最小消息长度自回归模型顺序选择的自举方法

T.O. Olatayo, K.K. Adesanya
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引用次数: 2

摘要

最小消息长度MML87是一种用于模型选择和点估计的信息理论准则。原则上,它是一种归纳推理方法,并广泛用于近似和算法中,以确定任何给定数据的理想模型。本研究对MML87模型选择准则进行了研究,并与其他主要的模型选择准则(如Akaike信息准则(AIC)、Bayesian信息准则(BIC)、Corrected Akaike信息准则(AICc)和Hannan-Quinn (HQ))进行了比较,利用Bootstrap仿真技术模拟p阶自回归模型,并将三种不同的计数系统分为欠推断、正确推断和过推断。在此基础上用自回归模型探索候选模型,用估计参数探索聚合真值模型。通过负对数似然函数和均方预测误差估计,MML87优于其他所有模型选择标准。它是更有效和正确的推断。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bootstrap method for minimum message length autoregressive model order selection

Minimum Message Length MML87 is an information theoretical criterion for model selection and point estimation. In principle, it is a method of inductive inference, and is used in a wide range of approximations and algorithm to determine the ideal model for any given data. In this study, MML87 model selection criterion was investigated and compared with other notably model selection criteria such as Akaike information criterion (AIC), Bayesian information criterion (BIC), Corrected Akaike information criterion (AICc), and Hannan–Quinn (HQ), using Bootstrap Simulation Technique to simulate autoregressive model of order P. We specified three different counts systems as under inferred, correctly inferred and over inferred. Based on the candidate model explored with autoregressive model and the aggregate true model explored, with the estimated parameters. MML87 performed better than all other model selection criteria through the negative log likelihood function and the mean square prediction error estimated. It is more efficient and correctly inferred.

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