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Improving Commonsense Bias Classification by Mitigating the Influence of Demographic Termsopen access

Authors
Lee, JinkyuKim, Jihie
Issue Date
Oct-2024
Publisher
IEEE
Keywords
Bias Mitigation; Commonsense Bias; Demograhpic Term; Hierarchical Generalizaton; Threshold-based Augmentation
Citation
IEEE Access, v.12, pp 161480 - 161489
Pages
10
Indexed
SCIE
SCOPUS
Journal Title
IEEE Access
Volume
12
Start Page
161480
End Page
161489
URI
https://scholarworks.dongguk.edu/handle/sw.dongguk/56163
DOI
10.1109/ACCESS.2024.3477599
ISSN
2169-3536
2169-3536
Abstract
Understanding commonsense knowledge is crucial in the field of Natural Language Processing (NLP). However, the presence of demographic terms in commonsense knowledge poses a potential risk of compromising the performance of NLP models. This study aims to investigate and propose methods for enhancing the performance and effectiveness of a commonsense polarization classifier by mitigating the influence of demographic terms. Three methods are introduced in this paper : (1) hierarchical generalization of demographic terms (2) threshold-based augmentation and (3) integration of hierarchical generalization and threshold-based augmentation methods(IHTA). The first method involves replacing demographic terms with more general ones based on a term hierarchy ontology, aiming to mitigate the influence of specific terms. To address the limited bias-related information, the second method measures the polarization of demographic terms by comparing the changes in the model's predictions when these terms are masked versus unmasked. This method augments commonsense sentences containing terms with high polarization values by replacing their predicates with synonyms generated by ChatGPT. The third method combines the two approaches, starting with threshold-based augmentation followed by hierarchical generalization. The experiments show that the first method increases the accuracy over the baseline by 2.33%, and the second one by 0.96% over standard augmentation methods. The IHTA techniques yielded an 8.82% and 9.96% higher accuracy than threshold-based and standard augmentation methods, respectively. © 2024 IEEE.
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