Provably Overwhelming Transformer Models with Designed Inputs

Abstract

We develop an algorithm which, given a trained transformer model M as input, as well as a string of tokens s of length nfix and an integer nfree, can generate a mathematical proof that M is ``overwhelmed'' by s, in time and space O(nfix2 + nfree3). We say that M is ``overwhelmed'' by s when the output of the model evaluated on this string plus any additional string t, M(s + t), is completely insensitive to the value of the string t whenever length(t) ≤ nfree. Along the way, we prove a particularly strong worst-case form of ``over-squashing'', which we use to bound the model's behavior. Our technique uses computer-aided proofs to establish this type of operationally relevant guarantee about transformer models. We empirically test our algorithm on a single layer transformer complete with an attention head, layer-norm, MLP/ReLU layers, and RoPE positional encoding. We believe that this work is a stepping stone towards the difficult task of obtaining useful guarantees for trained transformer models.

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