Academic

PsychAgent: An Experience-Driven Lifelong Learning Agent for Self-Evolving Psychological Counselor

arXiv:2604.00931v2 Announce Type: new Abstract: Existing methods for AI psychological counselors predominantly rely on supervised fine-tuning using static dialogue datasets. However, this contrasts with human experts, who continuously refine their proficiency through clinical practice and accumulated experience. To bridge this gap, we propose an Experience-Driven Lifelong Learning Agent (\texttt{PsychAgent}) for psychological counseling. First, we establish a Memory-Augmented Planning Engine tailored for longitudinal multi-session interactions, which ensures therapeutic continuity through persistent memory and strategic planning. Second, to support self-evolution, we design a Skill Evolution Engine that extracts new practice-grounded skills from historical counseling trajectories. Finally, we introduce a Reinforced Internalization Engine that integrates the evolved skills into the model via rejection fine-tuning, aiming to improve performance across diverse scenarios. Comparative anal

arXiv:2604.00931v2 Announce Type: new Abstract: Existing methods for AI psychological counselors predominantly rely on supervised fine-tuning using static dialogue datasets. However, this contrasts with human experts, who continuously refine their proficiency through clinical practice and accumulated experience. To bridge this gap, we propose an Experience-Driven Lifelong Learning Agent (\texttt{PsychAgent}) for psychological counseling. First, we establish a Memory-Augmented Planning Engine tailored for longitudinal multi-session interactions, which ensures therapeutic continuity through persistent memory and strategic planning. Second, to support self-evolution, we design a Skill Evolution Engine that extracts new practice-grounded skills from historical counseling trajectories. Finally, we introduce a Reinforced Internalization Engine that integrates the evolved skills into the model via rejection fine-tuning, aiming to improve performance across diverse scenarios. Comparative analysis shows that our approach achieves higher scores than strong general LLMs (e.g., GPT-5.4, Gemini-3) and domain-specific baselines across all reported evaluation dimensions. These results suggest that lifelong learning can improve the consistency and overall quality of multi-session counseling responses.

Executive Summary

This article presents a novel AI-based psychological counseling agent, PsychAgent, which employs a lifelong learning approach to improve consistency and quality of counseling responses. PsychAgent's Memory-Augmented Planning Engine ensures therapeutic continuity, while its Skill Evolution Engine extracts new skills from historical counseling trajectories. The Reinforced Internalization Engine integrates evolved skills into the model via rejection fine-tuning. Comparative analysis shows that PsychAgent outperforms strong general LLMs and domain-specific baselines in all evaluation dimensions. This suggests that lifelong learning can enhance the reliability and overall quality of multi-session counseling responses. The approach has the potential to revolutionize AI-based psychological counseling and improve patient outcomes.

Key Points

  • PsychAgent employs a lifelong learning approach to improve counseling responses
  • Memory-Augmented Planning Engine ensures therapeutic continuity
  • Skill Evolution Engine extracts new skills from historical counseling trajectories

Merits

Strength in addressing the gap between human experts and AI counselors

PsychAgent bridges the gap between human experts, who refine their proficiency through clinical practice and accumulated experience, and AI counselors, which predominantly rely on supervised fine-tuning.

Demerits

Limited evaluation of human-AI collaboration

The article focuses on comparing PsychAgent to strong general LLMs and domain-specific baselines, but does not evaluate its performance in human-AI collaboration scenarios.

Expert Commentary

The article presents a compelling argument for the potential of lifelong learning in AI-based psychological counseling. By addressing the gap between human experts and AI counselors, PsychAgent demonstrates a significant improvement in counseling responses. However, the article's limitations, such as the lack of human-AI collaboration evaluation, highlight the need for further research in this area. As AI-powered counseling agents become increasingly prevalent, it is essential to address the ethical and regulatory implications of their development and deployment. Ultimately, PsychAgent represents a significant step towards the development of more effective and reliable AI-based counseling agents.

Recommendations

  • Future research should focus on evaluating PsychAgent's performance in human-AI collaboration scenarios
  • Developers should prioritize the integration of ethical considerations and regulatory compliance in the development of AI-powered counseling agents

Sources

Original: arXiv - cs.AI