Jingxiang Qu
2026
Evaluating Memory Capability in Continuous Lifelog Scenario
Jianjie Zheng | Zhichen Liu | Zhanyu Shen | Jingxiang Qu | Guanhua Chen | Yile Wang | Yang Xu | Yang Liu | Sijie Cheng
Findings of the Association for Computational Linguistics: ACL 2026
Jianjie Zheng | Zhichen Liu | Zhanyu Shen | Jingxiang Qu | Guanhua Chen | Yile Wang | Yang Xu | Yang Liu | Sijie Cheng
Findings of the Association for Computational Linguistics: ACL 2026
Nowadays, wearable devices can continuously lifelog ambient conversations, creating substantial opportunities for memory systems. However, existing benchmarks primarily focus on online one-on-one chatting or human-AI interactions, thus neglecting the unique demands of real-world scenarios. Given the scarcity of public lifelogging audio datasets, we propose a hierarchical synthesis framework to curate LifelogBench, a novel benchmark comprising two complementary subsets: EgoMem, built on real-world egocentric videos, and LifeMem, constructed using simulated virtual community. Crucially, to address the issue of temporal leakage in traditional offline settings, we propose an Online Evaluation protocol that strictly adheres to temporal causality, ensuring systems are evaluated in a realistic streaming fashion. Our experimental results reveal a counterintuitive finding: current sophisticated memory systems fail to outperform a simple RAG-based baseline. This highlights the detrimental impact of over-designed structures and lossy compression in current approaches, emphasizing the necessity of high-fidelity context preservation for lifelog scenarios.
2025
RL-Guider: Leveraging Historical Decisions and Feedback for Drug Editing with Large Language Models
Xufeng Liu | Yixuan Ding | Jingxiang Qu | Yichi Zhang | Wenhan Gao | Yi Liu
Findings of the Association for Computational Linguistics: ACL 2025
Xufeng Liu | Yixuan Ding | Jingxiang Qu | Yichi Zhang | Wenhan Gao | Yi Liu
Findings of the Association for Computational Linguistics: ACL 2025
Recent success of large language models (LLMs) in diverse domains showcases their potential to revolutionize scientific fields, including drug editing. Traditional drug editing relies on iterative conversations with domain experts, refining the drug until the desired property is achieved. This interactive and iterative process mirrors the strengths of LLMs, making them well-suited for drug editing. *In existing works, LLMs edit each molecule independently without leveraging knowledge from past edits.* However, human experts develop intuition about effective modifications over time through historical experience; accumulating past knowledge is pivotal for human experts, and so it is for LLMs. *In this work, we propose RL-Guider — a reinforcement-learning agent to provide suggestions to LLMs; it uses the rich information provided from evaluating editing results made by the LLM based on the recommendations to improve itself over time.* RL-Guider is the first work that leverages both the comprehensive “world-level” knowledge of LLMs and the knowledge accumulated from historical feedback. As a result, RL-Guider mitigates several shortcomings of existing approaches and demonstrates superior performance. The code is available at [https://github.com/xufliu/RL-Guider](https://github.com/xufliu/RL-Guider).