ArXiv TLDR

DySRec: Dynamic Context-Aware Psychometric Scale Recommendation via Multi-Agent Collaboration

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2605.00574

Yanzeng Li, Xiaoning Cao, Jialun Zhong, Jianpeng Hu, Jiangshan Tan + 3 more

cs.HC

TLDR

DySRec is a multi-agent conversational system that dynamically recommends psychometric scales by integrating diverse patient data and refining recommendations.

Key contributions

  • Proposes DySRec, a multi-agent conversational system for dynamic psychometric scale recommendation.
  • Models scale selection as a continuous conversational decision process via multi-turn dialogue.
  • Coordinates specialized agents to manage context, recommend scales, monitor risk, and log decisions.
  • Integrates diverse signals (semantic, interaction, history) to dynamically update user representations.

Why it matters

This paper addresses the limitations of static psychometric scale selection by introducing a dynamic, interactive multi-agent system. DySRec improves assessment accuracy, risk management, and transparency in psychological consultation. Its real-world verification highlights its practical utility.

Original Abstract

Choosing suitable psychometric scales is an essential and difficult step in psychological consultation, which requires clinicians to integrate patient information, behaviors, and dynamic contextual information. Existing systems mainly use static pipelines to choose scale, or directly predict symptoms according to user inputs, limiting their ability to support dynamic assessment, risk management, and transparent decision-making. To address these limitations, we propose DySRec, a multi-agent conversational system for dynamic psychometric scale recommendation. DySRec operates as an interactive chatbot that engages users in multi-turn dialogue, models scale selection as a continuous conversational decision process, and coordinates specialized agents to maintain user context, recommend assessment scales, monitor psychological risk, and log decision trajectories. In this way, DySRec can integrate and capture heterogeneous signals, including semantic, interaction behaviors, assessment history, and content state, to dynamically update user representations and calculate scale-context compatibility score for recommending most matched scales. Moreover, DySRec incorporates a closed-loop refinement mechanism. Recommendation agent will feedback the missing or uncertain attributes and guide the conversation to elicit the targeted information. In this paper, we showcase the prototype design and architecture of DySRec, and this system has been verified in a real-world application.

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