English

A General Framework for Implicit and Explicit Debiasing of Distributional Word Vector Spaces

Computation and Language 2020-01-06 v2 Artificial Intelligence

Abstract

Distributional word vectors have recently been shown to encode many of the human biases, most notably gender and racial biases, and models for attenuating such biases have consequently been proposed. However, existing models and studies (1) operate on under-specified and mutually differing bias definitions, (2) are tailored for a particular bias (e.g., gender bias) and (3) have been evaluated inconsistently and non-rigorously. In this work, we introduce a general framework for debiasing word embeddings. We operationalize the definition of a bias by discerning two types of bias specification: explicit and implicit. We then propose three debiasing models that operate on explicit or implicit bias specifications and that can be composed towards more robust debiasing. Finally, we devise a full-fledged evaluation framework in which we couple existing bias metrics with newly proposed ones. Experimental findings across three embedding methods suggest that the proposed debiasing models are robust and widely applicable: they often completely remove the bias both implicitly and explicitly without degradation of semantic information encoded in any of the input distributional spaces. Moreover, we successfully transfer debiasing models, by means of cross-lingual embedding spaces, and remove or attenuate biases in distributional word vector spaces of languages that lack readily available bias specifications.

Keywords

Cite

@article{arxiv.1909.06092,
  title  = {A General Framework for Implicit and Explicit Debiasing of Distributional Word Vector Spaces},
  author = {Anne Lauscher and Goran Glavaš and Simone Paolo Ponzetto and Ivan Vulić},
  journal= {arXiv preprint arXiv:1909.06092},
  year   = {2020}
}

Comments

AAAI 2020

R2 v1 2026-06-23T11:14:19.358Z