A novel focal-loss and class-weight-aware convolutional neural network for the classification of in-text citations

Author:

Aljohani Naif Radi1,Fayoumi Ayman1,Hassan Saeed-Ul2ORCID

Affiliation:

1. Faculty of Computing and Information Technology, King Abdulaziz University, Kingdom of Saudi Arabia, Jeddah, Saudi Arabia

2. Information Technology University, Lahore, Pakistan

Abstract

We argue that citations, as they have different reasons and functions, should not all be treated in the same way. Using the large, annotated dataset of about 10K citation contexts annotated by human experts, extracted from the Association for Computational Linguistics repository, we present a deep learning–based citation context classification architecture. Unlike all existing state-of-the-art feature-based citation classification models, our proposed convolutional neural network (CNN) with fastText-based pre-trained embedding vectors uses only the citation context as its input to outperform them in both binary- (important and non-important) and multi-class (Use, Extends, CompareOrContrast, Motivation, Background, Other) citation classification tasks. Furthermore, we propose using focal-loss and class-weight functions in the CNN model to overcome the inherited class imbalance issues in citation classification datasets. We show that using the focal-loss function with CNN adds a factor of [Formula: see text] to the cross-entropy function. Our model improves on the baseline results by achieving an encouraging 90.6 F1 score with 90.7% accuracy and a 72.3 F1 score with a 72.1% accuracy score, respectively, for binary- and multi-class citation classification tasks.

Funder

King Abdulaziz University

Publisher

SAGE Publications

Subject

Library and Information Sciences,Information Systems

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