Zixuan Lian

h-index1
2papers
1citation

2 Papers

9.6AIOct 22, 2025Code
Continual Knowledge Adaptation for Reinforcement Learning

Jinwu Hu, Zihao Lian, Zhiquan Wen et al.

Reinforcement Learning enables agents to learn optimal behaviors through interactions with environments. However, real-world environments are typically non-stationary, requiring agents to continuously adapt to new tasks and changing conditions. Although Continual Reinforcement Learning facilitates learning across multiple tasks, existing methods often suffer from catastrophic forgetting and inefficient knowledge utilization. To address these challenges, we propose Continual Knowledge Adaptation for Reinforcement Learning (CKA-RL), which enables the accumulation and effective utilization of historical knowledge. Specifically, we introduce a Continual Knowledge Adaptation strategy, which involves maintaining a task-specific knowledge vector pool and dynamically using historical knowledge to adapt the agent to new tasks. This process mitigates catastrophic forgetting and enables efficient knowledge transfer across tasks by preserving and adapting critical model parameters. Additionally, we propose an Adaptive Knowledge Merging mechanism that combines similar knowledge vectors to address scalability challenges, reducing memory requirements while ensuring the retention of essential knowledge. Experiments on three benchmarks demonstrate that the proposed CKA-RL outperforms state-of-the-art methods, achieving an improvement of 4.20% in overall performance and 8.02% in forward transfer. The source code is available at https://github.com/Fhujinwu/CKA-RL.

1.2APJan 27, 2021
A study on information behavior of scholars for article keywords selection

Z. X. Lian

This project takes the factors of keyword selection behavior as the research object. Qualitative analysis methods such as interview and grounded theory were used to construct causal influence path model. Combined with computer simulation technology such as multi-agent simulation experiment method was used to study the factors of keyword selection from two dimensions of individual to group. The research was carried out according to the path of factor analysis at individual level macro situation simulation optimization of scientific research data management. Based on the aforementioned review of existing researches and explanations of keywords selection, this study adopts a qualitative research design to expand the explanation, and macro simulation based on the results of qualitative research. There are two steps in this study, one is do interview with authors and then design macro simulation according the deductive and qualitative content analysis results.