Tongtian Yue
2026
SciVQR: A Multidisciplinary Multimodal Benchmark for Advanced Scientific Reasoning Evaluation
Longteng Guo | Xuanxu Lin | Dongze Hao | Tongtian Yue | Pengkang Huo | Jiatong Ma | Yuchen Liu | Jing Liu
Findings of the Association for Computational Linguistics: ACL 2026
Longteng Guo | Xuanxu Lin | Dongze Hao | Tongtian Yue | Pengkang Huo | Jiatong Ma | Yuchen Liu | Jing Liu
Findings of the Association for Computational Linguistics: ACL 2026
Scientific reasoning is a key aspect of human intelligence, requiring the integration of multimodal inputs, domain expertise, and multi-step inference across various subjects. Existing benchmarks for multimodal large language models (MLLMs) often fail to capture the complexity and traceability of reasoning processes necessary for rigorous evaluation. To fill this gap, we introduce SciVQR, a multimodal benchmark covering 54 subfields in mathematics, physics, chemistry, geography, astronomy, and biology. SciVQR includes domain-specific visuals, such as equations, charts, and diagrams, and challenges models to combine visual comprehension with reasoning. The tasks range from basic factual recall to complex, multi-step inferences, with 46% including expert-authored solutions. SciVQR not only evaluates final answers but also examines the reasoning process, providing insights into how models reach their conclusions. Our evaluation of leading MLLMs, including both proprietary and open-source models, reveals significant limitations in handling complex multimodal reasoning tasks, underscoring the need for improved multi-step reasoning and better integration of interdisciplinary knowledge in advancing MLLMs toward true scientific intelligence. The dataset and evaluation code are publicly available at https://github.com/CASIA-IVA-Lab/SciVQR.
2025
ViPE: Visual Perception in Parameter Space for Efficient Video-Language Understanding
Shichen Lu | Tongtian Yue | Longteng Guo | Handong Li | Xingjian He | Si Liu | Jing Liu
Proceedings of the 2025 Conference on Empirical Methods in Natural Language Processing
Shichen Lu | Tongtian Yue | Longteng Guo | Handong Li | Xingjian He | Si Liu | Jing Liu
Proceedings of the 2025 Conference on Empirical Methods in Natural Language Processing
Existing video-language models (Video-LLMs) typically rely on concatenating visual tokens with textual inputs for joint modeling. However, this token-level alignment leads to significant inefficiency, especially when scaling to long videos with dense visual inputs. In this work, we propose a video-to-parameter efficiency paradigm named ViPE that eliminates redundant visual tokens by transforming video content into visual perceptual weights, which are directly injected into the LLM’s parameters. ViPE consists of a visual injection module that compresses video features into a small set of perceptual queries using a hierarchical merge strategy, and a visual perception module that integrates the resulting representations into the LLM through a lightweight LoRA-like mechanism. ViPE achieves performance comparable to token-based baselines such as LLaVA, while reducing FLOPs by 85% and inference time by up to 65%, demonstrating a highly efficient and scalable solution for video understanding.
VRoPE: Rotary Position Embedding for Video Large Language Models
Zikang Liu | Longteng Guo | Yepeng Tang | Tongtian Yue | Junxian Cai | Kai Ma | Qingbin Liu | Xi Chen | Jing Liu
Proceedings of the 2025 Conference on Empirical Methods in Natural Language Processing
Zikang Liu | Longteng Guo | Yepeng Tang | Tongtian Yue | Junxian Cai | Kai Ma | Qingbin Liu | Xi Chen | Jing Liu
Proceedings of the 2025 Conference on Empirical Methods in Natural Language Processing
Rotary Position Embedding (RoPE) has shown strong performance in text-based Large Language Models (LLMs), but extending it to video remains a challenge due to the intricate spatiotemporal structure of video frames. Existing adaptations, such as RoPE-3D, attempt to encode spatial and temporal dimensions separately but suffer from two major limitations: positional bias in attention distribution and disruptions in video-text transitions. To overcome these issues, we propose Video Rotary Position Embedding (VRoPE), a novel positional encoding method tailored for Video-LLMs. Specifically, we introduce a more balanced encoding strategy that mitigates attention biases, ensuring a more uniform distribution of spatial focus. Additionally, our approach restructures positional indices to ensure a smooth transition between video and text tokens. Extensive experiments on different models demonstrate that VRoPE consistently outperforms previous RoPE variants, achieving significant improvements in video understanding, temporal reasoning, and retrieval tasks. Code is available at https://github.com/johncaged/VRoPE.