LGCLITMLJul 25, 2024

Transformers on Markov Data: Constant Depth Suffices

arXiv:2407.17686v132 citationsh-index: 12
Originality Incremental advance
AI Analysis

This provides insight into transformer mechanisms for capturing context, but it is incremental as it builds on prior work on Markov data and induction heads.

The paper tackles the problem of understanding how transformers learn context by studying their performance on data from k-th Markov processes, finding that a transformer with fixed depth and one head per layer can achieve low test loss and represent the in-context conditional empirical distribution, with theoretical results showing this is possible with as few as three layers.

Attention-based transformers have been remarkably successful at modeling generative processes across various domains and modalities. In this paper, we study the behavior of transformers on data drawn from \kth Markov processes, where the conditional distribution of the next symbol in a sequence depends on the previous $k$ symbols observed. We observe a surprising phenomenon empirically which contradicts previous findings: when trained for sufficiently long, a transformer with a fixed depth and $1$ head per layer is able to achieve low test loss on sequences drawn from \kth Markov sources, even as $k$ grows. Furthermore, this low test loss is achieved by the transformer's ability to represent and learn the in-context conditional empirical distribution. On the theoretical side, our main result is that a transformer with a single head and three layers can represent the in-context conditional empirical distribution for \kth Markov sources, concurring with our empirical observations. Along the way, we prove that \textit{attention-only} transformers with $O(\log_2(k))$ layers can represent the in-context conditional empirical distribution by composing induction heads to track the previous $k$ symbols in the sequence. These results provide more insight into our current understanding of the mechanisms by which transformers learn to capture context, by understanding their behavior on Markov sources.

Foundations

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