JSCN: Joint Spectral Convolutional Network for Cross Domain Recommendation
This addresses data sparsity in recommender systems by enabling knowledge transfer across domains, though it appears incremental as it builds on existing graph-based methods.
The paper tackles cross-domain recommendation by proposing JSCN, a joint spectral convolutional network that extracts high-order connectivity information and learns domain-invariant user representations, achieving a 9.2% improvement in recall and 36.4% improvement in MAP compared to state-of-the-art methods on 24 Amazon datasets.
Cross-domain recommendation can alleviate the data sparsity problem in recommender systems. To transfer the knowledge from one domain to another, one can either utilize the neighborhood information or learn a direct mapping function. However, all existing methods ignore the high-order connectivity information in cross-domain recommendation area and suffer from the domain-incompatibility problem. In this paper, we propose a \textbf{J}oint \textbf{S}pectral \textbf{C}onvolutional \textbf{N}etwork (JSCN) for cross-domain recommendation. JSCN will simultaneously operate multi-layer spectral convolutions on different graphs, and jointly learn a domain-invariant user representation with a domain adaptive user mapping module. As a result, the high-order comprehensive connectivity information can be extracted by the spectral convolutions and the information can be transferred across domains with the domain-invariant user mapping. The domain adaptive user mapping module can help the incompatible domains to transfer the knowledge across each other. Extensive experiments on $24$ Amazon rating datasets show the effectiveness of JSCN in the cross-domain recommendation, with $9.2\%$ improvement on recall and $36.4\%$ improvement on MAP compared with state-of-the-art methods. Our code is available online ~\footnote{https://github.com/JimLiu96/JSCN}.