[2603.23821] Perturbation: A simple and efficient adversarial tracer for representation learning in language models

[2603.23821] Perturbation: A simple and efficient adversarial tracer for representation learning in language models

arXiv - Machine Learning 3 min read

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Abstract page for arXiv paper 2603.23821: Perturbation: A simple and efficient adversarial tracer for representation learning in language models

Computer Science > Computation and Language arXiv:2603.23821 (cs) [Submitted on 25 Mar 2026] Title:Perturbation: A simple and efficient adversarial tracer for representation learning in language models Authors:Joshua Rozner, Cory Shain View a PDF of the paper titled Perturbation: A simple and efficient adversarial tracer for representation learning in language models, by Joshua Rozner and Cory Shain View PDF Abstract:Linguistic representation learning in deep neural language models (LMs) has been studied for decades, for both practical and theoretical reasons. However, finding representations in LMs remains an unsolved problem, in part due to a dilemma between enforcing implausible constraints on representations (e.g., linearity; Arora et al. 2024) and trivializing the notion of representation altogether (Sutter et al., 2025). Here we escape this dilemma by reconceptualizing representations not as patterns of activation but as conduits for learning. Our approach is simple: we perturb an LM by fine-tuning it on a single adversarial example and measure how this perturbation ``infects'' other examples. Perturbation makes no geometric assumptions, and unlike other methods, it does not find representations where it should not (e.g., in untrained LMs). But in trained LMs, perturbation reveals structured transfer at multiple linguistic grain sizes, suggesting that LMs both generalize along representational lines and acquire linguistic abstractions from experience alone. Subjects:...

Originally published on March 26, 2026. Curated by AI News.

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