数量参数的事故频率的多元统计模型,该模型的参数是相关的,并受盒形约束和线性等式约束。我们设计了一个最小化最大化(MM)算法和一个加速的MM算法来计算参数的最大似然估计。我们通过仿真来说明我们提出的MM算法及其加速版本的性能,并将它们与Newton-Raphson (NR)和准牛顿算法进行比较。结果表明,MM算法及其加速版本在收敛比例上更胜一筹,并且随着参数数量的增加,其计算时间也更胜一筹。
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