Rationale-based learning using self-supervised narrative events for text summarisation of interactive digital narratives
Rationale-based learning using self-supervised narrative events for text summarisation of interactive digital narratives
This paper explores using rationale-based learning with supervised attention to focus the training of text summarisation models on words and sentences surrounding choice points for Interactive Digital Narratives (IDNs). IDNs allow players to interact with the story via choice points, making choices central to these narratives. Exploiting such knowledge about narrative structure during model training can help ensure key narrative information appears in generated summaries of narrative-based text and thus improve the quality of these summaries. We experiment with using word-level and sentence-level rationales indicating the proximity of words and sentences to self-supervised choice points. Our results indicate that rationale-based learning can improve the ability of attention-based text summarisation models to create higher quality summaries that encode key narrative information better for different playthroughs of the same interactive narrative. These results suggest a promising new direction for narrative-based text summarisation models.
Interactive Digital Narratives, Natural Language Processing, Text Summarization
13557–13585
Revi, Ashwathy T.
c252029f-823b-437b-8c5e-b67878474aa3
Middleton, Stuart E.
404b62ba-d77e-476b-9775-32645b04473f
Millard, David E.
4f19bca5-80dc-4533-a101-89a5a0e3b372
1 May 2024
Revi, Ashwathy T.
c252029f-823b-437b-8c5e-b67878474aa3
Middleton, Stuart E.
404b62ba-d77e-476b-9775-32645b04473f
Millard, David E.
4f19bca5-80dc-4533-a101-89a5a0e3b372
Revi, Ashwathy T., Middleton, Stuart E. and Millard, David E.
(2024)
Rationale-based learning using self-supervised narrative events for text summarisation of interactive digital narratives.
Calzolari, Nicoletta, Kan, Min-Yen, Hoste, Veronique, Lenci, Alessandro, Sakti, Sakriani and Xue, Nianwen
(eds.)
In Proceedings of the 2024 Joint International Conference on Computational Linguistics, Language Resources and Evaluation (LREC-COLING 2024).
.
Record type:
Conference or Workshop Item
(Paper)
Abstract
This paper explores using rationale-based learning with supervised attention to focus the training of text summarisation models on words and sentences surrounding choice points for Interactive Digital Narratives (IDNs). IDNs allow players to interact with the story via choice points, making choices central to these narratives. Exploiting such knowledge about narrative structure during model training can help ensure key narrative information appears in generated summaries of narrative-based text and thus improve the quality of these summaries. We experiment with using word-level and sentence-level rationales indicating the proximity of words and sentences to self-supervised choice points. Our results indicate that rationale-based learning can improve the ability of attention-based text summarisation models to create higher quality summaries that encode key narrative information better for different playthroughs of the same interactive narrative. These results suggest a promising new direction for narrative-based text summarisation models.
Text
Rationale_based_IDN_Summarisation
- Accepted Manuscript
Text
2024.lrec-main.1186
- Version of Record
More information
Published date: 1 May 2024
Venue - Dates:
2024 Joint International Conference on Computational Linguistics, Language Resources and Evaluation, , Torino, Italy, 2024-05-20 - 2024-05-25
Keywords:
Interactive Digital Narratives, Natural Language Processing, Text Summarization
Identifiers
Local EPrints ID: 491980
URI: http://eprints.soton.ac.uk/id/eprint/491980
PURE UUID: bb2b615a-885f-4f04-82d1-8b01690eac86
Catalogue record
Date deposited: 10 Jul 2024 16:31
Last modified: 12 Jul 2024 02:04
Export record
Contributors
Author:
Ashwathy T. Revi
Author:
David E. Millard
Editor:
Nicoletta Calzolari
Editor:
Min-Yen Kan
Editor:
Veronique Hoste
Editor:
Alessandro Lenci
Editor:
Sakriani Sakti
Editor:
Nianwen Xue
Download statistics
Downloads from ePrints over the past year. Other digital versions may also be available to download e.g. from the publisher's website.
View more statistics