A Framework for Generating Conversational Recommendation Datasets from Behavioral Interactions
Vinaik Chhetri, Yousaf Reza, Moghis Fereidouni, Srijata Maji, Umar Farooq, AB Siddique

TL;DR
This paper introduces ConvRecStudio, a comprehensive framework leveraging large language models to generate realistic, multi-turn conversational recommendation datasets grounded in real user interactions, enabling improved personalized recommendation models.
Contribution
The paper presents a novel three-stage pipeline for synthesizing multi-turn conversational datasets from behavioral data using LLMs, bridging collaborative filtering and conversational recommendation paradigms.
Findings
Generated over 12,000 dialogs per dataset across three domains.
Human and automatic evaluations confirm the naturalness and coherence of the conversations.
The proposed model improves Hit@1 by 10.9% on Yelp compared to baselines.
Abstract
Modern recommendation systems typically follow two complementary paradigms: collaborative filtering, which models long-term user preferences from historical interactions, and conversational recommendation systems (CRS), which interact with users in natural language to uncover immediate needs. Each captures a different dimension of user intent. While CRS models lack collaborative signals, leading to generic or poorly personalized suggestions, traditional recommenders lack mechanisms to interactively elicit immediate needs. Unifying these paradigms promises richer personalization but remains challenging due to the lack of large-scale conversational datasets grounded in real user behavior. We present ConvRecStudio, a framework that uses large language models (LLMs) to simulate realistic, multi-turn dialogs grounded in timestamped user-item interactions and reviews. ConvRecStudio follows a…
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Taxonomy
TopicsRecommender Systems and Techniques · Topic Modeling · Emotion and Mood Recognition
