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On the Limits of Self-Improving in Large Language Models: The Singularity Is Not Near Without Symbolic Model Synthesis

The paper argues that self-improvement in large language models is not near-term without incorporating symbolic model synthesis. It contends that purely statistical learning is insufficient for robust, scalable self-improvement and highlights the need for symbolic reasoning and structured knowledge integration.

publié 28 AVR. 2026★★★★
Lire la sourcearxiv.org/html/2601.05280v2
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Lobsters
Ingéré
28 AVR. 2026 · 09:54
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4.0 / 5