Machine learning facilitated business intelligence (Part I) Neural networks learning algorithms and applications
Purpose The purpose of this paper is to conduct a comprehensive review of the noteworthy
contributions made in the area of the Feedforward neural network (FNN) to improve its …
contributions made in the area of the Feedforward neural network (FNN) to improve its …
Robust recurrent neural networks for time series forecasting
X Zhang, C Zhong, J Zhang, T Wang, WWY Ng - Neurocomputing, 2023 - Elsevier
Recurrent neural networks (RNNs) are widely utilized in time series forecasting tasks. In
practical applications, there are noises in real-life time series data. A model's generalization …
practical applications, there are noises in real-life time series data. A model's generalization …
Diversified sensitivity-based undersampling for imbalance classification problems
Undersampling is a widely adopted method to deal with imbalance pattern classification
problems. Current methods mainly depend on either random resampling on the majority …
problems. Current methods mainly depend on either random resampling on the majority …
Sensitivity analysis of Takagi–Sugeno fuzzy neural network
In this paper, we first define a measure of statistical sensitivity of a zero-order Takagi–
Sugeno (TS) fuzzy neural network (FNN) with respect to perturbation of weights and …
Sugeno (TS) fuzzy neural network (FNN) with respect to perturbation of weights and …
A study on relationship between generalization abilities and fuzziness of base classifiers in ensemble learning
We investigate essential relationships between generalization capabilities and fuzziness of
fuzzy classifiers (viz., the classifiers whose outputs are vectors of membership grades of a …
fuzzy classifiers (viz., the classifiers whose outputs are vectors of membership grades of a …
A deep learning based hybrid method for hourly solar radiation forecasting
Solar radiation forecasting is a key technology to improve the control and scheduling
performance of photovoltaic power plants. In this paper, a deep learning based hybrid …
performance of photovoltaic power plants. In this paper, a deep learning based hybrid …
An adaptive-PSO-based self-organizing RBF neural network
HG Han, W Lu, Y Hou, JF Qiao - IEEE transactions on neural …, 2016 - ieeexplore.ieee.org
In this paper, a self-organizing radial basis function (SORBF) neural network is designed to
improve both accuracy and parsimony with the aid of adaptive particle swarm optimization …
improve both accuracy and parsimony with the aid of adaptive particle swarm optimization …
Bilateral sensitivity analysis: a better understanding of a neural network
A model-independent sensitivity analysis for (deep) neural network, Bilateral sensitivity
analysis (BiSA), is proposed to measure the relationship or dependency between neurons …
analysis (BiSA), is proposed to measure the relationship or dependency between neurons …
Evolving ensemble fuzzy classifier
The concept of ensemble learning offers a promising avenue in learning from data streams
under complex environments because it better addresses the bias and variance dilemma …
under complex environments because it better addresses the bias and variance dilemma …
Fuzziness based sample categorization for classifier performance improvement
This paper investigates a relationship between the fuzziness of a classifier and the
misclassification rate of the classifier on a group of samples. For a given trained classifier …
misclassification rate of the classifier on a group of samples. For a given trained classifier …