In this paper, we study the application of Extreme Learning Machine (ELM) algorithm for single layered feedforward neural networks to non-linear chaotic time series problems. In this algorithm the input weights and the hidden layer bias are randomly chosen. The ELM formulation leads to solving a system of linear equations in terms of the unknown weights connecting the hidden layer to the output layer. The solution of this general system of linear equations will be obtained using Moore-Penrose generalized pseudo inverse. For the study of the application of the method we consider the time series generated by the Mackey Glass delay differential equation with different time delays, Santa Fe A and UCR heart beat rate ECG time series. For the cho...
This paper presents a novel design of interval type-2 fuzzy logic systems (IT2FLS) by utilizing the ...
The machine learning techniques have been extensively studied in the past few decades. One of the mo...
This paper presents a new regularization for Extreme Learning Machines (ELMs). ELMs are Randomized N...
System identification in nonstationary environment represents a challenging problem and an advaned n...
System identification in nonstationary environments represents a challenging problem to solve and lo...
© IWA Publishing 2016. Applying feed-forward neural networks has been limited due to the use of conv...
In this paper, we investigate the application of adaptive ensemble models of Extreme Learning Machin...
A novel adaptive weight online sequential extreme learning machine (AWOS-ELM) is proposed for predic...
Extreme learning machine (ELM) has been developed for single hidden layer feedforward neural network...
An Extreme Learning Machine (ELM) approach has already been applied to Time-Variant Neural Networks ...
This paper proposes a combination of methodologies based on a recent development -called Extreme Lea...
In this paper, an Optimally Pruned Extreme Learning Machine (OP-ELM) is ap-plied to the problem of l...
Time-Varying Neural Networks(TV-NN) represent a powerful tool for nonstationary systems identificati...
A novel sequential learning algorihtm for training Single Hidden Layer Feedforward Neural Network (S...
This paper presents a novel design of interval type-2 fuzzy logic systems (IT2FLS) by utilizing the ...
The machine learning techniques have been extensively studied in the past few decades. One of the mo...
This paper presents a new regularization for Extreme Learning Machines (ELMs). ELMs are Randomized N...
System identification in nonstationary environment represents a challenging problem and an advaned n...
System identification in nonstationary environments represents a challenging problem to solve and lo...
© IWA Publishing 2016. Applying feed-forward neural networks has been limited due to the use of conv...
In this paper, we investigate the application of adaptive ensemble models of Extreme Learning Machin...
A novel adaptive weight online sequential extreme learning machine (AWOS-ELM) is proposed for predic...
Extreme learning machine (ELM) has been developed for single hidden layer feedforward neural network...
An Extreme Learning Machine (ELM) approach has already been applied to Time-Variant Neural Networks ...
This paper proposes a combination of methodologies based on a recent development -called Extreme Lea...
In this paper, an Optimally Pruned Extreme Learning Machine (OP-ELM) is ap-plied to the problem of l...
Time-Varying Neural Networks(TV-NN) represent a powerful tool for nonstationary systems identificati...
A novel sequential learning algorihtm for training Single Hidden Layer Feedforward Neural Network (S...
This paper presents a novel design of interval type-2 fuzzy logic systems (IT2FLS) by utilizing the ...
The machine learning techniques have been extensively studied in the past few decades. One of the mo...
This paper presents a new regularization for Extreme Learning Machines (ELMs). ELMs are Randomized N...