Zeyu Wu
2026
DetectRL-X: Towards Reliable Multilingual and Real-World LLM-Generated Text Detection
Junchao Wu | Yefeng Liu | Chenyu Zhu | Hao Zhang | Zeyu Wu | Tianqi Shi | Yichao Du | Longyue Wang | Weihua Luo | Jinsong Su | Derek F. Wong
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Junchao Wu | Yefeng Liu | Chenyu Zhu | Hao Zhang | Zeyu Wu | Tianqi Shi | Yichao Du | Longyue Wang | Weihua Luo | Jinsong Su | Derek F. Wong
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
The effective detection and governance of Large Language Model (LLM) generated content has become increasingly critical due to the growing risk of misuse. Despite the impressive performance of existing detectors, their reliability and potential in multilingual, real-world scenarios remain largely underexplored.In this study, we introduce DetectRL-X, a comprehensive multilingual benchmark designed to evaluate advanced detectors across 8 dimensions. The benchmark encompasses 8 languages commonly used in commercial contexts and collects human-written texts from 6 domains highly susceptible to LLM misuse. To better aligned with real-world applications, We create LLM-generated texts using 4 popular commercial LLMs, and include typical AI-assisted writing operations such as polishing, expanding, and condensing to capture authentic usage patterns. Furthermore, we develop a multilingual framework for paraphrasing and perturbation attacks to simulate diverse human modifications and writing noise, enabling stress testing of detectors across languages.Experimental results on DetectRL-X reveal the strengths and limitations of current state-of-the-art detectors when applied to diverse linguistic resources. We further analyze how domains, generators, attack strategies, text length, and refinement operations influence performance in different languages, underscoring DetectRL-X as an effective benchmark for strengthening multilingual and language-specific detectors.
2025
RepreGuard: Detecting LLM-Generated Text by Revealing Hidden Representation Patterns
Xin Chen | Junchao Wu | Shu Yang | Runzhe Zhan | Zeyu Wu | Ziyang Luo | Di Wang | Min Yang | Lidia S. Chao | Derek F. Wong
Transactions of the Association for Computational Linguistics, Volume 13
Xin Chen | Junchao Wu | Shu Yang | Runzhe Zhan | Zeyu Wu | Ziyang Luo | Di Wang | Min Yang | Lidia S. Chao | Derek F. Wong
Transactions of the Association for Computational Linguistics, Volume 13
Detecting content generated by large language models (LLMs) is crucial for preventing misuse and building trustworthy AI systems. Although existing detection methods perform well, their robustness in out-of-distribution (OOD) scenarios is still lacking. In this paper, we hypothesize that, compared to features used by existing detection methods, the internal representations of LLMs contain more comprehensive and raw features that can more effectively capture and distinguish the statistical pattern differences between LLM-generated texts (LGT) and human-written texts (HWT). We validated this hypothesis across different LLMs and observed significant differences in neural activation patterns when processing these two types of texts. Based on this, we propose RepreGuard, an efficient statistics-based detection method. Specifically, we first employ a surrogate model to collect representation of LGT and HWT, and extract the distinct activation feature that can better identify LGT. We can classify the text by calculating the projection score of the text representations along this feature direction and comparing with a precomputed threshold. Experimental results show that RepreGuard outperforms all baselines with average 94.92% AUROC on both in-distribution and OOD scenarios, while also demonstrating robust resilience to various text sizes and mainstream attacks.1
Fraud-R1 : A Multi-Round Benchmark for Assessing the Robustness of LLM Against Augmented Fraud and Phishing Inducements
Shu Yang | Shenzhe Zhu | Zeyu Wu | Keyu Wang | Junchi Yao | Junchao Wu | Lijie Hu | Mengdi Li | Derek F. Wong | Di Wang
Findings of the Association for Computational Linguistics: ACL 2025
Shu Yang | Shenzhe Zhu | Zeyu Wu | Keyu Wang | Junchi Yao | Junchao Wu | Lijie Hu | Mengdi Li | Derek F. Wong | Di Wang
Findings of the Association for Computational Linguistics: ACL 2025
With the increasing integration of large language models (LLMs) into real-world applications such as finance, e-commerce, and recommendation systems, their susceptibility to misinformation and adversarial manipulation poses significant risks. Existing fraud detection benchmarks primarily focus on single-turn classification tasks, failing to capture the dynamic nature of real-world fraud attempts. To address this gap, we introduce Fraud-R1, a challenging bilingual benchmark designed to assess LLMs’ ability to resist fraud and phishing attacks across five key fraud categories: Fraudulent Services, Impersonation, Phishing Scams, Fake Job Postings, and Online Relationships, covering subclasses. Our dataset comprises manually curated fraud cases from social media, news, phishing scam records, and prior fraud datasets.