Entropy Guided Diversification and Preference Elicitation in Agentic Recommendation Systems
arXiv:2603.11399v1 Announce Type: new Abstract: Users on e-commerce platforms can be uncertain about their preferences early in their search. Queries to recommendation systems are frequently ambiguous, incomplete, or weakly specified. Agentic systems are expected to proactively reason, ask clarifying questions, and act on the user's behalf, which makes handling such ambiguity increasingly important. In existing platforms, ambiguity led to excessive interactions and question fatigue or overconfident recommendations prematurely collapsing the search space. We present an Interactive Decision Support System (IDSS) that addresses ambiguous user queries using entropy as a unifying signal. IDSS maintains a dynamically filtered candidate product set and quantifies uncertainty over item attributes using entropy. This uncertainty guides adaptive preference elicitation by selecting follow-up questions that maximize expected information gain. When preferences remain incomplete, IDSS explicitly in
arXiv:2603.11399v1 Announce Type: new Abstract: Users on e-commerce platforms can be uncertain about their preferences early in their search. Queries to recommendation systems are frequently ambiguous, incomplete, or weakly specified. Agentic systems are expected to proactively reason, ask clarifying questions, and act on the user's behalf, which makes handling such ambiguity increasingly important. In existing platforms, ambiguity led to excessive interactions and question fatigue or overconfident recommendations prematurely collapsing the search space. We present an Interactive Decision Support System (IDSS) that addresses ambiguous user queries using entropy as a unifying signal. IDSS maintains a dynamically filtered candidate product set and quantifies uncertainty over item attributes using entropy. This uncertainty guides adaptive preference elicitation by selecting follow-up questions that maximize expected information gain. When preferences remain incomplete, IDSS explicitly incorporates residual uncertainty into downstream recommendations through uncertainty-aware ranking and entropy-based diversification, rather than forcing premature resolution. We evaluate IDSS using review-driven simulated users grounded in real user reviews, enabling a controlled study of diverse shopping behaviors. Our evaluation measures both interaction efficiency and recommendation quality. Results show that entropy-guided elicitation reduces unnecessary follow-up questions, while uncertainty-aware ranking and presentation yield more informative, diverse, and transparent recommendation sets under ambiguous intent. These findings demonstrate that entropy-guided reasoning provides an effective foundation for agentic recommendation systems operating under uncertainty.
Executive Summary
The article introduces an Interactive Decision Support System (IDSS) that utilizes entropy to address ambiguous user queries in agentic recommendation systems. IDSS quantifies uncertainty over item attributes using entropy, guiding adaptive preference elicitation and incorporating residual uncertainty into recommendations. The system is evaluated using simulated users, demonstrating improved interaction efficiency and recommendation quality. The findings highlight the effectiveness of entropy-guided reasoning in operating under uncertainty, providing a foundation for agentic recommendation systems.
Key Points
- ▸ Entropy is used as a unifying signal to address ambiguous user queries
- ▸ IDSS maintains a dynamically filtered candidate product set and quantifies uncertainty over item attributes
- ▸ Uncertainty-aware ranking and entropy-based diversification improve recommendation quality
Merits
Effective Handling of Ambiguity
The system's ability to quantify and incorporate uncertainty into recommendations improves handling of ambiguous user queries
Improved Interaction Efficiency
Entropy-guided elicitation reduces unnecessary follow-up questions, enhancing user experience
Demerits
Limited Evaluation Scope
The evaluation is based on simulated users, which may not fully capture real-world user behaviors and complexities
Expert Commentary
The article presents a significant advancement in the development of agentic recommendation systems, demonstrating the potential of entropy-guided reasoning in addressing ambiguity and uncertainty. The IDSS's ability to adapt to user preferences and incorporate residual uncertainty into recommendations is a notable strength. However, further research is needed to fully explore the system's capabilities and limitations in real-world scenarios. The implications of this work are far-reaching, with potential applications in e-commerce, decision support systems, and beyond.
Recommendations
- ✓ Further evaluation of the IDSS in real-world settings to validate its effectiveness
- ✓ Exploration of the system's potential applications in other domains, such as healthcare or finance