CVJan 19, 2018

Piggyback: Adapting a Single Network to Multiple Tasks by Learning to Mask Weights

arXiv:1801.06519v2270 citationsHas Code
Originality Highly original
AI Analysis

This addresses the issue of catastrophic forgetting and task competition in multi-task learning for AI practitioners, offering a low-overhead solution.

The authors tackled the problem of adapting a single deep neural network to multiple tasks without degrading performance on previously learned tasks, achieving performance comparable to dedicated fine-tuned networks across various classification tasks and network architectures.

This work presents a method for adapting a single, fixed deep neural network to multiple tasks without affecting performance on already learned tasks. By building upon ideas from network quantization and pruning, we learn binary masks that piggyback on an existing network, or are applied to unmodified weights of that network to provide good performance on a new task. These masks are learned in an end-to-end differentiable fashion, and incur a low overhead of 1 bit per network parameter, per task. Even though the underlying network is fixed, the ability to mask individual weights allows for the learning of a large number of filters. We show performance comparable to dedicated fine-tuned networks for a variety of classification tasks, including those with large domain shifts from the initial task (ImageNet), and a variety of network architectures. Unlike prior work, we do not suffer from catastrophic forgetting or competition between tasks, and our performance is agnostic to task ordering. Code available at https://github.com/arunmallya/piggyback.

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