CLCYLGJan 12, 2024

An investigation of structures responsible for gender bias in BERT and DistilBERT

arXiv:2401.06495v18 citationsh-index: 19IDA
Originality Incremental advance
AI Analysis

This addresses fairness issues in widely used language models, which is crucial for applications impacting daily lives, though it is incremental in exploring bias mechanisms.

The paper investigates the neural mechanisms responsible for gender bias in BERT and DistilBERT, finding that bias is uniformly encoded across attention heads rather than in specific layers, and that distillation leads to more homogeneous bias production in the compressed model.

In recent years, large Transformer-based Pre-trained Language Models (PLM) have changed the Natural Language Processing (NLP) landscape, by pushing the performance boundaries of the state-of-the-art on a wide variety of tasks. However, this performance gain goes along with an increase in complexity, and as a result, the size of such models (up to billions of parameters) represents a constraint for their deployment on embedded devices or short-inference time tasks. To cope with this situation, compressed models emerged (e.g. DistilBERT), democratizing their usage in a growing number of applications that impact our daily lives. A crucial issue is the fairness of the predictions made by both PLMs and their distilled counterparts. In this paper, we propose an empirical exploration of this problem by formalizing two questions: (1) Can we identify the neural mechanism(s) responsible for gender bias in BERT (and by extension DistilBERT)? (2) Does distillation tend to accentuate or mitigate gender bias (e.g. is DistilBERT more prone to gender bias than its uncompressed version, BERT)? Our findings are the following: (I) one cannot identify a specific layer that produces bias; (II) every attention head uniformly encodes bias; except in the context of underrepresented classes with a high imbalance of the sensitive attribute; (III) this subset of heads is different as we re-fine tune the network; (IV) bias is more homogeneously produced by the heads in the distilled model.

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