English

Efficient Hierarchical Domain Adaptation for Pretrained Language Models

Computation and Language 2022-05-04 v2

Abstract

The remarkable success of large language models has been driven by dense models trained on massive unlabeled, unstructured corpora. These corpora typically contain text from diverse, heterogeneous sources, but information about the source of the text is rarely used during training. Transferring their knowledge to a target domain is typically done by continuing training in-domain. In this paper, we introduce a method to permit domain adaptation to many diverse domains using a computationally efficient adapter approach. Our method is based on the observation that textual domains are partially overlapping, and we represent domains as a hierarchical tree structure where each node in the tree is associated with a set of adapter weights. When combined with a frozen pretrained language model, this approach enables parameter sharing among related domains, while avoiding negative interference between unrelated ones. Experimental results with GPT-2 and a large fraction of the 100 most represented websites in C4 show across-the-board improvements in-domain. We additionally provide an inference time algorithm for a held-out domain and show that averaging over multiple paths through the tree enables further gains in generalization, while adding only a marginal cost to inference.

Keywords

Cite

@article{arxiv.2112.08786,
  title  = {Efficient Hierarchical Domain Adaptation for Pretrained Language Models},
  author = {Alexandra Chronopoulou and Matthew E. Peters and Jesse Dodge},
  journal= {arXiv preprint arXiv:2112.08786},
  year   = {2022}
}

Comments

NAACL 2022 accepted paper camera ready version

R2 v1 2026-06-24T08:20:07.873Z