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Farewell to Aimless Large-scale Pretraining: Influential Subset Selection for Language Model

22 May 2023
Xiao Wang
Wei Zhou
Qi Zhang
Jie Zhou
Songyang Gao
Junzhe Wang
Menghan Zhang
Xiang Gao
Yunwen Chen
Tao Gui
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Abstract

Pretrained language models have achieved remarkable success in various natural language processing tasks. However, pretraining has recently shifted toward larger models and larger data, and this has resulted in significant computational and energy costs. In this paper, we propose Influence Subset Selection (ISS) for language model, which explicitly utilizes end-task knowledge to select a tiny subset of the pretraining corpus. Specifically, the ISS selects the samples that will provide the most positive influence on the performance of the end-task. Furthermore, we design a gradient matching based influence estimation method, which can drastically reduce the computation time of influence. With only 0.45% of the data and a three-orders-of-magnitude lower computational cost, ISS outperformed pretrained models (e.g., RoBERTa) on eight datasets covering four domains.

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