Evolving Deep Neural Networks for Continuous Learning

In Mina Farmanbar, Maria Tzamtzi, Ajit Kumar Verma & Antorweep Chakravorty (eds.), Frontiers of Artificial Intelligence, Ethics, and Multidisciplinary Applications: 1st International Conference on Frontiers of AI, Ethics, and Multidisciplinary Applications (FAIEMA), Greece, 2023. Springer Nature Singapore. pp. 3-16 (2024)
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Abstract

Continuous learning plays a crucial role in advancing the field of machine learning by addressing the challenges posed by evolving data and complex learning tasks. This paper presents a novel approach to address the challenges of continuous learning. Inspired by evolutionary strategies, the approach introduces perturbations to the weights and biases of a neural network while leveraging backpropagation. The method demonstrates stable or improved accuracy for the 12 scenarios investigated without catastrophic forgetting. The experiments were conducted on three benchmark datasets, MNIST, Fashion-MNIST, and CIFAR-10. Furthermore, different CNN models were used to evaluate the approach. The data was split considering stratified and non-stratified sampling and with and without a missing class. The approach adapts to the new class without compromising performance and offers scalability in real-world scenarios. Overall, it shows promise in maintaining accuracy and adapting to changing data conditions while retaining knowledge from previous tasks.

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