Interplay: Training Independent Simulators for Reference-Free Conversational Recommendation
arXiv cs.AI / 3/20/2026
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Key Points
- The paper proposes a reference-free simulation framework for training conversational recommender systems using two independent LLMs, one acting as the user and one as the recommender, interacting in real time.
- These models operate without access to predetermined target items, instead using preference summaries and target attributes to enable the recommender to infer user preferences through dialogue.
- The approach yields more realistic and diverse conversations that better reflect authentic human-AI interactions and offers a scalable method for generating high-quality CRS data.
- Quantitative and human evaluations show that the reference-free simulators match or exceed existing methods in quality and effectiveness.
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