VAULT: VAriable Unified Long Text Representation for Machine Reading
Comprehension
- URL: http://arxiv.org/abs/2105.03229v1
- Date: Fri, 7 May 2021 13:03:43 GMT
- Title: VAULT: VAriable Unified Long Text Representation for Machine Reading
Comprehension
- Authors: Haoyang Wen, Anthony Ferritto, Heng Ji, Radu Florian, Avirup Sil
- Abstract summary: Existing models on Machine Reading require complex model architecture for modeling long texts with paragraph representation and classification.
We propose VAULT: a light-weight and parallel-efficient paragraph representation for MRC based on contextualized representation from long document input.
- Score: 31.639069657951747
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Existing models on Machine Reading Comprehension (MRC) require complex model
architecture for effectively modeling long texts with paragraph representation
and classification thereby, making inference computationally inefficient for
production use. In this work, we propose VAULT: a light-weight and
parallel-efficient paragraph representation for MRC based on contextualized
representation from long document input, trained using a new Gaussian
distribution-based objective that pays close attention to the partially correct
instances that are close to the ground-truth. We validate our VAULT
architecture showing experimental results on two benchmark MRC datasets that
require long context modeling; one Wikipedia-based (Natural Questions (NQ)) and
the other on TechNotes (TechQA). VAULT can achieve comparable performance on NQ
with a state-of-the-art (SOTA) complex document modeling approach while being
16 times more efficient. We also demonstrate that our model can also be
effectively adapted to a completely different domain -- TechQA -- with large
improvement over a model fine-tuned on a previously published large PLM.
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