Wenyuan Jiang
2026
Test of Time: Rethinking Temporal Signal of Benchmark Contamination
Terry Jingchen Zhang | Gopal Dev | Ning Wang | Max Obreiter | Wenyuan Jiang | Punya Syon Pandey | Keenan Samway | Yinya Huang | Bernhard Schölkopf | Mrinmaya Sachan | Zhijing Jin
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Terry Jingchen Zhang | Gopal Dev | Ning Wang | Max Obreiter | Wenyuan Jiang | Punya Syon Pandey | Keenan Samway | Yinya Huang | Bernhard Schölkopf | Mrinmaya Sachan | Zhijing Jin
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Post-cutoff performance decay has been widely interpreted as a temporal signal for benchmark contamination.We critically examine this belief and demonstrate that this temporal signal is highly sensitive to how benchmark questions are constructed.Specifically, we show that LLM-generated questions can produce remarkably different temporal patterns compared to fill-in-the-blank questions directly retrieved from the very same materials.We validated this finding on previous benchmarks that reported clear post-cutoff performance decay such as LiveCodeBench and further showed simple LLM transformation could effectively remove this temporal pattern when evaluated on the same models.We also provide a mechanistic understanding of our observation using influence function analysis.Overall, this work offers a new perspective on the sensitivity of temporal contamination signal and highlights the need for more robust contamination detection methods for reliable AI evaluation.
SILO-BENCH: A Scalable Environment for Evaluating Distributed Coordination in Multi-Agent LLM Systems
Yuzhe Zhang | Feiran Liu | Yi Shan | Xinyi Huang | Xin Yang | Yueqi Zhu | Xuxin Cheng | Cao Liu | Ke Zeng | Terry Jingchen Zhang | Wenyuan Jiang
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Yuzhe Zhang | Feiran Liu | Yi Shan | Xinyi Huang | Xin Yang | Yueqi Zhu | Xuxin Cheng | Cao Liu | Ke Zeng | Terry Jingchen Zhang | Wenyuan Jiang
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Large language models are increasingly deployed in multi-agent systems to overcome context limitations by distributing information across agents. However, whether LLM-based agents can reliably coordinate when each observes only a fragment of the global problem remains unclear. Existing benchmarks often prescribe agent roles or interaction patterns, conflating coordination ability with role-based priors. We introduce SILO-BENCH, a role-free benchmark for evaluating free-form collaboration under information silos. The benchmark comprises 30 algorithmic tasks with exact ground-truth answers, organized into 3 complexity levels based on optimal communication complexity: aggregation, mesh, and global shuffle. To systematically probe coordination capabilities, we instantiate 54 configurations by varying 3 communication protocols, 6 agent scales and 3 frontier LLMs, conducting 1,620 experiments. We evaluate agent behavior along three dimensions: Success Rate, Token Consumption, and Communication Density. Our experiments reveal a fundamental Communication-Reasoning Gap: agents communicate actively, yet fail to translate interaction into effective distributed computation. Performance collapses as complexity increases, with Level-III tasks achieving zero success beyond 50 agents. These findings demonstrate that current LLMs cannot escape information silos through coordination alone. SILO-BENCH provides a foundation for tracking progress toward genuinely collaborative multi-agent systems. The code is available at https://github.com/jwyjohn/acl26-silo-bench.
PaperMentor: A Human-Centered Multi-Agent Writing Tutor for AI Research Papers in Overleaf
Jiarui Liu | Terry Jingchen Zhang | Ryan Faulkner | Xuanqiang Angelo Huang | Vilém Zouhar | Dominik Glandorf | Isabel Dahlgren | Rishit Dagli | Yuen Chen | Felix Leeb | Van Q. Truong | Punya Syon Pandey | Yves Bicker | Suvajit Majumder | Wenyuan Jiang | Zeju Qiu | Sankalan Pal Chowdhury | Mrinmaya Sachan | Bernhard Schölkopf | Mona T. Diab | Zhijing Jin
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 3: System Demonstrations)
Jiarui Liu | Terry Jingchen Zhang | Ryan Faulkner | Xuanqiang Angelo Huang | Vilém Zouhar | Dominik Glandorf | Isabel Dahlgren | Rishit Dagli | Yuen Chen | Felix Leeb | Van Q. Truong | Punya Syon Pandey | Yves Bicker | Suvajit Majumder | Wenyuan Jiang | Zeju Qiu | Sankalan Pal Chowdhury | Mrinmaya Sachan | Bernhard Schölkopf | Mona T. Diab | Zhijing Jin
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 3: System Demonstrations)
Expert writing feedback from experienced researchers is critical for early-career scholars to improve their manuscripts, yet high-quality feedback often remains scarce because reviewing research papers is labor-intensive. Emerging AI-powered writing assistants largely focus on grammar fixes or simulating peer review with final scores, yet they fall short of providing concrete, actionable suggestions that help students improve their papers during drafting. We present PaperMentor, a human-centered writing assistant system that delivers actionable suggestions as Overleaf-native inline comments while leaving the actual writing entirely to human authors. PaperMentor integrates an expert skill library carefully curated from established researchers’ writing advice with 12 specialized agents covering different aspects of paper writing, such as formatting compliance, phrasing accuracy, and terminology consistency. In a user study (n=14), 90.6% of the generated comments were rated actionable and 67.5% were rated valid, significantly outperforming a GPT-5.2 baseline without the skill library. We release PaperMentor as open source for public use.
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Co-authors
- Terry Jingchen Zhang 3
- Zhijing Jin 2
- Punya Syon Pandey 2
- Mrinmaya Sachan 2
- Bernhard Schölkopf 2
- Yves Bicker 1
- Yuen Chen 1
- Xuxin Cheng 1
- Rishit Dagli 1
- Isabel Dahlgren 1
- Gopal Dev 1
- Mona Diab 1
- Ryan Faulkner 1
- Dominik Glandorf 1
- Xinyi Huang 1
- Xuanqiang Angelo Huang 1
- Yinya Huang 1
- Felix Leeb 1
- Cao Liu 1
- Feiran Liu 1
- Jiarui Liu 1
- Suvajit Majumder 1
- Max Obreiter 1
- Sankalan Pal Chowdhury 1
- Zeju Qiu 1
- Keenan Samway 1
- Yi Shan 1
- Van Q. Truong 1
- Ning Wang 1
- Xin Yang 1
- Ke Zeng 1
- Yuzhe Zhang 1
- Yueqi Zhu 1
- Vilém Zouhar 1
Venues
- ACL3