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Main Authors: Wang, Yujing, Liang, Yuanbang, Lai, Yukun, Zhang, Hainan, Yan, Hanqi
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2604.02830
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author Wang, Yujing
Liang, Yuanbang
Lai, Yukun
Zhang, Hainan
Yan, Hanqi
author_facet Wang, Yujing
Liang, Yuanbang
Lai, Yukun
Zhang, Hainan
Yan, Hanqi
contents Detecting whether a model's internal knowledge is sufficient to correctly answer a given question is a fundamental challenge in deploying responsible LLMs. In addition to verbalising the confidence by LLM self-report, more recent methods explore the model internals, such as the hidden states of the response tokens, to capture how much knowledge is activated. We argue that such activated knowledge may not align with what the query requires, e.g., capturing the stylistic and length-related features that are uninformative for answering the query. To fill the gap, we propose GRADE (Gradient Dynamics for knowledge gap detection), which quantifies the knowledge gap via the cross-layer rank ratio of the gradient to that of the corresponding hidden state subspace. This is motivated by the property of gradients as estimators of the required knowledge updates for a given target. We validate GRADE on six benchmarks, demonstrating its effectiveness and robustness to input perturbations. In addition, we present a case study showing how the gradient chain can generate interpretable explanations of knowledge gaps for long-form answers.
format Preprint
id arxiv_https___arxiv_org_abs_2604_02830
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle GRADE: Probing Knowledge Gaps in LLMs through Gradient Subspace Dynamics
Wang, Yujing
Liang, Yuanbang
Lai, Yukun
Zhang, Hainan
Yan, Hanqi
Computation and Language
Detecting whether a model's internal knowledge is sufficient to correctly answer a given question is a fundamental challenge in deploying responsible LLMs. In addition to verbalising the confidence by LLM self-report, more recent methods explore the model internals, such as the hidden states of the response tokens, to capture how much knowledge is activated. We argue that such activated knowledge may not align with what the query requires, e.g., capturing the stylistic and length-related features that are uninformative for answering the query. To fill the gap, we propose GRADE (Gradient Dynamics for knowledge gap detection), which quantifies the knowledge gap via the cross-layer rank ratio of the gradient to that of the corresponding hidden state subspace. This is motivated by the property of gradients as estimators of the required knowledge updates for a given target. We validate GRADE on six benchmarks, demonstrating its effectiveness and robustness to input perturbations. In addition, we present a case study showing how the gradient chain can generate interpretable explanations of knowledge gaps for long-form answers.
title GRADE: Probing Knowledge Gaps in LLMs through Gradient Subspace Dynamics
topic Computation and Language
url https://arxiv.org/abs/2604.02830