Entropy Guided Diversification and Preference Elicitation in Agentic Recommendation Systems
arXiv cs.AI / 3/13/2026
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Key Points
- The paper presents an Interactive Decision Support System (IDSS) for agentic recommendation that handles ambiguous user queries by dynamically filtering candidates and quantifying uncertainty.
- It uses entropy as a unifying signal to measure uncertainty over item attributes and to guide adaptive preference elicitation via follow-up questions that maximize expected information gain.
- When preferences are still incomplete, IDSS incorporates residual uncertainty into downstream recommendations through uncertainty-aware ranking and entropy-based diversification, avoiding premature narrowing of the search space.
- The authors evaluate IDSS with review-driven simulated users and show that entropy-guided elicitation reduces unnecessary follow-up questions while producing more informative, diverse, and transparent recommendation sets under ambiguity.
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