Zihao Dongfang
2026
Thinking Economically: A Hierarchical Framework for Adaptive-Complexity Reasoning in LLMs
Yubo Gao | Haotian Wu | Hong Chen | Junquan Huang | Yibo Yan | Jungang Li | Zihao Dongfang | Sicheng Tao | PS Tan | Jie Zhang | Xuming Hu
Findings of the Association for Computational Linguistics: ACL 2026
Yubo Gao | Haotian Wu | Hong Chen | Junquan Huang | Yibo Yan | Jungang Li | Zihao Dongfang | Sicheng Tao | PS Tan | Jie Zhang | Xuming Hu
Findings of the Association for Computational Linguistics: ACL 2026
Chain-of-Thought (CoT) has significantly enhanced LLM reasoning, yet often incurs substantial computational overhead due to “overthinking”: generating excessively long rationales without commensurate accuracy gains. Existing efficiency methods typically apply uniform compression, which overlooks a critical observation that reasoning complexity is heterogeneous at two distinct granularities: across different problems and within individual reasoning steps. This motivates our principle of Thinking Economically: intelligently allocating computational resources based on intrinsic task and step demands rather than pursuing uniform brevity. We propose Hierarchical Adaptive Budgeter (HAB), a training framework that operationalizes this principle through coarse-to-fine budgeting. At the inter-step level, HAB predicts the optimal reasoning depth for each problem. At the intra-step level, HAB learns step-specific token budgeting signals from PPL-derived step comparisons and an adaptive Pareto optimization objective that captures the local quality-efficiency trade-off, while a Fisher Information-based pruner further provides fine-grained training-time guidance, thereby encouraging the generator to internalize more economical reasoning patterns. Experiments on GSM8K and MATH500 show that HAB not only surpasses standard CoT in accuracy but also reduces token usage, achieving a stronger performance-efficiency trade-off than the compared baselines.
2025
PhysicsArena: The First Multimodal Physics Reasoning Benchmark Exploring Variable, Process, and Solution Dimensions
Song Dai | Yibo Yan | Jiamin Su | Zihao Dongfang | Yubo Gao | Yonghua Hei | Jungang Li | Junyan Zhang | Sicheng Tao | Zhuoran Gao | Xuming Hu
Findings of the Association for Computational Linguistics: EMNLP 2025
Song Dai | Yibo Yan | Jiamin Su | Zihao Dongfang | Yubo Gao | Yonghua Hei | Jungang Li | Junyan Zhang | Sicheng Tao | Zhuoran Gao | Xuming Hu
Findings of the Association for Computational Linguistics: EMNLP 2025
Multimodal Large Language Models (MLLMs) have demonstrated remarkable capabilities in diverse reasoning tasks, yet their application to complex physics reasoning remains underexplored. Physics reasoning presents unique challenges, requiring grounding in physical conditions and the interpretation of multimodal information. Current physics benchmarks are limited, often focusing on text-only inputs or solely on problem-solving, thereby overlooking the critical intermediate steps of variable identification and process formulation. To address these limitations, we introduce **PhysicsArena, the first multimodal physics reasoning benchmark designed to holistically evaluate MLLMs across three critical dimensions: variable identification, physical process formulation, and solution derivation.** PhysicsArena aims to provide a comprehensive platform for assessing and advancing the multimodal physics reasoning abilities of MLLMs.