Distributional Domain-Invariant Preference Matching for Cross-Domain Recommendation
Jing Du, Zesheng Ye, Bin Guo, Zhiwen Yu, Lina Yao

TL;DR
This paper introduces a novel distributional approach to cross-domain recommendation that models shared latent preference distributions, enabling effective matching without overlapping users or items.
Contribution
It proposes a distributional domain-invariant preference matching method that captures preference continuity and invariance across non-overlapping domains.
Findings
Effective cross-domain matching without overlapped users/items
Captures preference invariance across domains
Improves recommendation accuracy in NOCDR scenarios
Abstract
Learning accurate cross-domain preference mappings in the absence of overlapped users/items has presented a persistent challenge in Non-overlapping Cross-domain Recommendation (NOCDR). Despite the efforts made in previous studies to address NOCDR, several limitations still exist. Specifically, 1) while some approaches substitute overlapping users/items with overlapping behaviors, they cannot handle NOCDR scenarios where such auxiliary information is unavailable; 2) often, cross-domain preference mapping is modeled by learning deterministic explicit representation matchings between sampled users in two domains. However, this can be biased due to individual preferences and thus fails to incorporate preference continuity and universality of the general population. In light of this, we assume that despite the scattered nature of user behaviors, there exists a consistent latent preference…
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Taxonomy
TopicsRecommender Systems and Techniques · Domain Adaptation and Few-Shot Learning · Advanced Graph Neural Networks
