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WEFE: The Word Embeddings Fairness Evaluation Framework

Pablo Valdés-Badilla, Felipe Bravo-Márquez, Jorge Eduardo Pérez Pérez

202031 citationsDOIOpen Access PDF

Abstract

Word embeddings are known to exhibit stereotypical biases towards gender, race, religion, among other criteria. Severa fairness metrics have been proposed in order to automatically quantify these biases. Although all metrics have a similar objective, the relationship between them is by no means clear. Two issues that prevent a clean comparison is that they operate with different inputs, and that their outputs are incompatible with each other. In this paper we propose WEFE, the word embeddings fairness evaluation framework, to encapsulate, evaluate and compare fairness metrics. Our framework needs a list of pre-trained embeddings and a set of fairness criteria, and it is based on checking correlations between fairness rankings induced by these criteria. We conduct a case study showing that rankings produced by existing fairness methods tend to correlate when measuring gender bias. This correlation is considerably less for other biases like race or religion. We also compare the fairness rankings with an embedding benchmark showing that there is no clear correlation between fairness and good performance in downstream tasks.

Topics & Concepts

Fairness measureComputer scienceWord (group theory)Benchmark (surveying)Set (abstract data type)EmbeddingWord embeddingRace (biology)Artificial intelligenceMachine learningMathematicsGeographyThroughputBiologyProgramming languageWirelessBotanyGeometryGeodesyTelecommunicationsHate Speech and Cyberbullying DetectionSocial Media and PoliticsGender Politics and Representation