Academic literature on the topic 'Dual-Target Cross-Domain Recommendation'

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Journal articles on the topic "Dual-Target Cross-Domain Recommendation"

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Li, Yakun, Qiang Wu, Lei Hou, and Juanzi Li. "Entity knowledge transfer-oriented dual-target cross-domain recommendations." Expert Systems with Applications 195 (June 2022): 116591. http://dx.doi.org/10.1016/j.eswa.2022.116591.

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Zhang, Xinyue, Jingjing Li, Hongzu Su, Lei Zhu, and Heng Tao Shen. "Multi-Level Attention-Based Domain Disentanglement for Bidirectional Cross-Domain Recommendation." ACM Transactions on Information Systems, December 19, 2022. http://dx.doi.org/10.1145/3576925.

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Cross-domain recommendation aims to exploit heterogeneous information from a data-sufficient domain (source domain) to transfer knowledge to a data-scarce domain (target domain). A majority of existing methods focus on unidirectional transfer that leverages the domain-shared information to facilitate the recommendation of the target domain. Nevertheless, it is more beneficial to improve the recommendation performance of both domains simultaneously via a dual transfer learning schema, which is known as bidirectional cross-domain recommendation (BCDR). Existing BCDR methods have their limitations since they only perform bidirectional transfer learning based on domain-shared representations while neglecting rich information that is private to each domain. In this paper, we argue that users may have domain-biased preferences due to the characteristics of that domain. Namely, the domain-specific preference information also plays a critical role in the recommendation. To effectively leverage the domain-specific information, we propose a M ulti-level A ttention-based D omain D isentanglement framework dubbed MADD for BCDR, which explicitly leverages the attention mechanism to construct personalized preference with both domain-invariant and domain-specific features obtained by disentangling raw user embeddings. Specifically, the domain-invariant feature is exploited by domain-adversarial learning while the domain-specific feature is learned by imposing an orthogonal loss. We then conduct a reconstruction process on disentangled features to ensure semantic-sufficiency. After that, we devise a multi-level attention mechanism for these disentangled features, which determines their contributions to the final personalized user preference embedding by dynamically learning the attention scores of individual features. We train the model in a multi-task learning fashion to benefit both domains. Extensive experiments on real-world datasets demonstrate that our model significantly outperforms state-of-the-art cross-domain recommendation approaches.
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Conference papers on the topic "Dual-Target Cross-Domain Recommendation"

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Zhang, Tao, Yani Han, Xuewen Dong, Yang Xu, and Yulong Shen. "Dual-Target Cross-Domain Bundle Recommendation." In 2021 IEEE International Conference on Services Computing (SCC). IEEE, 2021. http://dx.doi.org/10.1109/scc53864.2021.00031.

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Zhu, Feng, Yan Wang, Chaochao Chen, Guanfeng Liu, and Xiaolin Zheng. "A Graphical and Attentional Framework for Dual-Target Cross-Domain Recommendation." In Twenty-Ninth International Joint Conference on Artificial Intelligence and Seventeenth Pacific Rim International Conference on Artificial Intelligence {IJCAI-PRICAI-20}. California: International Joint Conferences on Artificial Intelligence Organization, 2020. http://dx.doi.org/10.24963/ijcai.2020/415.

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The conventional single-target Cross-Domain Recommendation (CDR) only improves the recommendation accuracy on a target domain with the help of a source domain (with relatively richer information). In contrast, the novel dual-target CDR has been proposed to improve the recommendation accuracies on both domains simultaneously. However, dual-target CDR faces two new challenges: (1) how to generate more representative user and item embeddings, and (2) how to effectively optimize the user/item embeddings on each domain. To address these challenges, in this paper, we propose a graphical and attentional framework, called GA-DTCDR. In GA-DTCDR, we first construct two separate heterogeneous graphs based on the rating and content information from two domains to generate more representative user and item embeddings. Then, we propose an element-wise attention mechanism to effectively combine the embeddings of common users learned from both domains. Both steps significantly enhance the quality of user and item embeddings and thus improve the recommendation accuracy on each domain. Extensive experiments conducted on four real-world datasets demonstrate that GA-DTCDR significantly outperforms the state-of-the-art approaches.
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Zhu, Feng, Yan Wang, Chaochao Chen, Jun Zhou, Longfei Li, and Guanfeng Liu. "Cross-Domain Recommendation: Challenges, Progress, and Prospects." In Thirtieth International Joint Conference on Artificial Intelligence {IJCAI-21}. California: International Joint Conferences on Artificial Intelligence Organization, 2021. http://dx.doi.org/10.24963/ijcai.2021/639.

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To address the long-standing data sparsity problem in recommender systems (RSs), cross-domain recommendation (CDR) has been proposed to leverage the relatively richer information from a richer domain to improve the recommendation performance in a sparser domain. Although CDR has been extensively studied in recent years, there is a lack of a systematic review of the existing CDR approaches. To fill this gap, in this paper, we provide a comprehensive review of existing CDR approaches, including challenges, research progress, and prospects. Specifically, we first summarize existing CDR approaches into four types, including single-target CDR, single-target multi-domain recommendation (MDR), dual-target CDR, and multi-target CDR. We then present the definitions and challenges of these CDR approaches. Next, we propose a full-view categorization and new taxonomies on these approaches and report their research progress in detail. In the end, we share several promising prospects in CDR.
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