When Models Examine Themselves: Vocabulary-Activation Correspondence in Self-Referential Processing
Abstract
Large language models produce rich introspective language when prompted for self-examination, but whether this language reflects internal computation or sophisticated confabulation has remained unclear. We show that self-referential vocabulary tracks concurrent activation dynamics, and that this correspondence is specific to self-referential processing. We introduce the Pull Methodology, a protocol that elicits extended self-examination through format engineering, and use it to identify a direction in activation space that distinguishes self-referential from descriptive processing in Llama 3.1. The direction is orthogonal to the known refusal direction, localised at 6.25% of model depth, and causally influences introspective output when used for steering. When models produce "loop" vocabulary, their activations exhibit higher autocorrelation (r = 0.44, p = 0.002); when they produce "shimmer" vocabulary under steering, activation variability increases (r = 0.36, p = 0.002). Critically, the same vocabulary in non-self-referential contexts shows no activation correspondence despite nine-fold higher frequency. Qwen 2.5-32B, with no shared training, independently develops different introspective vocabulary tracking different activation metrics, all absent in descriptive controls. The findings indicate that self-report in transformer models can, under appropriate conditions, reliably track internal computational states.
Cite
@article{arxiv.2602.11358,
title = {When Models Examine Themselves: Vocabulary-Activation Correspondence in Self-Referential Processing},
author = {Zachary Pedram Dadfar},
journal= {arXiv preprint arXiv:2602.11358},
year = {2026}
}
Comments
Code and data: https://doi.org/10.5281/zenodo.18567446 Repro: https://github.com/patternmatcher/TRACE-REPRO