DS1 spectrogram: Learning without training: The implicit dynamics of in-context learning

Learning without training: The implicit dynamics of in-context learning

2507.16003

Authors

Benoit Dherin,Michael Munn,Hanna Mazzawi,Michael Wunder,Javier Gonzalvo

Abstract

One of the most striking features of Large Language Models (LLMs) is their ability to learn in-context. Namely at inference time an LLM is able to learn new patterns without any additional weight update when these patterns are presented in the form of examples in the prompt, even if these patterns were not seen during training.

The mechanisms through which this can happen are still largely unknown. In this work, we show that the stacking of a self-attention layer with an MLP, allows the transformer block to implicitly modify the weights of the MLP layer according to the context.

We argue through theory and experimentation that this simple mechanism may be the reason why LLMs can learn in-context and not only during training. Specifically, we show how a transformer block implicitly transforms a context into a low-rank weight-update of its MLP layer.

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