Yu Wang
Other people with similar names: Yu Wang, Yu Wang, Yu Wang, Yu Wang, Yu Wang, Yu Wang, Yu Wang, Yu Wang (王昱) (Hong Kong Polytechnic)
Unverified author pages with similar names: Yu Wang
2026
AwarenessBench: Assessing Cognitive Capabilities of Language Models
Xiaojian Li | Rongwu Xu | Tianyun Zhang | Yue Wang | Shuo Chen | Qiner Lyu | Briana Zhang | Peiran Yang | Kyle Xue Chen | Haoyuan Shi | Yu Wang | Wei Xu
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Xiaojian Li | Rongwu Xu | Tianyun Zhang | Yue Wang | Shuo Chen | Qiner Lyu | Briana Zhang | Peiran Yang | Kyle Xue Chen | Haoyuan Shi | Yu Wang | Wei Xu
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
As language models (LMs) exhibit increasingly consciousness-like behaviors, evaluating their cognitive abilities becomes essential. We introduce AwarenessBench, the first comprehensive benchmark for assessing the cognitive abilities of LMs in four dimensions: metacognition, self-awareness, social awareness, and situational awareness, covering 15 cognitive functions and 14,381 samples. Evaluating 18 state-of-the-art LMs, we find that all consistently surpass random baselines, with more advanced models performing better. We further compare LMs with human performance across three demographic groups, where the best-performing model surpasses human averages overall, but most still fall markedly short in metacognition and self-awareness. Finally, we show that awareness is a distinct capability: progress in language modeling or reasoning does not necessarily translate into improved cognition.
2025
Jailbreak Large Vision-Language Models Through Multi-Modal Linkage
Yu Wang | Xiaofei Zhou | Yichen Wang | Geyuan Zhang | Tianxing He
Proceedings of the 63rd Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Yu Wang | Xiaofei Zhou | Yichen Wang | Geyuan Zhang | Tianxing He
Proceedings of the 63rd Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
With the rapid advancement of Large Vision-Language Models (VLMs), concerns about their potential misuse and abuse have grown rapidly. Prior research has exposed VLMs’ vulnerability to jailbreak attacks, where carefully crafted inputs can lead the model to produce content that violates ethical and legal standards. However, current jailbreak methods often fail against cutting-edge models such as GPT-4o. We attribute this to the over-exposure of harmful content and the absence of stealthy malicious guidance. In this work, we introduce a novel jailbreak framework: Multi-Modal Linkage (MML) Attack. Drawing inspiration from cryptography, MML employs an encryption-decryption process across text and image modalities to mitigate the over-exposure of malicious information. To covertly align the model’s output with harmful objectives, MML leverages a technique we term evil alignment, framing the attack within the narrative context of a video game development scenario. Extensive experiments validate the effectiveness of MML. Specifically, MML jailbreaks GPT-4o with attack success rates of 99.40% on SafeBench, 98.81% on MM-SafeBench, and 99.07% on HADES-Dataset. Our code is available at https://github.com/wangyu-ovo/MML.