A self-constructing fuzzy neural network (SCFNN) has been successfully used for chaotic time series prediction in the literature. In this paper, we propose the strategy of adding a recurrent path in each node of the hidden layer of SCFNN, resulting in a self-constructing recurrent fuzzy neural network (SCRFNN). This novel network does not increase complexity in fuzzy inference or learning process. Specifically, the structure learning is based on partition of the input space, and the parameter learning is based on the supervised gradient descent method using a delta adaptation law. This novel network can also be applied for chaotic time series prediction including Logistic and Henon time series. More significantly, it features rapider conver...
Recent advances in nonlinear time-series prediction demonstrated the ability of recurrent neural net...
Abstract—This paper presents an improved adaptive Neuro-fuzzy inference system (ANFIS) for predictin...
Chaotic systems are known for their unpredictability due to their sensitive dependence on initial co...
Although a large number of researches have been carried out into the analysis of nonlinear phenomena...
Traditional statistical, physical, and correlation models for chaotic time series prediction have pr...
Chaotic time series have been involved in many fields of production and life, so their prediction ha...
A unique technique based on chaos theory and artificial neural networks (ANN) is developed to analys...
In this paper, we present a study on the use of fuzzy neural networks and their application to the p...
In this paper an architecture based on the anatomical structure of the emotional network in the brai...
Forecasting (prediction of) time series of chaotic systems is known as one of the most remarkable re...
International audienceThis paper discusses the use of a recent boosting algorithm for recurrent neur...
Chaotic dynamics are the paradigm of complex and unpredictable evolution due to their built-in featu...
This paper presents a novel recurrent fuzzy neural network, called an interactively recurrent self-e...
This paper demonstrates the development of an Long-Short Term Memory (LSTM) network and its applicat...
International audience"Local models" (Walter, J., et al. International Joint Conference on Neural Ne...
Recent advances in nonlinear time-series prediction demonstrated the ability of recurrent neural net...
Abstract—This paper presents an improved adaptive Neuro-fuzzy inference system (ANFIS) for predictin...
Chaotic systems are known for their unpredictability due to their sensitive dependence on initial co...
Although a large number of researches have been carried out into the analysis of nonlinear phenomena...
Traditional statistical, physical, and correlation models for chaotic time series prediction have pr...
Chaotic time series have been involved in many fields of production and life, so their prediction ha...
A unique technique based on chaos theory and artificial neural networks (ANN) is developed to analys...
In this paper, we present a study on the use of fuzzy neural networks and their application to the p...
In this paper an architecture based on the anatomical structure of the emotional network in the brai...
Forecasting (prediction of) time series of chaotic systems is known as one of the most remarkable re...
International audienceThis paper discusses the use of a recent boosting algorithm for recurrent neur...
Chaotic dynamics are the paradigm of complex and unpredictable evolution due to their built-in featu...
This paper presents a novel recurrent fuzzy neural network, called an interactively recurrent self-e...
This paper demonstrates the development of an Long-Short Term Memory (LSTM) network and its applicat...
International audience"Local models" (Walter, J., et al. International Joint Conference on Neural Ne...
Recent advances in nonlinear time-series prediction demonstrated the ability of recurrent neural net...
Abstract—This paper presents an improved adaptive Neuro-fuzzy inference system (ANFIS) for predictin...
Chaotic systems are known for their unpredictability due to their sensitive dependence on initial co...