Zhang C. Advanced Randomized Neural Networks for Pattern Analysis 2026
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Zhang C. Advanced Randomized Neural Networks for Pattern Analysis 2026
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Textbook in PDF format
This book is the culmination of our research in the recent decade on randomized neural networks with data-dependent supervision mechanisms. Traditional randomized neural networks mainly focused on constructing various deep neural networks with data independent random weights, ignoring the impact of the number of nodes and scope of parameters on the universal approximation property (UAP) of randomized neural networks. Comprising of 15 chapters, Advanced Randomized Neural Networks for Pattern Analysis introduces systematic solutions for advanced data-dependent stochastic configuration networks, namely algorithms that assign random parameters and construct network structures incrementally. The book is segmented into three major sections — neural networks optimization, robust data analysis, and deep fusion learning — that feature the successful performance of advanced randomized neural networks in various pattern analysis problems. We anticipate that both researchers and engineers in the field of artificial neural networks, particularly pattern recognition and medical diagnosis, will find this book and the associated algorithms useful, and we hope that anyone with an interest in the related research field will find the book enjoyable and informative.
Preface
Neural Networks Optimization:
Decay Regularized Stochastic Configuration Network with Multi-Level Signal Processing
Regularized Stochastic Configuration Network Based on Weighted Mean of Vectors
Stochastic Configuration Networks with Group Lasso Regularization
Greedy Stochastic Configuration Networks for Ill-Posed Problems
Robust Data Analysis:
Intuitionistic Fuzzy Stochastic Configuration Networks
Weighted Deep Stochastic Configuration Networks Based on M-Estimator Functions
Noise Robust Regularized Deep Stochastic Configuration Networks
Robust Semi-Supervised Stochastic Configuration Network
Deep Fusion Learning:
Deep Stochastic Configuration Networks Ensemble via Hyper-Parameter Optimization
Deep Stochastic Configuration Networks Ensemble via Boosting Negative Correlation Learning
Ensemble Intuitionistic Fuzzy Deep Stochastic Configuration Network
Stacked Deep Stochastic Configuration Networks with Multi-Level Feature Fusion
Stochastic Configuration Network with Long Short-Term Memory Feature Embedding
Book Review and Future Work