While language embeddings have been shown to have stereotyping biases, how these biases affect downstream question answering (QA) models remains unexplored. We present UNQOVER, a general framework to probe and quantify biases through underspecified questions. We show that a naïve use of model scores can lead to incorrect bias estimates due to two forms of reasoning errors: positional dependence and question independence. We design a formalism that isolates the aforementioned errors. As case studies, we use this metric to analyze four important classes of stereotypes: gender, nationality, ethnicity, and religion. We probe five transformer-based QA models trained on two QA datasets, along with their underlying language models. Our broad study reveals that (1) all these models, with and without fine-tuning, have notable stereotyping biases in these classes; (2) larger models often have higher bias; and (3) the effect of fine-tuning on bias varies strongly with the dataset and the model size.
CITATION STYLE
Li, T., Khot, T., Khashabi, D., Sabharwal, A., & Srikumar, V. (2020). UNQOVERing stereotyping biases via underspecified questions. In Findings of the Association for Computational Linguistics Findings of ACL: EMNLP 2020 (pp. 3475–3489). Association for Computational Linguistics (ACL). https://doi.org/10.18653/v1/2020.findings-emnlp.311
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