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SMoA: Sparse Mixture of Adapters to Mitigate Multiple Dataset Biases

Authors :
Liu, Yanchen
Yan, Jing
Chen, Yan
Liu, Jing
Wu, Hua
Publication Year :
2023

Abstract

Recent studies reveal that various biases exist in different NLP tasks, and over-reliance on biases results in models' poor generalization ability and low adversarial robustness. To mitigate datasets biases, previous works propose lots of debiasing techniques to tackle specific biases, which perform well on respective adversarial sets but fail to mitigate other biases. In this paper, we propose a new debiasing method Sparse Mixture-of-Adapters (SMoA), which can mitigate multiple dataset biases effectively and efficiently. Experiments on Natural Language Inference and Paraphrase Identification tasks demonstrate that SMoA outperforms full-finetuning, adapter tuning baselines, and prior strong debiasing methods. Further analysis indicates the interpretability of SMoA that sub-adapter can capture specific pattern from the training data and specialize to handle specific bias.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2302.14413
Document Type :
Working Paper