The Complexity Ceiling Benchmark demonstrates geometric per-step decay in LLM sequential reasoning with domain-specific performance ceilings and introduces a trace metric showing incorrect intermediate steps in some correct final answers.
Thinking While Listening: Fast-Slow Recurrence for Long-Horizon Sequential Modeling
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abstract
We extend the recent latent recurrent modeling to sequential input streams. By interleaving fast, recurrent latent updates with self-organizational ability between slow observation updates, our method facilitates the learning of stable internal structures that evolve alongside the input. This mechanism allows the model to maintain coherent and clustered representations over long horizons, improving out-of-distribution generalization in reinforcement learning and algorithmic tasks compared to sequential baselines such as LSTM, state space models, and Transformer variants.
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cs.AI 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
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The Complexity Ceiling Benchmark: A Multi-Domain Evaluation of Sequential Reasoning Under Depth Scaling
The Complexity Ceiling Benchmark demonstrates geometric per-step decay in LLM sequential reasoning with domain-specific performance ceilings and introduces a trace metric showing incorrect intermediate steps in some correct final answers.