LLM Reasoning 相关度: 9/10

Thinking with Drafting: Optical Decompression via Logical Reconstruction

Jingxuan Wei, Honghao He, Caijun Jia, Siyuan Li, Zheng Sun, Yuhang Xu, Yuanyuan Lin, Linzhuang Sun, Yuchen Wu, Bihui Yu, Xiangxiang Zhang, Cheng Tan
arXiv: 2602.11731v1 发布: 2026-02-12 更新: 2026-02-12

AI 摘要

论文提出Thinking with Drafting方法,通过领域特定语言连接视觉感知和逻辑推理,提高视觉推理的精确性。

主要贡献

  • 提出Thinking with Drafting (TwD)框架
  • 利用DSL作为中间表示,实现逻辑重建
  • 创建VisAlg视觉代数基准

方法论

TwD将视觉推理视为光解压过程,通过DSL将视觉输入转化为可执行代码,并生成视觉证明进行验证。

原文摘要

Existing multimodal large language models have achieved high-fidelity visual perception and exploratory visual generation. However, a precision paradox persists in complex reasoning tasks: optical perception systems transcribe symbols without capturing logical topology, while pixel-based generative models produce visual artifacts lacking mathematical exactness. To bridge this gap, we propose that reasoning over visual inputs be reconceptualized as optical decompression-the process of reconstructing latent logical structures from compressed visual tokens. Guided by the axiom that Parsing is Reasoning, we introduce Thinking with Drafting (TwD), which utilizes a minimalist Domain-Specific Language (DSL) as a grounding intermediate representation. Unlike standard approaches that hallucinate answers directly, TwD forces the model to draft its mental model into executable code, rendering deterministic visual proofs for self-verification. To validate this, we present VisAlg, a visual algebra benchmark. Experiments demonstrate that TwD serve as a superior cognitive scaffold. Our work establishes a closed-loop system where visual generation acts not as a creative output but as a logical verifier, offering a generalizable path for visual reasoning.

标签

Multimodal Learning Reasoning Visual Reasoning DSL

arXiv 分类

cs.CL