Xinyi Wang
Other people with similar names: Xinyi Wang, Xinyi Wang
Unverified author pages with similar names: Xinyi Wang
2026
GUI0: Self-Evolving Foundational GUI Agents in Super App Ecosystems
Xinyi Wang | Wei Dai | Kyle Qiao | Ke Wang | Peng Chen | Gang Cao | Kangqin | Zhongpu Wang | Xiaode Zhang | Yanming Liu | Jihao Gu | Jingtao Xu | Gong Zhi
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Xinyi Wang | Wei Dai | Kyle Qiao | Ke Wang | Peng Chen | Gang Cao | Kangqin | Zhongpu Wang | Xiaode Zhang | Yanming Liu | Jihao Gu | Jingtao Xu | Gong Zhi
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Automated interaction with graphical user interfaces (GUIs) is central to General Artificial Intelligence yet remains challenging within Super App ecosystems, characterized by non-standard rendering and absent accessibility metadata. While GUI agents often rely on explicit accessibility trees or static imitation, they are less explored for dynamic environments marked by sparse feedback and implicit visual cues. We present GUI0, a framework synergizing autonomous data synthesis with dual-agent co-evolution. GUI0 establishes a domain-aware foundation model via synthesized corpora and employs curriculum-driven reinforcement learning, where a curriculum agent generates boundary tasks to optimize an actor agent.Empirical results demonstrate three key advantages: (1) State-of-the-art performance on the SuperAPP benchmark, outperforming Gemini-2.5-Pro and Claude-4-Sonnet; (2) universal efficacy across diverse base models, consistently yielding substantial improvements on both Qwen2.5-VL and GUI-Owl variants; and (3) robust zero-shot generalization to standard GUIs (e.g., +62.7% on ScreenSpot Pro).
2025
RACQC: Advanced Retrieval-Augmented Generation for Chinese Query Correction
Jinbo Su | Lingzhe Gao | Wei Li | Shihao Liu | Haojie Lei | Xinyi Wang | Yuanzhao Guo | Ke Wang | Daiting Shi | Dawei Yin
Findings of the Association for Computational Linguistics: EMNLP 2025
Jinbo Su | Lingzhe Gao | Wei Li | Shihao Liu | Haojie Lei | Xinyi Wang | Yuanzhao Guo | Ke Wang | Daiting Shi | Dawei Yin
Findings of the Association for Computational Linguistics: EMNLP 2025
In web search scenarios, erroneous queries frequently degrade users’ experience through irrelevant results, underscoring the pivotal role of Chinese Spelling Check (CSC) systems. Although large language models (LLMs) exhibit remarkable capabilities across many tasks, they face critical challenges in the CSC scenario: (1) poor generalization to rare entities in open-domain searches, and (2) failure to adapt to temporal entity variations due to static parameters, resulting in serious over-correction issues. To tackle this, we present RACQC, a Chinese Query Correction system with Retrieval-Augmented Generation (RAG) and multi-task learning. Specifically, our approach (1) integrates dynamic knowledge retrieval through entity-centric RAG to address rare entities and innovatively proposes an entity-title collaborative corpus, and (2) employs contrastive correction tasks to mitigate LLM over-correction tendencies. Furthermore, we propose MDCQC, a Multi-Domain Chinese Query Correction benchmark to test the model’s entity correction capabilities. Extensive experiments on several datasets show that RACQC significantly outperforms existing baselines in CSC tasks. Specifically, RACQC achieves a maximum improvement of +9.92% on the search scenario benchmark and +3.2% on the general-domain dataset under the F1 metric.