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Special Issue: Selected Papers from 15th IEEE International Conference on Semantic Computing (ICSC 2021); Guest Editors: D. D’Auria, R. Mertens, A. M. Panchea and J. RubartNo Access

Automatic Title Generation for Learning Resources and Pathways with Pre-trained Transformer Models

    https://doi.org/10.1142/S1793351X21400134Cited by:3 (Source: Crossref)

    To create curiosity and interest for a topic in online learning is a challenging task. A good preview that outlines the contents of a learning pathway could help learners know the topic and get interested in it. Towards this end, we propose a hierarchical title generation approach to generate semantically relevant titles for the learning resources in a learning pathway and a title for the pathway itself. Our approach to Automatic Title Generation for a given text is based on pre-trained Transformer Language Model GPT-2. A pool of candidate titles are generated and an appropriate title is selected among them which is then refined or de-noised to get the final title. The model is trained on research paper abstracts from arXiv and evaluated on three different test sets. We show that it generates semantically and syntactically relevant titles as reflected in ROUGE, BLEU scores and human evaluations. We propose an optional abstractive Summarizer module based on pre-trained Transformer model T5 to shorten medium length documents. This module is also trained and evaluated on research papers from arXiv dataset. Finally, we show that the proposed model of hierarchical title generation for learning pathways has promising results.