Akaike's criterion is often used to test composite hypotheses; for example to determine the order of a priori unknown Auto-Regressive (AR) processes. Objections are formulated against Akaike's criterion and some modifications are proposed. The application of the theory leads to a general technique for AR-model order estimation based on testing composite hypotheses. This technique allows performance control by means of a simple parameter, the upper-bound on the probability of estimating a too high AR-order; the false alarm probability (FAP). The presented simulations and the theoretical elaboration improve the understanding of the problems and limitations of techniques based on the Akaike criterion. Due to the excellent correspond...
This paper proposes a linear approximation of the nonlinear Threshold AutoRegressive model. It is s...
Assume observations are generated from an infinite-order autoregressive (AR) process. Shibata (1980)...
Abstract: In this paper presents two methods for determining the degree of differencing required to ...
The Modified Information Criterion (MIC) is an Akaike-like criterion which allows performance contro...
Abstract—This paper is concerned with error exponents in testing problems raised by autoregressive (...
This correspondence addresses the problem of order determination of autoregressive models by Bayesia...
This study is undertaken with the objective of investigating the performance of Akaike’s Information...
The purpose of this paper is to compare different autoregressive models performance in case of incor...
A new theoretical approximation for expectation of the prediction error is derived using the same-re...
AbstractLetX1, …, Xnbe observations from a multivariate AR(p) model with unknown orderp. A resamplin...
Autoregression-moving average (ARMA) models provide insight into many biological systems. One of the...
In this paper we deal with the problem of fitting an au-toregression of order p to given data coming...
Abstract—In vector autoregressive modeling, the order selected with the Akaike Information Criterion...
This study is undertaken with the objective of investigating the performance of Akaike's Information...
A robust version of the Akaike Information Criterion (AIC) [5] is defined to the aim of selecting th...
This paper proposes a linear approximation of the nonlinear Threshold AutoRegressive model. It is s...
Assume observations are generated from an infinite-order autoregressive (AR) process. Shibata (1980)...
Abstract: In this paper presents two methods for determining the degree of differencing required to ...
The Modified Information Criterion (MIC) is an Akaike-like criterion which allows performance contro...
Abstract—This paper is concerned with error exponents in testing problems raised by autoregressive (...
This correspondence addresses the problem of order determination of autoregressive models by Bayesia...
This study is undertaken with the objective of investigating the performance of Akaike’s Information...
The purpose of this paper is to compare different autoregressive models performance in case of incor...
A new theoretical approximation for expectation of the prediction error is derived using the same-re...
AbstractLetX1, …, Xnbe observations from a multivariate AR(p) model with unknown orderp. A resamplin...
Autoregression-moving average (ARMA) models provide insight into many biological systems. One of the...
In this paper we deal with the problem of fitting an au-toregression of order p to given data coming...
Abstract—In vector autoregressive modeling, the order selected with the Akaike Information Criterion...
This study is undertaken with the objective of investigating the performance of Akaike's Information...
A robust version of the Akaike Information Criterion (AIC) [5] is defined to the aim of selecting th...
This paper proposes a linear approximation of the nonlinear Threshold AutoRegressive model. It is s...
Assume observations are generated from an infinite-order autoregressive (AR) process. Shibata (1980)...
Abstract: In this paper presents two methods for determining the degree of differencing required to ...