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CLMSM: A Multi-Task Learning Framework for Pre-training on Procedural Text

CLMSM, a domain-specific continual pre-training framework using a Multi-Task Learning approach, enhances procedural understanding with contrastive learning and Mask-Step Modelling, outperforming baselines on recipes and generalizing to open-domain tasks.

Year
2023
Venue
arXiv 2023
Authors
4
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arxiv.org/abs/2310.14326ARXIV-DEFAULT
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Abstract

In this paper, we propose CLMSM, a domain-specific, continual pre-training framework, that learns from a large set of procedural recipes. CLMSM uses a Multi-Task Learning Framework to optimize two objectives - a) Contrastive Learning using hard triplets to learn fine-grained differences across entities in the procedures, and b) a novel Mask-Step Modelling objective to learn step-wise context of a procedure. We test the performance of CLMSM on the downstream tasks of tracking entities and aligning actions between two procedures on three datasets, one of which is an open-domain dataset not conforming with the pre-training dataset. We show that CLMSM not only outperforms baselines on recipes (in-domain) but is also able to generalize to open-domain procedural NLP tasks.

Authors

4