MIMNet: Multi-Interest Meta Network with Multi-Granularity Target-Guided Attention for Cross-domain Recommendation
Cross-domain recommendation (CDR) plays a critical role in alleviating the sparsity and cold-start problem and substantially boosting the performance of recommender systems. Existing CDR methods prefer to either learn a common preference bridge shared by all users or a personalized preference bridge...
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Zusammenfassung: | Cross-domain recommendation (CDR) plays a critical role in alleviating the
sparsity and cold-start problem and substantially boosting the performance of
recommender systems. Existing CDR methods prefer to either learn a common
preference bridge shared by all users or a personalized preference bridge
tailored for each user to transfer user preference from the source domain to
the target domain. Although these methods significantly improve the
recommendation performance, there are still some limitations. First, these
methods usually assume a user only has a unique interest, while ignoring the
fact that a user may interact with items with different interest preferences.
Second, they learn transformed preference representation mainly relies on the
source domain signals, while neglecting the rich information available in the
target domain. To handle these issues, in this paper, we propose a novel method
named Multi-interest Meta Network with Multi-granularity Target-guided
Attention (MIMNet) for cross-domain recommendation. To be specific, we employ
the capsule network to learn user multiple interests in the source domain,
which will be fed into a meta network to generate multiple interest-level
preference bridges. Then, we transfer user representations from the source
domain to the target domain based on these multi-interest bridges. In addition,
we introduce both fine-grained and coarse-grained target signals to aggregate
user transformed interest-level representations by incorporating a novel
multi-granularity target-guided attention network. We conduct extensive
experimental results on three real-world CDR tasks, and the results show that
our proposed approach MIMNet consistently outperforms all baseline methods. The
source code of MIMNet is released at https://github.com/marqu22/MIMNet. |
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DOI: | 10.48550/arxiv.2408.00038 |