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Main Authors: Zhao, Yachao, Wang, Bo, Wang, Yan, Zhao, Dongming, He, Ruifang, Hou, Yuexian
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2501.02295
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author Zhao, Yachao
Wang, Bo
Wang, Yan
Zhao, Dongming
He, Ruifang
Hou, Yuexian
author_facet Zhao, Yachao
Wang, Bo
Wang, Yan
Zhao, Dongming
He, Ruifang
Hou, Yuexian
contents Large Language Models (LLMs) have been shown to exhibit various biases and stereotypes in their generated content. While extensive research has investigated biases in LLMs, prior work has predominantly focused on explicit bias, with minimal attention to implicit bias and the relation between these two forms of bias. This paper presents a systematic framework grounded in social psychology theories to investigate and compare explicit and implicit biases in LLMs. We propose a novel self-reflection-based evaluation framework that operates in two phases: first measuring implicit bias through simulated psychological assessment methods, then evaluating explicit bias by prompting LLMs to analyze their own generated content. Through extensive experiments on advanced LLMs across multiple social dimensions, we demonstrate that LLMs exhibit a substantial inconsistency between explicit and implicit biases: while explicit bias manifests as mild stereotypes, implicit bias exhibits strong stereotypes. We further investigate the underlying factors contributing to this explicit-implicit bias inconsistency, examining the effects of training data scale, model size, and alignment techniques. Experimental results indicate that while explicit bias declines with increased training data and model size, implicit bias exhibits a contrasting upward trend. Moreover, contemporary alignment methods effectively suppress explicit bias but show limited efficacy in mitigating implicit bias.
format Preprint
id arxiv_https___arxiv_org_abs_2501_02295
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Explicit vs. Implicit: Investigating Social Bias in Large Language Models through Self-Reflection
Zhao, Yachao
Wang, Bo
Wang, Yan
Zhao, Dongming
He, Ruifang
Hou, Yuexian
Computation and Language
Large Language Models (LLMs) have been shown to exhibit various biases and stereotypes in their generated content. While extensive research has investigated biases in LLMs, prior work has predominantly focused on explicit bias, with minimal attention to implicit bias and the relation between these two forms of bias. This paper presents a systematic framework grounded in social psychology theories to investigate and compare explicit and implicit biases in LLMs. We propose a novel self-reflection-based evaluation framework that operates in two phases: first measuring implicit bias through simulated psychological assessment methods, then evaluating explicit bias by prompting LLMs to analyze their own generated content. Through extensive experiments on advanced LLMs across multiple social dimensions, we demonstrate that LLMs exhibit a substantial inconsistency between explicit and implicit biases: while explicit bias manifests as mild stereotypes, implicit bias exhibits strong stereotypes. We further investigate the underlying factors contributing to this explicit-implicit bias inconsistency, examining the effects of training data scale, model size, and alignment techniques. Experimental results indicate that while explicit bias declines with increased training data and model size, implicit bias exhibits a contrasting upward trend. Moreover, contemporary alignment methods effectively suppress explicit bias but show limited efficacy in mitigating implicit bias.
title Explicit vs. Implicit: Investigating Social Bias in Large Language Models through Self-Reflection
topic Computation and Language
url https://arxiv.org/abs/2501.02295