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Comparison of two non-convex mixed-integer nonlinear programming algorithms applied to autoregressive moving average model structure and parameter estimation

机译:自回归移动平均模型结构和参数估计的两种非凸混合整数非线性规划算法比较

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摘要

In this article, the stochastic modelling approach proposed by Box and Jenkins is treated as a mixed-integer nonlinear programming (MINLP) problem solved with a mesh adaptive direct search and a real-coded genetic class of algorithms. The aim is to estimate the real-valued parameters and non-negative integer, correlated structure of stationary autoregressive moving average (ARMA) processes. The maximum likelihood function of the stationary ARMA process is embedded in Akaike's information criterion and the Bayesian information criterion, whereas the estimation procedure is based on Kalman filter recursions. The constraints imposed on the objective function enforce stability and invertibility. The best ARMA model is regarded as the global minimum of the non-convex MINLP problem. The robustness and computational performance of the MINLP solvers are compared with brute-force enumeration. Numerical experiments are done for existing time series and one new data set.
机译:本文将Box和Jenkins提出的随机建模方法视为通过网格自适应直接搜索和实数编码遗传算法解决的混合整数非线性规划(MINLP)问题。目的是估计静态自回归移动平均(ARMA)过程的实值参数和非负整数,相关结构。静态ARMA过程的最大似然函数嵌入在Akaike信息准则和贝叶斯信息准则中,而估计过程基于Kalman滤波器递归。施加在目标函数上的约束条件增强了稳定性和可逆性。最佳ARMA模型被视为非凸MINLP问题的全局最小值。将MINLP求解器的鲁棒性和计算性能与蛮力枚举进行了比较。对现有的时间序列和一个新的数据集进行了数值实验。

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