Coherence Mechanisms for Provable Self-Improvement
Mehryar Mohri, Jon Schneider, Yifan Wu

TL;DR
This paper introduces a formal framework for self-improvement in AI systems based on coherence, providing theoretical guarantees for monotonic progress and establishing coherence as a necessary principle for provable enhancement.
Contribution
It formalizes coherence as a key principle for self-improvement, develops projection-based mechanisms with provable guarantees, and proves the necessity of coherence for universal improvement.
Findings
Mechanisms achieve monotonic expected Bregman divergence reduction.
Theoretical guarantees extend to non-realizable and empirical settings.
Coherence is shown to be a necessary structure for provable self-improvement.
Abstract
Self-improvement is a critical capability for large language models and other intelligent systems, enabling them to refine their behavior and internal consistency without external supervision. Despite its importance, prior approaches largely rely on empirical heuristics and lack formal guarantees. In this paper, we propose a principled framework for self-improvement based on the concept of \emph{coherence}, which requires that a model's outputs remain consistent under task-preserving transformations of the input. We formalize this concept using projection-based mechanisms that update a baseline model to be coherent while remaining as close as possible to its original behavior. We provide rigorous theoretical guarantees that these mechanisms achieve \emph{monotonic improvement}, measured by a reduction in expected Bregman divergence. Our analysis is comprehensive, covering both…
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Taxonomy
TopicsMachine Learning and Algorithms · Topic Modeling · Advanced Software Engineering Methodologies
