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Main Authors: Zhang, Jingshen, Wang, Bo, Yang, Boci, Zhao, Dongming, He, Ruifang, Hou, Yuexian, Yu, Zifei
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2606.00600
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author Zhang, Jingshen
Wang, Bo
Yang, Boci
Zhao, Dongming
He, Ruifang
Hou, Yuexian
Yu, Zifei
author_facet Zhang, Jingshen
Wang, Bo
Yang, Boci
Zhao, Dongming
He, Ruifang
Hou, Yuexian
Yu, Zifei
contents While the emergent self-reflection capabilities of Large Language Models (LLMs) offer a promising paradigm for autonomous bias mitigation, their internal mechanics remain unclear, raising concerns regarding potential bias entrenchment. Under the premise that social bias is intrinsically encoded as valence inclinations, where the exacerbation of bias scales with sharper valence fluctuations across social groups, this paper proposes ReBias-Lens, a probing framework designed to interpret how self-reflection reconfigures these biased attitude associations through the lens of valence projection within intersectional contexts. Central to ReBias-Lens is the metric of Valence Fluctuation (VF) comprising two variants: Global-VF, which captures macroscopic valence encoding trends, and Local-VF, which scrutinizes microscopic distinctiveness across specific social categories. Deploying ReBias-Lens to evaluate four LLMs across twelve social categories reveals that overall valence fluctuations undergo a distinct layer-wise smoothing, characterized by a significant hierarchical representation divergence as the layers deepen, which ultimately manifests as a widespread mitigation of bias at the behavioral level. In stark contrast to this macro-level reduction, this reflection mechanism is not universally corrective, instead exhibiting a stubborn, category-specific selectivity that regularly locks in and perversely amplifies localized biases. Warning: this paper contains examples with biased content.
format Preprint
id arxiv_https___arxiv_org_abs_2606_00600
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Understanding the Self-Reflection Mechanisms of LLMs through Biased Attitude Associations
Zhang, Jingshen
Wang, Bo
Yang, Boci
Zhao, Dongming
He, Ruifang
Hou, Yuexian
Yu, Zifei
Social and Information Networks
While the emergent self-reflection capabilities of Large Language Models (LLMs) offer a promising paradigm for autonomous bias mitigation, their internal mechanics remain unclear, raising concerns regarding potential bias entrenchment. Under the premise that social bias is intrinsically encoded as valence inclinations, where the exacerbation of bias scales with sharper valence fluctuations across social groups, this paper proposes ReBias-Lens, a probing framework designed to interpret how self-reflection reconfigures these biased attitude associations through the lens of valence projection within intersectional contexts. Central to ReBias-Lens is the metric of Valence Fluctuation (VF) comprising two variants: Global-VF, which captures macroscopic valence encoding trends, and Local-VF, which scrutinizes microscopic distinctiveness across specific social categories. Deploying ReBias-Lens to evaluate four LLMs across twelve social categories reveals that overall valence fluctuations undergo a distinct layer-wise smoothing, characterized by a significant hierarchical representation divergence as the layers deepen, which ultimately manifests as a widespread mitigation of bias at the behavioral level. In stark contrast to this macro-level reduction, this reflection mechanism is not universally corrective, instead exhibiting a stubborn, category-specific selectivity that regularly locks in and perversely amplifies localized biases. Warning: this paper contains examples with biased content.
title Understanding the Self-Reflection Mechanisms of LLMs through Biased Attitude Associations
topic Social and Information Networks
url https://arxiv.org/abs/2606.00600