Traditional recommendation systems are faced with two long-standing obstacles, namely, data sparsity and cold-start problems, which promote the emergence and development of Cross-Domain Recommendation (CDR). The core idea of CDR is to leverage information collected from other domains to alleviate the two problems in one domain. Over the last decade, many efforts have been engaged for cross-domain recommendation. Recently, with the development of deep learning and neural networks, a large number of methods have emerged. However, there is a limited number of systematic surveys on CDR, especially regarding the latest proposed methods as well as the recommendation scenarios and recommendation tasks they address. In this survey paper, we first proposed a two-level taxonomy of cross-domain recommendation which classifies different recommendation scenarios and recommendation tasks. We then introduce and summarize existing cross-domain recommendation approaches under different recommendation scenarios in a structured manner. We also organize datasets commonly used. We conclude this survey by providing several potential research directions about this field.
翻译:传统建议系统面临两个长期存在的障碍,即数据宽广和冷却启动问题,这促进了跨域建议(CDR)的出现和发展。CDR的核心思想是利用从其他领域收集的信息,缓解一个领域的两个问题。过去十年来,为跨领域建议作出了许多努力。最近,随着深层学习和神经网络的发展,出现了大量的方法。然而,关于CDR的系统调查数量有限,尤其是关于最新拟议方法以及建议设想和建议任务的调查。我们在本调查文件中首先提出了跨域建议的两个层次分类,其中对不同的建议设想和建议任务进行了分类。然后,我们以结构化的方式在不同建议设想方案下提出和总结现有的跨领域建议方法。我们还共同使用数据集。我们通过提供该领域的若干潜在研究方向来结束这一调查。