Eric Yang
2026
MARS: Unleashing the Power of Speculative Decoding via Margin-Aware Verification
Jingwei Song | Xinyu Wang | Hanbin Wang | Xiaoxuan Lei | Tianyu Shi | Shixin Han | Eric Yang | Xiao-Wen Chang | Lynn Ai
Findings of the Association for Computational Linguistics: ACL 2026
Jingwei Song | Xinyu Wang | Hanbin Wang | Xiaoxuan Lei | Tianyu Shi | Shixin Han | Eric Yang | Xiao-Wen Chang | Lynn Ai
Findings of the Association for Computational Linguistics: ACL 2026
Speculative Decoding (SD) accelerates autoregressive large language model (LLM) inference by decoupling generation and verification. While recent methods improve draft quality by tightly coupling the drafter with the target model, the verification mechanism itself remains largely unchanged, relying on strict token-level rejection sampling. In practice, modern LLMs frequently operate in low-margin regimes where the target model exhibits weak preference among top candidates. In such cases, rejecting plausible runner-up tokens yields negligible information gain while incurring substantial rollback cost, leading to a fundamental inefficiency in verification.We propose Margin-Aware Speculative Verification, a training-free and domain-agnostic verification strategy that adapts to the target model’s local decisiveness. Our method conditions verification on decision stability measured directly from the target logits and relaxes rejection only when strict verification provides minimal benefit. Importantly, the approach modifies only the verification rule and is fully compatible with existing target-coupled speculative decoding frameworks. Extensive experiments across model scales ranging from 8B to 235B demonstrate that our method delivers consistent and significant inference speedups over state-of-the-art baselines while preserving generation quality across diverse benchmarks. The code is available at https://github.com/5SSjw/MARS.
EVM-QuestBench: An Execution-Grounded Benchmark for Natural-Language Transaction Code Generation
Pei Yang | Wanyi Chen | Ke Wang | Lynn Ai | Eric Yang | Tianyu Shi
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Pei Yang | Wanyi Chen | Ke Wang | Lynn Ai | Eric Yang | Tianyu Shi
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Large language models are increasingly applied to various development scenarios. However, in on-chain transaction scenarios, even a minor error can cause irreversible loss for users. Existing evaluations often overlook execution accuracy and safety. We introduce EVM-QuestBench, an execution-grounded benchmark for natural-language transaction-script generation on EVM-compatible chains. The benchmark employs dynamic evaluation: instructions are sampled from template pools, numeric parameters are drawn from predefined intervals, and validators verify outcomes against these instantiated values. EVM-QuestBench contains 107 tasks (62 atomic, 45 composite). Its modular architecture enables rapid task development. The runner executes scripts on a forked EVM chain with snapshot isolation; composite tasks apply step-efficiency decay. We evaluate 20 models with 5 independent rounds each and find large performance gaps, with split scores revealing persistent asymmetry between single-action precision and multi-step workflow completion. Code: https://github.com/OpenEdgeHQ/EVM-quest-bench.
2025
Sleepless Nights, Sugary Days: Creating Synthetic Users with Health Conditions for Realistic Coaching Agent Interactions
Taedong Yun | Eric Yang | Mustafa Safdari | Jong Ha Lee | Vaishnavi Vinod Kumar | S. Sara Mahdavi | Jonathan Amar | Derek Peyton | Reut Aharony | Andreas Michaelides PhD | Logan Douglas Schneider | Isaac Galatzer-Levy | Yugang Jia | John Canny | Arthur Gretton | Maja Mataric
Findings of the Association for Computational Linguistics: ACL 2025
Taedong Yun | Eric Yang | Mustafa Safdari | Jong Ha Lee | Vaishnavi Vinod Kumar | S. Sara Mahdavi | Jonathan Amar | Derek Peyton | Reut Aharony | Andreas Michaelides PhD | Logan Douglas Schneider | Isaac Galatzer-Levy | Yugang Jia | John Canny | Arthur Gretton | Maja Mataric
Findings of the Association for Computational Linguistics: ACL 2025
We present an end-to-end framework for generating synthetic users for evaluating interactive agents designed to encourage positive behavior changes, such as in health and lifestyle coaching. The synthetic users are grounded in health and lifestyle conditions, specifically sleep and diabetes management in this study, to ensure realistic interactions with the health coaching agent. Synthetic users are created in two stages: first, structured data are generated grounded in real-world health and lifestyle factors in addition to basic demographics and behavioral attributes; second, full profiles of the synthetic users are developed conditioned on the structured data. Interactions between synthetic users and the coaching agent are simulated using generative agent-based models such as Concordia, or directly by prompting a language model. Using two independently-developed agents for sleep and diabetes coaching as case studies, the validity of this framework is demonstrated by analyzing the coaching agent’s understanding of the synthetic users’ needs and challenges. Finally, through multiple blinded evaluations of user-coach interactions by human experts, we demonstrate that our synthetic users with health and behavioral attributes more accurately portray real human users with the same attributes, compared to generic synthetic users not grounded in such attributes. The proposed framework lays the foundation for efficient development of conversational agents through extensive, realistic, and grounded simulated interactions.
2024
Event Detection from Social Media for Epidemic Prediction
Tanmay Parekh | Anh Mac | Jiarui Yu | Yuxuan Dong | Syed Shahriar | Bonnie Liu | Eric Yang | Kuan-Hao Huang | Wei Wang | Nanyun Peng | Kai-Wei Chang
Proceedings of the 2024 Conference of the North American Chapter of the Association for Computational Linguistics: Human Language Technologies (Volume 1: Long Papers)
Tanmay Parekh | Anh Mac | Jiarui Yu | Yuxuan Dong | Syed Shahriar | Bonnie Liu | Eric Yang | Kuan-Hao Huang | Wei Wang | Nanyun Peng | Kai-Wei Chang
Proceedings of the 2024 Conference of the North American Chapter of the Association for Computational Linguistics: Human Language Technologies (Volume 1: Long Papers)
Social media is an easy-to-access platform providing timely updates about societal trends and events. Discussions regarding epidemic-related events such as infections, symptoms, and social interactions can be crucial for informing policymaking during epidemic outbreaks. In our work, we pioneer exploiting Event Detection (ED) for better preparedness and early warnings of any upcoming epidemic by developing a framework to extract and analyze epidemic-related events from social media posts. To this end, we curate an epidemic event ontology comprising seven disease-agnostic event types and construct a Twitter dataset SPEED with human-annotated events focused on the COVID-19 pandemic. Experimentation reveals how ED models trained on COVID-based SPEED can effectively detect epidemic events for three unseen epidemics of Monkeypox, Zika, and Dengue; while models trained on existing ED datasets fail miserably. Furthermore, we show that reporting sharp increases in the extracted events by our framework can provide warnings 4-9 weeks earlier than the WHO epidemic declaration for Monkeypox. This utility of our framework lays the foundations for better preparedness against emerging epidemics.
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Co-authors
- Lynn Ai 2
- Tianyu Shi 2
- Reut Aharony 1
- Jonathan Amar 1
- John Canny 1
- Xiao-Wen Chang 1
- Kai-Wei Chang 1
- Wanyi Chen 1
- Yuxuan Dong 1
- Isaac Galatzer-Levy 1
- Arthur Gretton 1
- Shixin Han 1
- Kuan - Hao Huang 1
- Yugang Jia 1
- Vaishnavi Vinod Kumar 1
- Jong Ha Lee 1
- Xiaoxuan Lei 1
- Bonnie Liu 1
- Anh Mac 1
- S. Sara Mahdavi 1
- Maja Mataric 1
- Tanmay Parekh 1
- Nanyun Peng 1
- Derek Peyton 1
- Andreas Michaelides PhD 1
- Mustafa Safdari 1
- Logan Douglas Schneider 1
- Syed Shahriar 1
- Jingwei Song 1
- Xinyu Wang 1
- Hanbin Wang 1
- Wei Wang 1
- Ke Wang 1
- Pei Yang 1
- Jiarui Yu 1
- Taedong Yun 1