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Supervised Contrastive Learning for Interpretable Long-Form Document Matching

Authors :
Akshita Jha
Vineeth Rakesh
Jaideep Chandrashekar
Adithya Samavedhi
Chandan K. Reddy
Source :
ACM Transactions on Knowledge Discovery from Data. 17:1-17
Publication Year :
2023
Publisher :
Association for Computing Machinery (ACM), 2023.

Abstract

Recent advancements in deep learning techniques have transformed the area of semantic text matching (STM). However, most state-of-the-art models are designed to operate with short documents such as tweets, user reviews, comments, and so on. These models have fundamental limitations when applied to long-form documents such as scientific papers, legal documents, and patents. When handling such long documents, there are three primary challenges: (i) the presence of different contexts for the same word throughout the document, (ii) small sections of contextually similar text between two documents, but dissimilar text in the remaining parts (this defies the basic understanding of “similarity”), and (iii) the coarse nature of a single global similarity measure which fails to capture the heterogeneity of the document content. In this article, we describe CoLDE : Co ntrastive L ong D ocument E ncoder—a transformer-based framework that addresses these challenges and allows for interpretable comparisons of long documents. CoLDE uses unique positional embeddings and a multi-headed chunkwise attention layer in conjunction with a supervised contrastive learning framework to capture similarity at three different levels: (i) high-level similarity scores between a pair of documents, (ii) similarity scores between different sections within and across documents, and (iii) similarity scores between different chunks in the same document and across other documents. These fine-grained similarity scores aid in better interpretability. We evaluate CoLDE on three long document datasets namely, ACL Anthology publications, Wikipedia articles, and USPTO patents. Besides outperforming the state-of-the-art methods on the document matching task, CoLDE is also robust to changes in document length and text perturbations and provides interpretable results. The code for the proposed model is publicly available at https://github.com/InterDigitalInc/CoLDE .

Details

ISSN :
1556472X and 15564681
Volume :
17
Database :
OpenAIRE
Journal :
ACM Transactions on Knowledge Discovery from Data
Accession number :
edsair.doi.dedup.....1822bbc21814e39af39af327f2b9463f