SCOPE is a new large-scale dataset of counterfactual prompt pairs for evaluating fairness and stereotype sensitivity in LLMs across 1,438 topics, nine bias dimensions, 1,536 groups, and four communicative intents.
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Sensitive prompts serve as an early-warning signal for fairness risks in LLMs by eliciting responses that often miss ethical or contextual implications.
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SCOPE: A Dataset of Stereotyped Prompts for Counterfactual Fairness Assessment of LLMs
SCOPE is a new large-scale dataset of counterfactual prompt pairs for evaluating fairness and stereotype sensitivity in LLMs across 1,438 topics, nine bias dimensions, 1,536 groups, and four communicative intents.
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Bias Ahead: Sensitive Prompts as Early Warnings for Fairness in Large Language Models
Sensitive prompts serve as an early-warning signal for fairness risks in LLMs by eliciting responses that often miss ethical or contextual implications.