Evaluating Gender Bias in Pre-trained Filipino FastText Embeddings

Lance Calvin Gamboa, Maria Regina Justina Estuar

Research output: Chapter in Book/Report/Conference proceedingConference contribution

Abstract

Past studies show that word embeddings can learn gender biases introduced by human agents into the textual corpora used to train these models. However, it has also been shown that some non-English embeddings may actually not capture such biases in their word representations. This study, therefore, aimed to answer the question: Does the publicly available Filipino FastText word embedding contain gender bias? Various iterations of the Word Embedding Association Test and principal component analysis were conducted on the embedding to answer this question. Results show that the Tagalog FastText embedding not only represents gendered semantic information properly but also captures biases about masculinity and femininity collectively held by Filipinos. Specifically, the embedding most strongly associates the female with nouns pertaining to domestic and caregiving roles and the male with verbs relating to strength and their bodies. The study's findings can help determine what next steps need to be undertaken to reduce or eliminate bias from Filipino embeddings.
Original languageEnglish
Title of host publication2023 International Conference on IT Innovation and Knowledge Discovery (ITIKD)
PublisherIEEE
Number of pages7
ISBN (Electronic)9781665463720
ISBN (Print)9781665463737 (PoD)
DOIs
Publication statusPublished - 19 Apr 2023
Event2023 International Conference on IT Innovation and Knowledge Discovery - Manama, Bahrain
Duration: 8 Mar 20239 Mar 2023

Publication series

NameIT Innovation and Knowledge Discovery (ITIKD), International Conference on

Conference

Conference2023 International Conference on IT Innovation and Knowledge Discovery
Abbreviated titleITIKD-2023
Country/TerritoryBahrain
CityManama
Period8/03/239/03/23

Keywords

  • word embeddings
  • gender bias
  • Filipino
  • FastText
  • principal component analysis
  • language models

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