Ruihan Chen
2026
Unlocking Multilingual Reasoning Capability of LLMs and LVLMs through Representation Engineering
Qiming Li | Xiaocheng Feng | Yixuan Ma | Ruihan Chen | Zihe Tong | Zekai Ye | Xiachong Feng | Libo Qin | Haoyu Ren | Kun Chen | Yunfei Lu | Dandan Tu | Bing Qin
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Qiming Li | Xiaocheng Feng | Yixuan Ma | Ruihan Chen | Zihe Tong | Zekai Ye | Xiachong Feng | Libo Qin | Haoyu Ren | Kun Chen | Yunfei Lu | Dandan Tu | Bing Qin
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Large Language Models (LLMs) and Large Vision-Language Models (LVLMs) demonstrate strong reasoning capabilities, yet their performance in English significantly outperforms that in low-resource languages, raising fairness concerns in multilingual applications. Existing approaches either rely on costly multilingual training or employ prompting with external translation tools, both of which are resource-intensive and sensitive to translation quality. To address these limitations, we propose a training-free inference-time method to enhance Multilingual Reasoning capabilities via Representation Engineering (MRRE) without using any additional training data or tools. MRRE sequentially injects two precomputed vectors at specific layers during inference processing: cross-lingual reasoning enhancement vectors, which steer non-English reasoning representations toward English space to unlock multilingual reasoning, and target-language output anchoring vectors, which restore the distribution of the target language to preserve input–output language consistency. Comprehensive experiments across six advanced LLMs and LVLMs on four reasoning benchmarks demonstrate that MRRE consistently enhances non-English reasoning by an average gain of 5.48% and up to 7.54% in low-resource languages (e.g., Thai and Swahili), while improving input-output language consistency by 3.78%.
MPR-GUI: Benchmarking and Enhancing Multilingual Perception and Reasoning in GUI Agents
Ruihan Chen | Qiming Li | Xiaocheng Feng | Weihong Zhong | Xiaoliang Yang | Yuxuan Gu | Zekun Zhou | Yunfei Lu | Haoyu Ren | Kun Chen | Dandan Tu | Bing Qin
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Ruihan Chen | Qiming Li | Xiaocheng Feng | Weihong Zhong | Xiaoliang Yang | Yuxuan Gu | Zekun Zhou | Yunfei Lu | Haoyu Ren | Kun Chen | Dandan Tu | Bing Qin
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Large Vision–Language Models (LVLMs) have shown strong potential as multilingual Graphical User Interface (GUI) agents, as evidenced by existing GUI benchmarks. However, these benchmarks exhibit two primary limitations: (1) although Perception and Reasoning (P R) capabilities are fundamental for GUI agents, current benchmarks lack fine-grained diagnostics to identify which specific capabilities lead to task failures, hindering targeted improvements; (2) existing benchmarks fail to provide a strictly aligned cross-lingual evaluation environment, introducing confounding factors that prevent isolating the language impact on GUI agent performance. To address these issues, we propose the Multilingual P R GUI Benchmark (MPR-GUI-Bench), featuring strictly aligned environments across six languages and eight fine-grained P R tasks. Our benchmark reveals consistent P R gaps between English and non-English settings, particularly on reasoning-intensive tasks. To leverage the superior English P R capabilities for bridging cross-lingual gaps, we identify layers sensitive to language and propose GUI-XLI, a GUI Cross-Lingual Intervention method that aligns non-English hidden states with their English counterparts at these layers during inference. Experiments show that GUI-XLI effectively reduces the cross-lingual gaps, with an average gain of 6.5% in non-English settings.
2025
From Hypothesis to Publication: A Comprehensive Survey of AI-Driven Research Support Systems
Zekun Zhou | Xiaocheng Feng | Lei Huang | Xiachong Feng | Ziyun Song | Ruihan Chen | Liang Zhao | Weitao Ma | Yuxuan Gu | Baoxin Wang | Dayong Wu | Guoping Hu | Ting Liu | Bing Qin
Findings of the Association for Computational Linguistics: EMNLP 2025
Zekun Zhou | Xiaocheng Feng | Lei Huang | Xiachong Feng | Ziyun Song | Ruihan Chen | Liang Zhao | Weitao Ma | Yuxuan Gu | Baoxin Wang | Dayong Wu | Guoping Hu | Ting Liu | Bing Qin
Findings of the Association for Computational Linguistics: EMNLP 2025
Research is a fundamental process driving the advancement of human civilization, yet it demands substantial time and effort from researchers. In recent years, the rapid development of artificial intelligence (AI) technologies has inspired researchers to explore how AI can accelerate and enhance research. To monitor relevant advancements, this paper presents a systematic review of the progress in this domain. Specifically, we organize the relevant studies into three main categories: hypothesis formulation, hypothesis validation, and manuscript publication. Hypothesis formulation involves knowledge synthesis and hypothesis generation. Hypothesis validation includes the verification of scientific claims, theorem proving, and experiment validation. Manuscript publication encompasses manuscript writing and the peer review process. Furthermore, we identify and discuss the current challenges faced in these areas, as well as potential future directions for research. Finally, we also offer a comprehensive overview of existing benchmarks and tools across various domains that support the integration of AI into the research process. We hope this paper serves as an introduction for beginners and fosters future research.