Usually, real-world time-series forecasting problems are dynamic. If such time-series are characterized by mere concept shifts, a passive approach to learning become ideal to continuously adapt the model parameters whenever new data patterns arrive to cope with uncertainty in the presence of change. This work hybridizes a quantum-inspired particle swarm optimization designed for dynamic environments, to cope with concept shifts, with either a least-squares approximation technique or nonlinear autoregressive model to forecast time-series. Also, this work evaluates experimentally and performs a comparative study on the performance of the proposed models. The obtained results show that the nonlinear autoregressive-based model outperformed the ...
In existing forecasting research papers support vector regression with chaotic mapping function and ...
Big data mining, analysis, and forecasting play vital roles in modern economic and industrial fields...
Deep artificial neural networks have been popular for time series forecasting literature in recent y...
Time series prediction techniques have been used in many real-world applications such as financial m...
Accurate forecasting performance in the energy sector is a primary factor in the modern restructured...
Background: The generalized space-time autoregressive (GSTAR) model is one of the most widely used m...
Artificial neural network approach is a well-known method that is a useful tool for time series fore...
This research aims at establishing a novel hybrid artificial intelligence (AI) approach, named as fi...
In this study, a new hybrid forecasting method is proposed. The proposed method is called autoregres...
Time series forecasting is an important and widely popular topic in the research of system modeling....
WOS: 000472482200003Time series prediction is a remarkable research interest that is widely followed...
ABSTRACT This paper presents an study about a new Hybrid method -GRASPES -for time series prediction...
In this study, a new hybrid forecasting method is proposed. The proposed method is called autoregres...
Real-world time series such as econometric time series are rarely linear and they have characteristi...
Fuzzy time series have been developed during the last decade to improve the forecast accuracy. Many ...
In existing forecasting research papers support vector regression with chaotic mapping function and ...
Big data mining, analysis, and forecasting play vital roles in modern economic and industrial fields...
Deep artificial neural networks have been popular for time series forecasting literature in recent y...
Time series prediction techniques have been used in many real-world applications such as financial m...
Accurate forecasting performance in the energy sector is a primary factor in the modern restructured...
Background: The generalized space-time autoregressive (GSTAR) model is one of the most widely used m...
Artificial neural network approach is a well-known method that is a useful tool for time series fore...
This research aims at establishing a novel hybrid artificial intelligence (AI) approach, named as fi...
In this study, a new hybrid forecasting method is proposed. The proposed method is called autoregres...
Time series forecasting is an important and widely popular topic in the research of system modeling....
WOS: 000472482200003Time series prediction is a remarkable research interest that is widely followed...
ABSTRACT This paper presents an study about a new Hybrid method -GRASPES -for time series prediction...
In this study, a new hybrid forecasting method is proposed. The proposed method is called autoregres...
Real-world time series such as econometric time series are rarely linear and they have characteristi...
Fuzzy time series have been developed during the last decade to improve the forecast accuracy. Many ...
In existing forecasting research papers support vector regression with chaotic mapping function and ...
Big data mining, analysis, and forecasting play vital roles in modern economic and industrial fields...
Deep artificial neural networks have been popular for time series forecasting literature in recent y...