基于映射的跨域推荐注意特征转移

Zhen Liu, J. Tian, Lingxi Zhao, Yanling Zhang
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引用次数: 1

摘要

推荐系统已经被广泛开发用于许多应用。现有的系统可能仍然受到负转移或冷启动的影响。这些缺点主要是由于忽略了特定领域用户的个人偏好或跨领域用户-项目交互。为了解决这些问题,我们提出了一种基于映射的注意特征转移(MAFT)模型的跨域推荐算法。我们的MAFT模型利用矩阵分解和注意机制对用户偏好进行细粒度建模。然后,通过特征融合将重叠的跨域用户特征组合起来。此外,构建多层感知器(MLP)将获取的用户特征映射到目标域用户特征。最后,在目标域中预测用户-物品评级。我们在大规模的MovieLens数据集以及真实的豆瓣图书和豆瓣电影数据集上进行了实验。结果表明,基于mft的推荐方法的推荐精度明显高于其他跨域推荐方法,特别是对于项目交互较少的冷启动用户。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Attentive-Feature Transfer based on Mapping for Cross-domain Recommendation
Recommendation systems have been widely developed for numerous applications. Existing systems may still suffer from negative transfer or cold starts. These drawbacks are essentially due to overlooking domain-specific users' personal preferences or cross-domain user-item interactions. To address these problems, we propose a cross-domain recommendation algorithm built on a mapping-based attentive feature transfer (MAFT) model. Our MAFT model utilizes matrix factorization and an attention mechanism for fine-grained modeling of user preferences. Then, overlapping cross-domain user features are combined through feature fusion. Moreover, a multilayer perceptron (MLP) is built to map the obtained user features to target-domain user features. Finally, the user-item ratings can be predicted in the target domain. We carried out experiments on the large-scale MovieLens dataset as well as the real Douban Book and Douban Movie datasets. The results show that the precision of the MAFT-based method is clearly higher than those of other cross-domain recommendation methods, especially for cold-start users with few item interactions.
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