Towards Robust Cross-Domain Recommendation with Joint Identifiability of User Preference
Recent cross-domain recommendation (CDR) studies assume that disentangled domain-shared and domain-specific user representations can mitigate domain gaps and facilitate effective knowledge transfer. However, achieving perfect disentanglement is challenging in practice, because user behaviors in CDR...
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Zusammenfassung: | Recent cross-domain recommendation (CDR) studies assume that disentangled
domain-shared and domain-specific user representations can mitigate domain gaps
and facilitate effective knowledge transfer. However, achieving perfect
disentanglement is challenging in practice, because user behaviors in CDR are
highly complex, and the true underlying user preferences cannot be fully
captured through observed user-item interactions alone. Given this
impracticability, we instead propose to model {\it joint identifiability} that
establishes unique correspondence of user representations across domains,
ensuring consistent preference modeling even when user behaviors exhibit shifts
in different domains. To achieve this, we introduce a hierarchical user
preference modeling framework that organizes user representations by the neural
network encoder's depth, allowing separate treatment of shallow and deeper
subspaces. In the shallow subspace, our framework models the interest centroids
for each user within each domain, probabilistically determining the users'
interest belongings and selectively aligning these centroids across domains to
ensure fine-grained consistency in domain-irrelevant features. For deeper
subspace representations, we enforce joint identifiability by decomposing it
into a shared cross-domain stable component and domain-variant components,
linked by a bijective transformation for unique correspondence. Empirical
studies on real-world CDR tasks with varying domain correlations demonstrate
that our method consistently surpasses state-of-the-art, even with weakly
correlated tasks, highlighting the importance of joint identifiability in
achieving robust CDR. |
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DOI: | 10.48550/arxiv.2411.17361 |