Randomized Neural Network with Adaptive Forward Regularization for Online Task-free Class Incremental Learning
Junda Wang, Minghui Hu, Ning Li, Abdulaziz Al-Ali, Ponnuthurai Nagaratnam Suganthan

TL;DR
This paper introduces a novel randomized neural network framework with adaptive regularization for online task-free class incremental learning, effectively reducing forgetting and improving learning in non-i.i.d. streaming scenarios.
Contribution
It proposes a new randomized neural network approach with adaptive forward regularization, including a Bayesian extension, to enhance online class incremental learning without replay.
Findings
Outperforms canonical ridge style in OTCIL scenarios
Effectively avoids catastrophic forgetting in long task streams
Demonstrates superior performance on image datasets with multiple metrics
Abstract
Class incremental learning (CIL) requires an agent to learn distinct tasks consecutively with knowledge retention against forgetting. Problems impeding the practical applications of CIL methods are twofold: (1) non-i.i.d batch streams and no boundary prompts to update, known as the harsher online task-free CIL (OTCIL) scenario; (2) CIL methods suffer from memory loss in learning long task streams, as shown in Fig. 1 (a). To achieve efficient decision-making and decrease cumulative regrets during the OTCIL process, a randomized neural network (Randomized NN) with forward regularization (-F) is proposed to resist forgetting and enhance learning performance. This general framework integrates unsupervised knowledge into recursive convex optimization, has no learning dissipation, and can outperform the canonical ridge style (-R) in OTCIL. Based on this framework, we derive the algorithm of…
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