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Auteurs principaux: Abdelwahab, Mohamed, Collins, Michelle Yu, Chen, Sihan, Zhao, Yi Cheng, Mahmood, Zafarullah, Zhu, Jiading, Ali, Soliman, Rose, Jonathan
Format: Preprint
Publié: 2026
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Accès en ligne:https://arxiv.org/abs/2605.28823
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author Abdelwahab, Mohamed
Collins, Michelle Yu
Chen, Sihan
Zhao, Yi Cheng
Mahmood, Zafarullah
Zhu, Jiading
Ali, Soliman
Rose, Jonathan
author_facet Abdelwahab, Mohamed
Collins, Michelle Yu
Chen, Sihan
Zhao, Yi Cheng
Mahmood, Zafarullah
Zhu, Jiading
Ali, Soliman
Rose, Jonathan
contents As the influence of LLMs expands, it is imperative to gain insight into their decisions. One way to do that is to develop probes that detect the presence or absence of a broad set of concepts within the embeddings computed in an LLM - which is what we might say a model is "thinking" about. Such probes should be low-cost and easily applicable to any LLM, so that monitoring for many concepts is possible during normal operation. In this paper, we take the first steps towards developing the capability of creating many such probes by defining and executing examples of the key tasks needed: first, the careful delineation of a concept through the creation of a dataset with the concept both present and then absent. Then, the training and testing of a set of linear probes to detect the concept on any layer of an LLM, including an exploration of the complexity of the probe needed. Finally, we show that such probes can track concepts across larger contexts. This is done with four separate concepts and three different LLMs. When this process is scaled to many more concepts, it will create the ability to easily monitor new models.
format Preprint
id arxiv_https___arxiv_org_abs_2605_28823
institution arXiv
publishDate 2026
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spellingShingle What are They Thinking? Delineation, Probing and Tracking of Concepts in LLMs
Abdelwahab, Mohamed
Collins, Michelle Yu
Chen, Sihan
Zhao, Yi Cheng
Mahmood, Zafarullah
Zhu, Jiading
Ali, Soliman
Rose, Jonathan
Computation and Language
As the influence of LLMs expands, it is imperative to gain insight into their decisions. One way to do that is to develop probes that detect the presence or absence of a broad set of concepts within the embeddings computed in an LLM - which is what we might say a model is "thinking" about. Such probes should be low-cost and easily applicable to any LLM, so that monitoring for many concepts is possible during normal operation. In this paper, we take the first steps towards developing the capability of creating many such probes by defining and executing examples of the key tasks needed: first, the careful delineation of a concept through the creation of a dataset with the concept both present and then absent. Then, the training and testing of a set of linear probes to detect the concept on any layer of an LLM, including an exploration of the complexity of the probe needed. Finally, we show that such probes can track concepts across larger contexts. This is done with four separate concepts and three different LLMs. When this process is scaled to many more concepts, it will create the ability to easily monitor new models.
title What are They Thinking? Delineation, Probing and Tracking of Concepts in LLMs
topic Computation and Language
url https://arxiv.org/abs/2605.28823