Jingtong Gao, Xiangyu Zhao, Bo Chen, Fan Yan, Huifeng Guo, Ruiming Tang
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In light of these challenges, this paper proposes AutoTransfer, with an Instance Transfer Policy Network, to selectively transfers instances from source domain to target domain for improved recommendations. Specifically, AutoTransfer acts as an agent that adaptively selects a subset of informative and transferable instances from the source domain. Notably, the selected subset possesses extraordinary re-utilization property that can be saved for improving model training of various future RS models in target domain. Experimental results on two public CDR benchmark datasets demonstrate that the proposed method outperforms state-of-the-art CDR baselines and classic Single-Domain Recommendation (SDR) approaches. The implementation code is available for easy reproduction.","PeriodicalId":425056,"journal":{"name":"Proceedings of the 46th International ACM SIGIR Conference on Research and Development in Information Retrieval","volume":"75 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2023-07-18","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"3","resultStr":"{\"title\":\"AutoTransfer: Instance Transfer for Cross-Domain Recommendations\",\"authors\":\"Jingtong Gao, Xiangyu Zhao, Bo Chen, Fan Yan, Huifeng Guo, Ruiming Tang\",\"doi\":\"10.1145/3539618.3591701\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Cross-Domain Recommendation (CDR) is a widely used approach for leveraging information from domains with rich data to assist domains with insufficient data. A key challenge of CDR research is the effective and efficient transfer of helpful information from source domain to target domain. 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Experimental results on two public CDR benchmark datasets demonstrate that the proposed method outperforms state-of-the-art CDR baselines and classic Single-Domain Recommendation (SDR) approaches. 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引用次数: 3
摘要
跨领域推荐(CDR)是一种广泛使用的方法,用于利用数据丰富的领域的信息来帮助数据不足的领域。CDR研究的一个关键挑战是有效和高效地将有用信息从源域传递到目标域。目前,现有的CDR方法大多侧重于从源域提取隐式信息来增强目标域。然而,提取的隐式信息的隐藏结构高度依赖于特定的CDR模型,因此不容易重用或转移。此外,在训练过程中,提取的隐式信息只出现在特定cdr的中间子结构中,因此不容易保留以供更多使用。针对这些挑战,本文提出了基于实例传输策略网络(Instance Transfer Policy Network)的AutoTransfer算法,可以选择性地将实例从源域传输到目标域。具体来说,AutoTransfer作为一个代理,自适应地从源域中选择信息丰富且可转移的实例子集。值得注意的是,所选择的子集具有非凡的重用性,可以用于改进目标域中各种RS模型的模型训练。在两个公共CDR基准数据集上的实验结果表明,该方法优于最先进的CDR基线和经典的单域推荐(SDR)方法。实现代码易于复制。
AutoTransfer: Instance Transfer for Cross-Domain Recommendations
Cross-Domain Recommendation (CDR) is a widely used approach for leveraging information from domains with rich data to assist domains with insufficient data. A key challenge of CDR research is the effective and efficient transfer of helpful information from source domain to target domain. Currently, most existing CDR methods focus on extracting implicit information from the source domain to enhance the target domain. However, the hidden structure of the extracted implicit information is highly dependent on the specific CDR model, and is therefore not easily reusable or transferable. Additionally, the extracted implicit information only appears within the intermediate substructure of specific CDRs during training and is thus not easily retained for more use. In light of these challenges, this paper proposes AutoTransfer, with an Instance Transfer Policy Network, to selectively transfers instances from source domain to target domain for improved recommendations. Specifically, AutoTransfer acts as an agent that adaptively selects a subset of informative and transferable instances from the source domain. Notably, the selected subset possesses extraordinary re-utilization property that can be saved for improving model training of various future RS models in target domain. Experimental results on two public CDR benchmark datasets demonstrate that the proposed method outperforms state-of-the-art CDR baselines and classic Single-Domain Recommendation (SDR) approaches. The implementation code is available for easy reproduction.