CLNov 1, 2023

IBADR: an Iterative Bias-Aware Dataset Refinement Framework for Debiasing NLU models

arXiv:2311.00292v1132 citationsh-index: 8
Originality Highly original
AI Analysis

This addresses bias in NLU models for AI fairness, offering a novel automated approach that is compatible with existing methods.

The paper tackles the problem of debiasing natural language understanding models without predefining biased features by proposing IBADR, an iterative framework that generates pseudo samples to reduce bias, achieving state-of-the-art results on two NLU tasks.

As commonly-used methods for debiasing natural language understanding (NLU) models, dataset refinement approaches heavily rely on manual data analysis, and thus maybe unable to cover all the potential biased features. In this paper, we propose IBADR, an Iterative Bias-Aware Dataset Refinement framework, which debiases NLU models without predefining biased features. We maintain an iteratively expanded sample pool. Specifically, at each iteration, we first train a shallow model to quantify the bias degree of samples in the pool. Then, we pair each sample with a bias indicator representing its bias degree, and use these extended samples to train a sample generator. In this way, this generator can effectively learn the correspondence relationship between bias indicators and samples. Furthermore, we employ the generator to produce pseudo samples with fewer biased features by feeding specific bias indicators. Finally, we incorporate the generated pseudo samples into the pool. Experimental results and in-depth analyses on two NLU tasks show that IBADR not only significantly outperforms existing dataset refinement approaches, achieving SOTA, but also is compatible with model-centric methods.

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