Continual Learning Challenges for Deep Neural Networks: Loss of Plasticity and Inability to Adapt Over Time
Deep learning methods based on gradient descent gradually lose plasticity and the ability to continually learn in dynamic environments, requiring additional techniques to maintain variability and adaptability.