@inproceedings{guzman-etal-2024-towards,
title = "Towards Explainable Multi-Label Text Classification: A Multi-Task Rationalisation Framework for Identifying Indicators of Forced Labour",
author = "Guzman, Erick Mendez and
Schlegel, Viktor and
Batista-Navarro, Riza",
editor = "Dementieva, Daryna and
Ignat, Oana and
Jin, Zhijing and
Mihalcea, Rada and
Piatti, Giorgio and
Tetreault, Joel and
Wilson, Steven and
Zhao, Jieyu",
booktitle = "Proceedings of the Third Workshop on NLP for Positive Impact",
month = nov,
year = "2024",
address = "Miami, Florida, USA",
publisher = "Association for Computational Linguistics",
url = "https://preview.aclanthology.org/jlcl-multiple-ingestion/2024.nlp4pi-1.8/",
doi = "10.18653/v1/2024.nlp4pi-1.8",
pages = "98--112",
abstract = "The importance of rationales, or natural language explanations, lies in their capacity to bridge the gap between machine predictions and human understanding, by providing human-readable insights into why a text classifier makes specific decisions. This paper presents a novel multi-task rationalisation approach tailored to enhancing the explainability of multi-label text classifiers to identify indicators of forced labour. Our framework integrates a rationale extraction task with the classification objective and allows the inclusion of human explanations during training. We conduct extensive experiments using transformer-based models on a dataset consisting of 2,800 news articles, each annotated with labels and human-generated explanations. Our findings reveal a statistically significant difference between the best-performing architecture leveraging human rationales during training and variants using only labels. Specifically, the supervised model demonstrates a 10{\%} improvement in predictive performance measured by the weighted F1 score, a 15{\%} increase in the agreement between human and machine-generated rationales, and a 4{\%} improvement in the generated rationales' comprehensiveness. These results hold promising implications for addressing complex human rights issues with greater transparency and accountability using advanced NLP techniques."
}
Markdown (Informal)
[Towards Explainable Multi-Label Text Classification: A Multi-Task Rationalisation Framework for Identifying Indicators of Forced Labour](https://preview.aclanthology.org/jlcl-multiple-ingestion/2024.nlp4pi-1.8/) (Guzman et al., NLP4PI 2024)
ACL