Communication in Physical Sciences 2018, 3(1):61-66 Agada Joseph Oche and Ugwuowo, Fidelis Ifeanyi Received 12 November2018/Accepted 16 December 2018 A systematic approach to time series model selection is very important for reduction of the uncertainties associated with highly subjective and inaccurate method currently being used. Information criteria as a measure of goodness of fit have been criticized because of its statistical inefficiency. In this paper, we develop a rule using discriminant analysis for classification of a time series model from a finite list of parsimonious ARMA (p,q) models. A discriminant function is developed for each of the six alternative ARMA(p,q) models using fifty sets of simulated time series data for each m...
This paper deals with the implementation of model selection criteria to data generated by ARMA proce...
This study is undertaken with the objective of investigating the performance of Akaike’s Information...
In this thesis, we will explore the use of deep learning techniques for model selection in time seri...
We show that analyzing model selection in ARMA time series models as a quadratic discrimination prob...
We show that analyzing model selection in ARMA time series models as a quadratic discrimination prob...
A number of studies in the last couple of decades has attempted to find, in terms of postsample accu...
This is the final version. Available from Hindawi via the DOI in this record. The present paper deal...
In time series investigation of characteristics of production system, different competing models are...
A lot of research has been done on comparing the forecasting accuracy of different univariate time s...
This thesis contains new developments in various topics in time series analysis and forecasting. The...
In this paper, we propose a new Empirical Information Criterion (EIC) for model selection which pena...
Forecasters have been using various criteria to select the most appropriate model from a pool of can...
A major problem for many organisational forecasters is to choose the appropriate forecasting method ...
In the era of big data, analysts usually explore various statistical models or machine-learning meth...
A new method for model selection in prediction of time series is proposed. Apart from the convention...
This paper deals with the implementation of model selection criteria to data generated by ARMA proce...
This study is undertaken with the objective of investigating the performance of Akaike’s Information...
In this thesis, we will explore the use of deep learning techniques for model selection in time seri...
We show that analyzing model selection in ARMA time series models as a quadratic discrimination prob...
We show that analyzing model selection in ARMA time series models as a quadratic discrimination prob...
A number of studies in the last couple of decades has attempted to find, in terms of postsample accu...
This is the final version. Available from Hindawi via the DOI in this record. The present paper deal...
In time series investigation of characteristics of production system, different competing models are...
A lot of research has been done on comparing the forecasting accuracy of different univariate time s...
This thesis contains new developments in various topics in time series analysis and forecasting. The...
In this paper, we propose a new Empirical Information Criterion (EIC) for model selection which pena...
Forecasters have been using various criteria to select the most appropriate model from a pool of can...
A major problem for many organisational forecasters is to choose the appropriate forecasting method ...
In the era of big data, analysts usually explore various statistical models or machine-learning meth...
A new method for model selection in prediction of time series is proposed. Apart from the convention...
This paper deals with the implementation of model selection criteria to data generated by ARMA proce...
This study is undertaken with the objective of investigating the performance of Akaike’s Information...
In this thesis, we will explore the use of deep learning techniques for model selection in time seri...