A cross-domain recommendation has shown promising results in solving data-sparsity and cold-start problems. Despite such progress, existing methods focus on domain-shareable information (overlapped users or same contexts) for a knowledge transfer, and they fail to generalize well without such requirements. To deal with these problems, we suggest utilizing review texts that are general to most e-commerce systems. Our model (named SER) uses three text analysis modules, guided by a single domain discriminator for disentangled representation learning. Here, we suggest a novel optimization strategy that can enhance the quality of domain disentanglement, and also debilitates detrimental information of a source domain. Also, we extend the encoding network from a single to multiple domains, which has proven to be powerful for review-based recommender systems. Extensive experiments and ablation studies demonstrate that our method is efficient, robust, and scalable compared to the state-of-the-art single and cross-domain recommendation methods.
翻译:尽管取得了这些进展,但现有方法侧重于可用于知识转让的可域共享信息(用户过多或相同背景),而且没有在没有此类要求的情况下加以推广。为了处理这些问题,我们建议使用大多数电子商务系统通用的审查文本。我们的模型(名为SER)使用三个文本分析模块,由单一域区分器指导,进行分解的演示学习。这里,我们建议采用新的优化战略,以提高域分离的质量,同时削弱源域的有害信息。此外,我们把编码网络从一个单一领域扩大到多个领域,这已证明对基于审查的建议系统来说是强大的。广泛的实验和缩略研究表明,我们的方法效率高、强健和可扩展,与最先进的单一和跨域建议方法相比是有效的、有力的和可扩展的。