Hybrid artificial intelligence deals with the construction of intelligent systems by relying on both human knowledge and historical data records. In this paper, we approach this problem from a neural perspective, particularly when modeling and simulating dynamic systems. Firstly, we propose a Fuzzy Cognitive Map architecture in which experts are requested to define the interaction among the input neurons. As a second contribution, we introduce a fast and deterministic learning rule to compute the weights among input and output neurons. This parameterless learning method is based on the Moore-Penrose inverse and it can be performed in a single step. In addition, we discuss a model to determine the relevance of weights, which allows us to bet...
This dissertation proposes a fuzzy-arithmetic-based method for extracting fuzzy inference systems fr...
This paper presents an extension of a hybrid method for modelling Fuzzy Cognitive Maps (FCMs), which...
The incorporation of prior knowledge into neural networks can improve neural network learning in sev...
AbstractFuzzy cognitive map is a soft computing technique for modeling systems, which combines syner...
Fuzzy Cognitive Maps (FCM) is a technique to represent models of causal inference networks. Data dri...
This paper proposes a neural network for building and optimizing fuzzy models. The network can be re...
This paper presents Learning Fuzzy Cognitive Maps (LFCM) as a new paradigm, or approach, for modelin...
Abstract. A fuzzy cognitive map is a graphical means of representing arbitrarily complex models of i...
A neurofuzzy approach for a given set of input-output training data is proposed in two phases. First...
The fuzzy cognitive map (FCM) has gradually emerged as a powerful paradigm for knowledge representat...
Fuzzy cognitive maps (FCMs) form an important class of models for describing and simulating the beha...
Hybrid intelligent systems combining fuzzy logic and neural networks are proving their effectivenes...
Abstract⎯In this paper a new hybrid method for training Fuzzy Cognitive Maps is presented. FCMs are ...
Neuro-fuzzy networks have been successfully applied to extract knowledge from data in the form of fu...
This paper introduces a new learning algorithm for artificial neural networks, based on a fuzzy infe...
This dissertation proposes a fuzzy-arithmetic-based method for extracting fuzzy inference systems fr...
This paper presents an extension of a hybrid method for modelling Fuzzy Cognitive Maps (FCMs), which...
The incorporation of prior knowledge into neural networks can improve neural network learning in sev...
AbstractFuzzy cognitive map is a soft computing technique for modeling systems, which combines syner...
Fuzzy Cognitive Maps (FCM) is a technique to represent models of causal inference networks. Data dri...
This paper proposes a neural network for building and optimizing fuzzy models. The network can be re...
This paper presents Learning Fuzzy Cognitive Maps (LFCM) as a new paradigm, or approach, for modelin...
Abstract. A fuzzy cognitive map is a graphical means of representing arbitrarily complex models of i...
A neurofuzzy approach for a given set of input-output training data is proposed in two phases. First...
The fuzzy cognitive map (FCM) has gradually emerged as a powerful paradigm for knowledge representat...
Fuzzy cognitive maps (FCMs) form an important class of models for describing and simulating the beha...
Hybrid intelligent systems combining fuzzy logic and neural networks are proving their effectivenes...
Abstract⎯In this paper a new hybrid method for training Fuzzy Cognitive Maps is presented. FCMs are ...
Neuro-fuzzy networks have been successfully applied to extract knowledge from data in the form of fu...
This paper introduces a new learning algorithm for artificial neural networks, based on a fuzzy infe...
This dissertation proposes a fuzzy-arithmetic-based method for extracting fuzzy inference systems fr...
This paper presents an extension of a hybrid method for modelling Fuzzy Cognitive Maps (FCMs), which...
The incorporation of prior knowledge into neural networks can improve neural network learning in sev...