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    Alfred M. Szmidt (amszmidt@mastodon.social)'s status on Thursday, 10-Apr-2025 04:16:09 JSTAlfred M. SzmidtAlfred M. Szmidt
    in reply to
    • Karsten Johansson

    @ksaj I wouldn’t even say it is a complex one .. big, yea. https://arxiv.org/abs/2410.02724

    In conversationabout 2 months ago from mastodon.socialpermalink

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    1. Domain not in remote thumbnail source whitelist: arxiv.org
      Large Language Models as Markov Chains
      Large language models (LLMs) have proven to be remarkably efficient, both across a wide range of natural language processing tasks and well beyond them. However, a comprehensive theoretical analysis of the origins of their impressive performance remains elusive. In this paper, we approach this challenging task by drawing an equivalence between generic autoregressive language models with vocabulary of size $T$ and context window of size $K$ and Markov chains defined on a finite state space of size $\mathcal{O}(T^K)$. We derive several surprising findings related to the existence of a stationary distribution of Markov chains that capture the inference power of LLMs, their speed of convergence to it, and the influence of the temperature on the latter. We then prove pre-training and in-context generalization bounds and show how the drawn equivalence allows us to enrich their interpretation. Finally, we illustrate our theoretical guarantees with experiments on several recent LLMs to highlight how they capture the behavior observed in practice.
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