Group-to-group recommendation with neural graph matching

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Abstract

Nowadays, with the development of recommender systems, an emerging recommendation scenario called group-to-group recommendation has played a vital role in information acquisition for users. The new recommendation scenario seeks to recommend a group of related items to users with similar interests. To some extent, it alleviates the problem of point-to-point recommendations getting trapped in an information cocoon due to an over-reliance on user behaviors. For the new recommendation scenario, the existing recommendation methods cannot model the complex interactions between user groups and item groups, thus affecting the accuracy of the group-to-group recommendation. In this paper, we propose a group-to-group recommendation method, which abstracts user groups and item groups into graphs and calculates the similarity between two graphs based on graph matching, dubbed as GMRec. Specifically, we construct the graph of user groups and item groups and then calculate the graph similarity scores between user groups and item groups from two perspectives of feature matching and structure matching. Experimental results show that our model achieves higher accuracy than state-of-the-art models on three industrial datasets with different group sizes, with a maximum improvement of 8.2%.

利用神经图匹配进行组对组推荐
摘要 如今,随着推荐系统的发展,一种名为 "群对群推荐 "的新兴推荐方式在用户获取信息方面发挥了重要作用。这种新的推荐方式旨在向兴趣相近的用户推荐一组相关的项目。它在一定程度上缓解了点对点推荐因过度依赖用户行为而陷入信息茧房的问题。对于新的推荐场景,现有的推荐方法无法模拟用户组和物品组之间复杂的交互关系,从而影响了组对组推荐的准确性。本文提出了一种组对组推荐方法,它将用户组和物品组抽象为图,并基于图匹配计算两个图之间的相似度,即 GMRec。具体来说,我们先构建用户组和项目组的图,然后从特征匹配和结构匹配两个角度计算用户组和项目组之间的图相似度得分。实验结果表明,在三个不同组规模的工业数据集上,我们的模型比最先进的模型获得了更高的准确率,最大提高了 8.2%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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