AICLJun 17, 2024

Bias in Text Embedding Models

arXiv:2406.12138v11 citations
Originality Synthesis-oriented
AI Analysis

This highlights a critical issue for businesses using text embedding technology, as it reveals pervasive but inconsistent gender biases that could impact applications.

The paper investigates gender bias in popular text embedding models by analyzing their associations of professions with gendered terms, finding that models exhibit varying degrees and patterns of bias, such as linking 'nurse' to female and 'CEO' to male identifiers.

Text embedding is becoming an increasingly popular AI methodology, especially among businesses, yet the potential of text embedding models to be biased is not well understood. This paper examines the degree to which a selection of popular text embedding models are biased, particularly along gendered dimensions. More specifically, this paper studies the degree to which these models associate a list of given professions with gendered terms. The analysis reveals that text embedding models are prone to gendered biases but in varying ways. Although there are certain inter-model commonalities, for instance, greater association of professions like nurse, homemaker, and socialite with female identifiers, and greater association of professions like CEO, manager, and boss with male identifiers, not all models make the same gendered associations for each occupation. Furthermore, the magnitude and directionality of bias can also vary on a model-by-model basis and depend on the particular words models are prompted with. This paper demonstrates that gender bias afflicts text embedding models and suggests that businesses using this technology need to be mindful of the specific dimensions of this problem.

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