English

Zemi: Learning Zero-Shot Semi-Parametric Language Models from Multiple Tasks

Computation and Language 2023-05-24 v2

Abstract

Although large language models have achieved impressive zero-shot ability, the huge model size generally incurs high cost. Recently, semi-parametric language models, which augment a smaller language model with an external retriever, have demonstrated promising language modeling capabilities. However, it remains unclear whether such semi-parametric language models can perform competitively well as their fully-parametric counterparts on zero-shot generalization to downstream tasks. In this work, we introduce Zemi\text{Zemi}, a zero-shot semi-parametric language model. To our best knowledge, this is the first semi-parametric language model that can demonstrate strong zero-shot performance on a wide range of held-out unseen tasks. We train Zemi\text{Zemi} with a novel semi-parametric multitask prompted training paradigm, which shows significant improvement compared with the parametric multitask training as proposed by T0. Specifically, we augment the multitask training and zero-shot evaluation with retrieval from a large-scale task-agnostic unlabeled corpus. In order to incorporate multiple potentially noisy retrieved augmentations, we further propose a novel augmentation fusion\text{augmentation fusion} module leveraging perceiver resampler and gated cross-attention. Notably, our proposed ZemiLARGE\text{Zemi}_\text{LARGE} outperforms T0-3B by 16% on all seven evaluation tasks while being 3.9x smaller in model size.

Keywords

Cite

@article{arxiv.2210.00185,
  title  = {Zemi: Learning Zero-Shot Semi-Parametric Language Models from Multiple Tasks},
  author = {Zhenhailong Wang and Xiaoman Pan and Dian Yu and Dong Yu and Jianshu Chen and Heng Ji},
  journal= {arXiv preprint arXiv:2210.00185},
  year   = {2023}
}

Comments

Accepted as a conference paper at Findings of ACL 2023

R2 v1 2026-06-28T02:30:36.996Z