cs.AI updates on arXiv.org 10月07日
隐式模型表达力与性能分析
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本文研究了隐式模型的表达力及其性能,通过非参数分析方法揭示了隐式模型通过迭代展现复杂映射的能力,并证明了其表达能力与测试时间计算量成正比,验证了理论在图像重建、科学计算和运筹学领域的有效性。

arXiv:2510.03638v1 Announce Type: cross Abstract: Implicit models, an emerging model class, compute outputs by iterating a single parameter block to a fixed point. This architecture realizes an infinite-depth, weight-tied network that trains with constant memory, significantly reducing memory needs for the same level of performance compared to explicit models. While it is empirically known that these compact models can often match or even exceed larger explicit networks by allocating more test-time compute, the underlying mechanism remains poorly understood. We study this gap through a nonparametric analysis of expressive power. We provide a strict mathematical characterization, showing that a simple and regular implicit operator can, through iteration, progressively express more complex mappings. We prove that for a broad class of implicit models, this process lets the model's expressive power scale with test-time compute, ultimately matching a much richer function class. The theory is validated across three domains: image reconstruction, scientific computing, and operations research, demonstrating that as test-time iterations increase, the complexity of the learned mapping rises, while the solution quality simultaneously improves and stabilizes.

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隐式模型 表达力 性能分析 迭代计算 领域应用
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