CLNov 6, 2024

The Root Shapes the Fruit: On the Persistence of Gender-Exclusive Harms in Aligned Language Models

arXiv:2411.03700v28 citationsh-index: 10FAccT
Originality Incremental advance
AI Analysis

This addresses the problem of underrepresented harms in AI alignment for gender-diverse communities, though it is incremental in focusing on a specific bias type.

The study investigated whether alignment techniques like Direct Preference Optimization (DPO) perpetuate harmful biases against gender-diverse identities in language models, finding that DPO-aligned models can amplify stigmatization and gender non-affirmative language from base models across 16 evaluated models.

Natural-language assistants are designed to provide users with helpful responses while avoiding harmful outputs, largely achieved through alignment to human preferences. Yet there is limited understanding of whether alignment techniques may inadvertently perpetuate or even amplify harmful biases inherited from their pre-aligned base models. This issue is compounded by the choice of bias evaluation benchmarks in popular preference-finetuned models, which predominantly focus on dominant social categories, such as binary gender, thereby limiting insights into biases affecting underrepresented groups. Towards addressing this gap, we center transgender, nonbinary, and other gender-diverse identities to investigate how alignment procedures interact with pre-existing gender-diverse bias in LLMs. Our key contributions include: 1) a comprehensive survey of bias evaluation modalities across leading preference-finetuned LLMs, highlighting critical gaps in gender-diverse representation, 2) systematic evaluation of gender-diverse biases across 16 models spanning Direct Preference Optimization (DPO) stages, uncovering harms popular bias benchmarks fail to detect, and 3) a flexible framework for measuring harmful biases in implicit reward signals applicable to other social contexts. Our findings reveal that DPO-aligned models are particularly sensitive to supervised finetuning (SFT), and can amplify two forms of real-world gender-diverse harms from their base models: stigmatization and gender non-affirmative language. We conclude with recommendations tailored to DPO and broader alignment practices, advocating for the adoption of community-informed bias evaluation frameworks to more effectively identify and address underrepresented harms in LLMs.

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