DS1 spectrogram: In-context Learning and Induction Heads

In-context Learning and Induction Heads

2209.11895

Authors

Sam McCandlish,Chris Olah,Nelson Elhage,Nicholas Joseph,Nova DasSarma

Abstract

"Induction heads" are attention heads that implement a simple algorithm to complete token sequences like [A][B] ... [A] -> [B].

In this work, we present preliminary and indirect evidence for a hypothesis that induction heads might constitute the mechanism for the majority of all "in-context learning" in large transformer models (i.e. decreasing loss at increasing token indices).

We find that induction heads develop at precisely the same point as a sudden sharp increase in in-context learning ability, visible as a bump in the training loss. We present six complementary lines of evidence, arguing that induction heads may be the mechanistic source of general in-context learning in transformer models of any size.

For small attention-only models, we present strong, causal evidence; for larger models with MLPs, we present correlational evidence.

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