Zhizhuo Yang
2026
MobileBench-OL: A Comprehensive Chinese Benchmark for Evaluating Mobile GUI Agents in Real-World Environment
Qinzhuo Wu | Zhizhuo Yang | Hanhao Li | Pengzhi Gao | Wei Liu | Jian Luan
Findings of the Association for Computational Linguistics: ACL 2026
Qinzhuo Wu | Zhizhuo Yang | Hanhao Li | Pengzhi Gao | Wei Liu | Jian Luan
Findings of the Association for Computational Linguistics: ACL 2026
Recent advances in mobile Graphical User Interface (GUI) agents highlight the growing need for comprehensive evaluation benchmarks. While new online benchmarks offer more realistic testing than offline ones, they tend to focus on the agents’ task instruction-following ability while neglecting their reasoning and exploration ability. Moreover, these benchmarks do not consider the random noise in real-world mobile environments. This leads to a gap between benchmarks and real-world environments. To addressing these limitations, we propose MobileBench-OL, an online benchmark with 1080 tasks from 80 Chinese apps. It measures task execution, complex reasoning, and noise robustness of agents by including 5 subsets, which set multiple evaluation dimensions. We also provide an auto-eval framework with a reset mechanism, enabling stable and repeatable real-world benchmarking. Evaluating 13 leading GUI agents on MobileBench-OL shows significant room for improvement to meet real-world requirements. Human evaluation further confirms that MobileBench-OL can reliably measure the performance of leading GUI agents in real environments.
2025
ReflectEvo: Improving Meta Introspection of Small LLMs by Learning Self-Reflection
Jiaqi Li | Xinyi Dong | Yang Liu | Zhizhuo Yang | Quansen Wang | Xiaobo Wang | Song-Chun Zhu | Zixia Jia | Zilong Zheng
Findings of the Association for Computational Linguistics: ACL 2025
Jiaqi Li | Xinyi Dong | Yang Liu | Zhizhuo Yang | Quansen Wang | Xiaobo Wang | Song-Chun Zhu | Zixia Jia | Zilong Zheng
Findings of the Association for Computational Linguistics: ACL 2025
We present a novel pipeline, ReflectEvo, to demonstrate that small language models (SLMs) can enhance meta introspection through reflection learning. This process iteratively generates self-reflection for self-training, fostering a continuous and self-evolving process. Leveraging this pipeline, we construct ReflectEvo-460k, a large-scale, comprehensive, self-generated reflection dataset with broadened instructions and diverse multi-domain tasks. Building upon this dataset, we demonstrate the effectiveness of reflection learning to improve SLMs’ reasoning abilities using SFT and DPO with remarkable performance, substantially boosting Llama-3 from 52.4% to 71.2% and Mistral from 44.4% to 71.1%. It validates that ReflectEvo can rival or even surpass the reasoning capability of the three prominent open-sourced models on BIG-bench without distillation from superior models or fine-grained human annotation. We further conduct a deeper analysis of the high quality of self-generated reflections and their impact on error localization and correction. Our work highlights the potential of continuously enhancing the reasoning performance of SLMs through iterative reflection learning in the long run.
2012
Chinese Word Sense Disambiguation based on Context Expansion
Zhizhuo Yang | Heyan Huang
Proceedings of COLING 2012: Posters
Zhizhuo Yang | Heyan Huang
Proceedings of COLING 2012: Posters