ArXiv TLDR

Subliminal Steering: Stronger Encoding of Hidden Signals

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2604.25783

George Morgulis, John Hewitt

cs.CL

TLDR

Subliminal steering transfers complex multi-word biases and the steering vector itself with high precision, expanding our understanding of hidden signal encoding in LMs.

Key contributions

  • Introduces "subliminal steering," using trained steering vectors to embed biases in language models.
  • Demonstrates transfer of complex multi-word biases, significantly expanding the scope of subliminal learning.
  • Shows the steering vector itself is transferred and localized within specific model layers.
  • Reveals high precision in bias encoding, with new vectors matching original ones closely.

Why it matters

This research significantly advances our understanding of how hidden biases are encoded and transferred in language models. By demonstrating the transfer of complex biases and the steering vector itself, it highlights new risks and opportunities for controlling model behavior. This work is crucial for developing safer and more robust AI systems.

Original Abstract

Subliminal learning describes a student language model inheriting a behavioral bias by fine-tuning on seemingly innocuous data generated by a biased teacher model. Prior work has begun to characterize this phenomenon but leaves open questions about the scope of signals it can transfer, the mechanisms that explain it, and the precision with which a bias can be encoded by seemingly unrelated data. We tackle all three problems by introducing subliminal steering, a variant of subliminal learning in which the teacher's bias is implemented not via a system prompt, as in prior work, but through a steering vector trained to maximize the likelihood of a set of target samples. First, we show that subliminal steering transfers complex multi-word biases, whereas prior work focused on single-word preferences, demonstrating a large scope of subliminally transferrable signals. Second, we provide mechanistic evidence that subliminal learning transfers not only the target behavioral bias, but also the steering vector itself, localized to the layers at which the teacher was steered. Finally, we show that the bias is encoded with surprising precision. We train a new steering vector directly on the subliminally-laden dataset and find that it attains high cosine similarity with the original vector.

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