多层状态空间模型的表达能力与局限性研究 / On the Expressive Power and Limitations of Multi-Layer SSMs
1️⃣ 一句话总结
这篇论文研究发现,多层状态空间模型在处理组合任务时存在固有局限,但通过引入在线思维链技术可以显著提升其表达能力,使其达到与流式算法相当的水平,并揭示了模型深度、计算精度和思维链之间的权衡关系。
We study the expressive power and limitations of multi-layer state-space models (SSMs). First, we show that multi-layer SSMs face fundamental limitations in compositional tasks, revealing an inherent gap between SSMs and streaming models. Then, we examine the role of chain-of-thought (CoT), showing that offline CoT does not fundamentally increase the expressiveness, while online CoT can substantially increase its power. Indeed, with online CoT, multi-layer SSMs become equivalent in power to streaming algorithms. Finally, we investigate the tradeoff between width and precision, showing that these resources are not interchangeable in the base model, but admit a clean equivalence once online CoT is allowed. Overall, our results offer a unified perspective on how depth, finite precision, and CoT shape the power and limits of SSMs.
多层状态空间模型的表达能力与局限性研究 / On the Expressive Power and Limitations of Multi-Layer SSMs
这篇论文研究发现,多层状态空间模型在处理组合任务时存在固有局限,但通过引入在线思维链技术可以显著提升其表达能力,使其达到与流式算法相当的水平,并揭示了模型深度、计算精度和思维链之间的权衡关系。
源自 arXiv: 2604.14501