As a tool for analyzing time series, grey prediction models have been widely used in various fields of society due to their higher prediction accuracy and the advantages of small sample modeling. The basic GM (1, N) model is the most popular and important grey model, in which the first “1” stands for the “first order” and the second “N” represents the “multivariate.” The construction of the background values is not only an important step in grey modeling but also the key factor that affects the prediction accuracy of the grey prediction models. In order to further improve the prediction accuracy of the multivariate grey prediction models, this paper establishes a novel multivariate grey prediction model based on dynamic background values (a...
Grey system theory has been developed for almost 30 years and has obtained many great successes in p...
The discrete grey prediction models have attracted considerable interest of research due to its effe...
Grey theory is an approach that can be used to construct a model with limited samples to provide bet...
The purpose of this paper is to explore modeling mechanism of a nonhomogeneous multivariable grey pr...
Grey prediction models have been widely used in various fields of society due to their high predicti...
Accurate estimations can provide a solid basis for decision-making and policy-making that have exper...
According to the new information priority principle of grey system, this paper tries to optimize the...
AbstractAlthough the grey forecasting models have been successfully utilized in many fields and demo...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
[[abstract]]This paper proposes an optimal grey model GM(1,1) based on Genetic Algorithm to improve ...
In recent years, the nonhomogeneous grey model has received much attention owing to its flexibility ...
A novel nonhomogeneous multivariable grey forecasting model termed NHMGM(1,m,kp,c) is proposed in th...
The grey prediction model with convolution integral GMC (1, n) is a multiple grey model with exact s...
The direct grey model (DGM(2,1)) is considered for fluctuation characteristics of the sampling data ...
Grey prediction models for time series have been widely applied to demand forecasting because only l...
Grey system theory has been developed for almost 30 years and has obtained many great successes in p...
The discrete grey prediction models have attracted considerable interest of research due to its effe...
Grey theory is an approach that can be used to construct a model with limited samples to provide bet...
The purpose of this paper is to explore modeling mechanism of a nonhomogeneous multivariable grey pr...
Grey prediction models have been widely used in various fields of society due to their high predicti...
Accurate estimations can provide a solid basis for decision-making and policy-making that have exper...
According to the new information priority principle of grey system, this paper tries to optimize the...
AbstractAlthough the grey forecasting models have been successfully utilized in many fields and demo...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
[[abstract]]This paper proposes an optimal grey model GM(1,1) based on Genetic Algorithm to improve ...
In recent years, the nonhomogeneous grey model has received much attention owing to its flexibility ...
A novel nonhomogeneous multivariable grey forecasting model termed NHMGM(1,m,kp,c) is proposed in th...
The grey prediction model with convolution integral GMC (1, n) is a multiple grey model with exact s...
The direct grey model (DGM(2,1)) is considered for fluctuation characteristics of the sampling data ...
Grey prediction models for time series have been widely applied to demand forecasting because only l...
Grey system theory has been developed for almost 30 years and has obtained many great successes in p...
The discrete grey prediction models have attracted considerable interest of research due to its effe...
Grey theory is an approach that can be used to construct a model with limited samples to provide bet...