Incremental Online Learning of Randomized Neural Network with Forward Regularization
Junda Wang, Minghui Hu, Ning Li, Abdulaziz Al-Ali, Ponnuthurai, Nagaratnam Suganthan

TL;DR
This paper introduces a novel incremental online learning framework for Randomized Neural Networks, employing forward regularization to improve online learning speed, reduce forgetting, and enhance decision-making in dynamic environments.
Contribution
It proposes a new IOL framework with forward regularization for Randomized NN, offering better online learning performance and theoretical regret bounds compared to existing methods.
Findings
Forward regularization improves online learning speed.
Theoretical regret bounds demonstrate advantages of -F over -R.
Experimental results validate the effectiveness across tasks.
Abstract
Online learning of deep neural networks suffers from challenges such as hysteretic non-incremental updating, increasing memory usage, past retrospective retraining, and catastrophic forgetting. To alleviate these drawbacks and achieve progressive immediate decision-making, we propose a novel Incremental Online Learning (IOL) process of Randomized Neural Networks (Randomized NN), a framework facilitating continuous improvements to Randomized NN performance in restrictive online scenarios. Within the framework, we further introduce IOL with ridge regularization (-R) and IOL with forward regularization (-F). -R generates stepwise incremental updates without retrospective retraining and avoids catastrophic forgetting. Moreover, we substituted -R with -F as it enhanced precognition learning ability using semi-supervision and realized better online regrets to offline global experts compared…
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Taxonomy
TopicsMachine Learning and ELM · Face and Expression Recognition · Energy Efficient Wireless Sensor Networks
