LGAIDCITMANov 17, 2025

On the Fundamental Limits of LLMs at Scale

arXiv:2511.12869v114 citationsh-index: 19
Originality Highly original
AI Analysis

This work addresses foundational limits for AI researchers and practitioners, providing a rigorous synthesis to guide scaling efforts, but it is incremental as it builds on existing empirical surveys with new theoretical insights.

This paper tackles the problem of fundamental limitations in scaling Large Language Models (LLMs), such as hallucination and reasoning degradation, by presenting a unified theoretical framework that proves these issues have innate ceilings due to computability, information theory, and geometric constraints, with results including irreducible error from diagonalization and bounded accuracy from finite description length.

Large Language Models (LLMs) have benefited enormously from scaling, yet these gains are bounded by five fundamental limitations: (1) hallucination, (2) context compression, (3) reasoning degradation, (4) retrieval fragility, and (5) multimodal misalignment. While existing surveys describe these phenomena empirically, they lack a rigorous theoretical synthesis connecting them to the foundational limits of computation, information, and learning. This work closes that gap by presenting a unified, proof-informed framework that formalizes the innate theoretical ceilings of LLM scaling. First, computability and uncomputability imply an irreducible residue of error: for any computably enumerable model family, diagonalization guarantees inputs on which some model must fail, and undecidable queries (e.g., halting-style tasks) induce infinite failure sets for all computable predictors. Second, information-theoretic and statistical constraints bound attainable accuracy even on decidable tasks, finite description length enforces compression error, and long-tail factual knowledge requires prohibitive sample complexity. Third, geometric and computational effects compress long contexts far below their nominal size due to positional under-training, encoding attenuation, and softmax crowding. We further show how likelihood-based training favors pattern completion over inference, how retrieval under token limits suffers from semantic drift and coupling noise, and how multimodal scaling inherits shallow cross-modal alignment. Across sections, we pair theorems and empirical evidence to outline where scaling helps, where it saturates, and where it cannot progress, providing both theoretical foundations and practical mitigation paths like bounded-oracle retrieval, positional curricula, and sparse or hierarchical attention.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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