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Learning Section Weights for Multi-Label Document Classification

Authors :
Fard, Maziar Moradi
Bayod, Paula Sorrolla
Motarjem, Kiomars
Nejadi, Mohammad Alian
Akhondi, Saber
Thorne, Camilo
Fard, Maziar Moradi
Bayod, Paula Sorrolla
Motarjem, Kiomars
Nejadi, Mohammad Alian
Akhondi, Saber
Thorne, Camilo
Publication Year :
2023

Abstract

Multi-label document classification is a traditional task in NLP. Compared to single-label classification, each document can be assigned multiple classes. This problem is crucially important in various domains, such as tagging scientific articles. Documents are often structured into several sections such as abstract and title. Current approaches treat different sections equally for multi-label classification. We argue that this is not a realistic assumption, leading to sub-optimal results. Instead, we propose a new method called Learning Section Weights (LSW), leveraging the contribution of each distinct section for multi-label classification. Via multiple feed-forward layers, LSW learns to assign weights to each section of, and incorporate the weights in the prediction. We demonstrate our approach on scientific articles. Experimental results on public (arXiv) and private (Elsevier) datasets confirm the superiority of LSW, compared to state-of-the-art multi-label document classification methods. In particular, LSW achieves a 1.3% improvement in terms of macro averaged F1-score while it achieves 1.3% in terms of macro averaged recall on the publicly available arXiv dataset.<br />Comment: 7 pages, 4 figures, 5 tables

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1438501962
Document Type :
Electronic Resource