LGMLOct 15, 2019

Orthogonal Gradient Descent for Continual Learning

arXiv:1910.07104v1511 citations
Originality Incremental advance
AI Analysis

This method addresses the problem of catastrophic forgetting for neural networks in continual learning scenarios, representing an incremental improvement over existing approaches.

The paper tackles catastrophic forgetting in neural networks during continual learning by proposing Orthogonal Gradient Descent (OGD), which projects gradients to avoid forgetting previous tasks, and experiments show it effectively addresses this issue.

Neural networks are achieving state of the art and sometimes super-human performance on learning tasks across a variety of domains. Whenever these problems require learning in a continual or sequential manner, however, neural networks suffer from the problem of catastrophic forgetting; they forget how to solve previous tasks after being trained on a new task, despite having the essential capacity to solve both tasks if they were trained on both simultaneously. In this paper, we propose to address this issue from a parameter space perspective and study an approach to restrict the direction of the gradient updates to avoid forgetting previously-learned data. We present the Orthogonal Gradient Descent (OGD) method, which accomplishes this goal by projecting the gradients from new tasks onto a subspace in which the neural network output on previous task does not change and the projected gradient is still in a useful direction for learning the new task. Our approach utilizes the high capacity of a neural network more efficiently and does not require storing the previously learned data that might raise privacy concerns. Experiments on common benchmarks reveal the effectiveness of the proposed OGD method.

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