Zhiyuan Ning
2026
AutoFigure-Edit: Generating Editable Scientific Illustrations via Reference-Guided Styling
Zhen Lin | Qiujie Xie | Minjun Zhu | Shichen Li | QiYao Sun | Enhao Gu | Yiran Ding | Ke Sun | Fang Guo | Panzhong Lu | Zhiyuan Ning | Yixuan Weng | Yue Zhang
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 3: System Demonstrations)
Zhen Lin | Qiujie Xie | Minjun Zhu | Shichen Li | QiYao Sun | Enhao Gu | Yiran Ding | Ke Sun | Fang Guo | Panzhong Lu | Zhiyuan Ning | Yixuan Weng | Yue Zhang
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 3: System Demonstrations)
High-quality scientific illustrations are essential for communicating complex scientific and technical concepts, yet existing automated systems remain limited in editability, stylistic controllability, and efficiency. We present AutoFigure-Edit, an end-to-end system that generates fully editable scientific illustrations from long-form scientific text while enabling flexible style adaptation through user-provided reference images. By combining long-context understanding, reference-guided styling, and native SVG editing, it enables efficient creation and refinement of high-quality scientific illustrations. To facilitate further progress in this field, we release the video at https://youtu.be/10IH8SyJjAQ, the full codebase at https://github.com/ResearAI/AutoFigure-Edit and provide a live demo for easy access and interactive use at https://autofigure.cc/.
2025
Disentangled Multi-span Evolutionary Network against Temporal Knowledge Graph Reasoning
Hao Dong | Ziyue Qiao | Zhiyuan Ning | Qi Hao | Yi Du | Pengyang Wang | Yuanchun Zhou
Findings of the Association for Computational Linguistics: ACL 2025
Hao Dong | Ziyue Qiao | Zhiyuan Ning | Qi Hao | Yi Du | Pengyang Wang | Yuanchun Zhou
Findings of the Association for Computational Linguistics: ACL 2025
Temporal Knowledge Graphs (TKGs) incorporate the temporal feature to express the transience of knowledge by describing when facts occur. TKG extrapolation aims to infer possible future facts based on known history, which has garnered significant attention in recent years. Some existing methods treat TKG as a sequence of independent subgraphs to model temporal evolution patterns, demonstrating impressive reasoning performance. However, they still have limitations: 1) In modeling subgraph semantic evolution, they usually neglect the internal structural interactions between subgraphs, which are actually crucial for encoding TKGs. 2) They overlook the potential smooth features that do not lead to semantic changes, which should be distinguished from the semantic evolution process. Therefore, we propose Disentangled Multi-span Evolutionary Network (DiMNet) for TKG reasoning. Specifically, we design a multi-span evolution strategy that captures local neighbor features while perceiving historical neighbor semantic information, thus enabling internal interactions between subgraphs during the evolution process. To maximize the capture of semantic change patterns, we design a disentangle component that adaptively separates nodes’ active and stable features, used to dynamically control the influence of historical semantics on future evolution. Extensive experiments demonstrate that DiMNet achieves substantial performance in TKG reasoning, outperforming the state-of-the-art up to 22.7% in MRR.
2019
Team Peter-Parker at SemEval-2019 Task 4: BERT-Based Method in Hyperpartisan News Detection
Zhiyuan Ning | Yuanzhen Lin | Ruichao Zhong
Proceedings of the 13th International Workshop on Semantic Evaluation
Zhiyuan Ning | Yuanzhen Lin | Ruichao Zhong
Proceedings of the 13th International Workshop on Semantic Evaluation
This paper describes the team peter-parker’s participation in Hyperpartisan News Detection task (SemEval-2019 Task 4), which requires to classify whether a given news article is bias or not. We decided to use JAVA to do the article parsing tool and the BERT-Based model to do the bias prediction. Furthermore, we will show experiment results with analysis.