English

Vector-Quantized Input-Contextualized Soft Prompts for Natural Language Understanding

Computation and Language 2022-10-25 v2

Abstract

Prompt Tuning has been largely successful as a parameter-efficient method of conditioning large-scale pre-trained language models to perform downstream tasks. Thus far, soft prompt tuning learns a fixed set of task-specific continuous vectors, i.e., soft tokens that remain static across the task samples. A fixed prompt, however, may not generalize well to the diverse kinds of inputs the task comprises. In order to address this, we propose Vector-quantized Input-contextualized Prompts (VIP) as an extension to the soft prompt tuning framework. VIP particularly focuses on two aspects -- contextual prompts that learns input-specific contextualization of the soft prompt tokens through a small-scale sentence encoder and quantized prompts that maps the contextualized prompts to a set of learnable codebook vectors through a Vector quantization network. On various language understanding tasks like SuperGLUE, QA, Relation classification, NER and NLI, VIP outperforms the soft prompt tuning (PT) baseline by an average margin of 1.19%. Further, our generalization studies show that VIP learns more robust prompt representations, surpassing PT by a margin of 0.6% - 5.3% on Out-of-domain QA and NLI tasks respectively, and by 0.75% on Multi-Task setup over 4 tasks spanning across 12 domains.

Keywords

Cite

@article{arxiv.2205.11024,
  title  = {Vector-Quantized Input-Contextualized Soft Prompts for Natural Language Understanding},
  author = {Rishabh Bhardwaj and Amrita Saha and Steven C. H. Hoi and Soujanya Poria},
  journal= {arXiv preprint arXiv:2205.11024},
  year   = {2022}
}

Comments

EMNLP 2022

R2 v1 2026-06-24T11:25:08.664Z