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Type B Reflexivization as an Unambiguous Testbed for Multilingual Multi-Task Gender Bias (2009.11982v2)

Published 24 Sep 2020 in cs.CL and cs.LG

Abstract: The one-sided focus on English in previous studies of gender bias in NLP misses out on opportunities in other languages: English challenge datasets such as GAP and WinoGender highlight model preferences that are "hallucinatory", e.g., disambiguating gender-ambiguous occurrences of 'doctor' as male doctors. We show that for languages with type B reflexivization, e.g., Swedish and Russian, we can construct multi-task challenge datasets for detecting gender bias that lead to unambiguously wrong model predictions: In these languages, the direct translation of 'the doctor removed his mask' is not ambiguous between a coreferential reading and a disjoint reading. Instead, the coreferential reading requires a non-gendered pronoun, and the gendered, possessive pronouns are anti-reflexive. We present a multilingual, multi-task challenge dataset, which spans four languages and four NLP tasks and focuses only on this phenomenon. We find evidence for gender bias across all task-language combinations and correlate model bias with national labor market statistics.

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Authors (5)
  1. Ana Valeria Gonzalez (7 papers)
  2. Maria Barrett (9 papers)
  3. Rasmus Hvingelby (6 papers)
  4. Kellie Webster (14 papers)
  5. Anders Søgaard (120 papers)
Citations (25)