LGAICVMLMar 20, 2019

Gradient based sample selection for online continual learning

arXiv:1903.08671v51021 citations
Originality Incremental advance
AI Analysis

This addresses the problem of forgetting in neural networks for continual learning agents, offering an incremental improvement over existing replay buffer methods.

The paper tackles catastrophic forgetting in online continual learning by formulating sample selection for replay buffers as a constraint reduction problem, showing it maximizes sample diversity using gradient features, and demonstrates comparable or better results than state-of-the-art methods that rely on task boundaries.

A continual learning agent learns online with a non-stationary and never-ending stream of data. The key to such learning process is to overcome the catastrophic forgetting of previously seen data, which is a well known problem of neural networks. To prevent forgetting, a replay buffer is usually employed to store the previous data for the purpose of rehearsal. Previous works often depend on task boundary and i.i.d. assumptions to properly select samples for the replay buffer. In this work, we formulate sample selection as a constraint reduction problem based on the constrained optimization view of continual learning. The goal is to select a fixed subset of constraints that best approximate the feasible region defined by the original constraints. We show that it is equivalent to maximizing the diversity of samples in the replay buffer with parameters gradient as the feature. We further develop a greedy alternative that is cheap and efficient. The advantage of the proposed method is demonstrated by comparing to other alternatives under the continual learning setting. Further comparisons are made against state of the art methods that rely on task boundaries which show comparable or even better results for our method.

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