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Towards Robust Low-Resource Fine-Tuning with Multi-View Compressed Representations

Published 16 Nov 2022 in cs.CL, cs.AI, and cs.LG | (2211.08794v4)

Abstract: Due to the huge amount of parameters, fine-tuning of pretrained LLMs (PLMs) is prone to overfitting in the low resource scenarios. In this work, we present a novel method that operates on the hidden representations of a PLM to reduce overfitting. During fine-tuning, our method inserts random autoencoders between the hidden layers of a PLM, which transform activations from the previous layers into multi-view compressed representations before feeding them into the upper layers. The autoencoders are plugged out after fine-tuning, so our method does not add extra parameters or increase computation cost during inference. Our method demonstrates promising performance improvement across a wide range of sequence- and token-level low-resource NLP tasks.

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