Modeling User Preferences as Distributions for Optimal Transport-Based Cross-Domain Recommendation under Non-Overlapping Settings
Ziyin Xiao, Toyotaro Suzumura

TL;DR
This paper introduces DUP-OT, a novel non-overlapping cross-domain recommender system that models user preferences as Gaussian mixtures and uses optimal transport for effective knowledge transfer, improving cold-start recommendations.
Contribution
DUP-OT is the first framework to model user preferences as Gaussian mixtures and align them across domains using optimal transport without overlapping users or items.
Findings
DUP-OT outperforms single-domain baselines in RMSE.
DUP-OT achieves lower RMSE than TDAR in non-overlapping settings.
Effective in cold-start user preference transfer.
Abstract
Cross-domain recommender (CDR) systems aim to transfer knowledge from data-rich domains to data-sparse ones, alleviating sparsity and cold-start issues present in conventional single-domain recommenders. However, many CDR approaches rely on overlapping users or items to establish explicit cross-domain connections, which is unrealistic in practice. Moreover, most methods represent user preferences as fixed discrete vectors, limiting their ability to capture the fine-grained and multi-aspect nature of user interests. To address these limitations, we propose DUP-OT (Distributional User Preferences with Optimal Transport), a novel framework for non-overlapping CDR. DUP-OT consists of three stages: (1) a shared preprocessing module that extracts review-based embeddings using a unified sentence encoder and autoencoder; (2) a user preference modeling module that represents each user's…
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