Identifying and Mitigating Gender Bias in Hyperbolic Word Embeddings
Kumar, Vaibhav, Bhotia, Tenzin Singhay, Kumar, Vaibhav, Chakraborty, Tanmoy
–arXiv.org Artificial Intelligence
Euclidean word embedding models such as GloVe and Word2Vec have been shown to reflect human-like gender biases. In this paper, we extend the study of gender bias to the recently popularized hyperbolic word embeddings. We propose gyrocosine bias, a novel measure for quantifying gender bias in hyperbolic word representations and observe a significant presence of gender bias. To address this problem, we propose Poincar\'e Gender Debias (PGD), a novel debiasing procedure for hyperbolic word representations. Experiments on a suit of evaluation tests show that PGD effectively reduces bias while adding a minimal semantic offset.
arXiv.org Artificial Intelligence
Sep-28-2021