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Can Instruction Fine-Tuned Language Models Identify Social Bias through Prompting?

Published 19 Jul 2023 in cs.CL, cs.AI, cs.CY, and cs.LG | (2307.10472v1)

Abstract: As the breadth and depth of LLM applications continue to expand rapidly, it is increasingly important to build efficient frameworks for measuring and mitigating the learned or inherited social biases of these models. In this paper, we present our work on evaluating instruction fine-tuned LLMs' ability to identify bias through zero-shot prompting, including Chain-of-Thought (CoT) prompts. Across LLaMA and its two instruction fine-tuned versions, Alpaca 7B performs best on the bias identification task with an accuracy of 56.7%. We also demonstrate that scaling up LLM size and data diversity could lead to further performance gain. This is a work-in-progress presenting the first component of our bias mitigation framework. We will keep updating this work as we get more results.

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