A novel adaptive weight online sequential extreme learning machine (AWOS-ELM) is proposed for predicting time series problems based on an online sequential extreme learning machine (OS-ELM) in this paper. In real-world online applications, the sequentially coming data chunk usually possesses varying confidence coefficients, and the data chunk with a low confidence coefficient tends to mislead the subsequent training process. The proposed AWOS-ELM can improve the training process by accessing the confidence coefficient adaptively and determining the training weight accordingly. Experiments on six time series prediction data sets have verified that the AWOS-ELM algorithm performs better in generalization performance, stability, and prediction...
AbstractIn actual industrial fields, data for modelling are usually generated gradually, which requi...
To apply the single hidden-layer feedforward neural networks (SLFN) to identify time-varying system,...
Thesis is aimed at the possibility of utilization of extreme learning machines and echo state networ...
A novel adaptive weight online sequential extreme learning machine (AWOS-ELM) is proposed for predic...
Accurate and fast prediction of nonstationary time series is challenging and of great interest in bo...
Many real world applications are of time-varying nature and an online learning algorithm is preferre...
Recently, a kernel based online sequential extreme learning machine (OS-ELM) methods, OS-ELM with ke...
A novel sequential learning algorihtm for training Single Hidden Layer Feedforward Neural Network (S...
In this paper, an Optimally Pruned Extreme Learning Machine (OP-ELM) is ap-plied to the problem of l...
In this paper, we investigate the application of adaptive ensemble models of Extreme Learning Machin...
Online learning is the capability of a machine-learning model to update knowledge without retraining...
These slides were presented at the 1st High Performance Machine Learning (HPML) workshop, held in c...
Most adaptive neural control schemes are based on stochastic gradient-descent backpropagation (SGBP)...
Abstract—This paper proposes a method for adaptive identifi-cation and predictive control using an o...
Since the existing inverse-matrix-free extreme learning machine (IF-ELM) only works well in batched ...
AbstractIn actual industrial fields, data for modelling are usually generated gradually, which requi...
To apply the single hidden-layer feedforward neural networks (SLFN) to identify time-varying system,...
Thesis is aimed at the possibility of utilization of extreme learning machines and echo state networ...
A novel adaptive weight online sequential extreme learning machine (AWOS-ELM) is proposed for predic...
Accurate and fast prediction of nonstationary time series is challenging and of great interest in bo...
Many real world applications are of time-varying nature and an online learning algorithm is preferre...
Recently, a kernel based online sequential extreme learning machine (OS-ELM) methods, OS-ELM with ke...
A novel sequential learning algorihtm for training Single Hidden Layer Feedforward Neural Network (S...
In this paper, an Optimally Pruned Extreme Learning Machine (OP-ELM) is ap-plied to the problem of l...
In this paper, we investigate the application of adaptive ensemble models of Extreme Learning Machin...
Online learning is the capability of a machine-learning model to update knowledge without retraining...
These slides were presented at the 1st High Performance Machine Learning (HPML) workshop, held in c...
Most adaptive neural control schemes are based on stochastic gradient-descent backpropagation (SGBP)...
Abstract—This paper proposes a method for adaptive identifi-cation and predictive control using an o...
Since the existing inverse-matrix-free extreme learning machine (IF-ELM) only works well in batched ...
AbstractIn actual industrial fields, data for modelling are usually generated gradually, which requi...
To apply the single hidden-layer feedforward neural networks (SLFN) to identify time-varying system,...
Thesis is aimed at the possibility of utilization of extreme learning machines and echo state networ...