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Neumann, Klaus: Reliability of Extreme Learning Machines. 2014
Inhalt
Abstract
Introduction
Random Projections and Extreme Learning Machines
Extreme Learning Machine
Improvements of the Extreme Learning Machine
Review of Random Projection Methods
Summary
Robustness to Initializations by Batch Intrinsic Plasticity
Reliability and Robustness to Initializations
Intrinsic Plasticity
Batch Intrinsic Plasticity: Methodology
BIP and Single Neuron Behavior
Experimental Results
Conclusive Remarks
Robustness to Drifts by Natural Intrinsic Plasticity
Reliability and Drift Compensation
Intrinsic Plasticity as Stochastic Gradient Descent
The Natural Gradient for Intrinsic Plasticity
Working-Point Transformation for IP
Experimental Results
Conclusive Remarks
Reliability via Continuous Constraints
Reliability via Continuous Constraints
Related Work
Embedding Discrete Constraints into ELMs
From Discrete to Continuous Constraints
Experimental Results
Conclusive Remarks
Reliable Control of the Bionic Handling Assistant
Controlling the Bionic Handling Assistant
Low-Level Control of the BHA
Learning the BHA Data Set
Models for the BHA Data Set
Experimental Results on the BHA Data Set
Experimental Results for Closed Loop Application
Conclusive Remarks
Stable Estimation of Dynamical Systems and Reliability
Reliable Estimation of Dynamical Systems
Neurally-Imprinted Stable Vector Fields
What is a good Lyapunov Candidate for Learning?
Experimental Results
Conclusive Remarks
Reliable Learning of the Ultrasonic Softening Effect
Ultrasonic Softening with Application to Copper Bonding
Copper Wire Deformation by Ultrasonic Softening
Data-Driven Modeling with Integration of Prior Knowledge
Experimental Results
Conclusive Remarks
Conclusion
Appendix
Related References by the Author
Proof of the Proposition in Eq. (5.14)
References