大型动态图推荐的即时表示学习

Cheng Wu, Chao-Hong Wang, Jingcao Xu, Ziwei Fang, Tiankai Gu, Changping Wang, Yang Song, Kai Zheng, Xiaowei Wang, Guorui Zhou
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引用次数: 1

摘要

推荐系统能够根据用户和物品的历史行为来学习用户的偏好。为了改进表示学习,最近的推荐模型开始利用来自用户表现出的各种行为类型的信息。在现实场景中,用户行为图不仅是多元的,而且是动态的,即随着时间的推移,图会快速演变,增加或删除各种类型的节点和边,从而产生邻域扰动。然而,大多数现有的方法都忽略了这种流动态,因此一旦图有了显著的进化,就需要重新训练,这使得它们不适合在线学习环境。此外,动态图中存在的邻域扰动会降低基于邻域聚合的图模型的性能。为此,我们提出了一种新的动态多路异构图神经网络SUPA。与邻域聚合结构相比,SUPA采用了样本更新-传播结构来缓解邻域干扰。具体来说,对于每个新边,SUPA对一个受影响的子图进行采样,更新两个交互节点的表示,并将交互信息传播到被采样的子图。此外,为了在线增量训练SUPA,我们提出了InsLearn,这是一种用于大型动态图单次训练的高效工作流程。在6个真实数据集上的大量实验结果表明,SUPA具有良好的泛化能力,优于16种最先进的基线方法。源代码可从https://github.com/shatter15/SUPA获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Instant Representation Learning for Recommendation over Large Dynamic Graphs
Recommender systems are able to learn user preferences based on user and item representations via their historical behaviors. To improve representation learning, recent recommendation models start leveraging information from various behavior types exhibited by users. In real-world scenarios, the user behavioral graph is not only multiplex but also dynamic, i.e., the graph evolves rapidly over time, with various types of nodes and edges added or deleted, which causes the Neighborhood Disturbance. Nevertheless, most existing methods neglect such streaming dynamics and thus need to be retrained once the graph has significantly evolved, making them unsuitable in the online learning environment. Furthermore, the Neighborhood Disturbance existing in dynamic graphs deteriorates the performance of neighbor-aggregation based graph models. To this end, we propose SUPA, a novel graph neural network for dynamic multiplex heterogeneous graphs. Compared to neighbor-aggregation architecture, SUPA develops a sample-update-propagate architecture to alleviate neighborhood disturbance. Specifically, for each new edge, SUPA samples an influenced subgraph, updates the representations of the two interactive nodes, and propagates the interaction information to the sampled subgraph. Furthermore, to train SUPA incrementally online, we propose InsLearn, an efficient workflow for single-pass training of large dynamic graphs. Extensive experimental results on six real-world datasets show that SUPA has a good generalization ability and is superior to sixteen state-of-the-art baseline methods. The source code is available at https://github.com/shatter15/SUPA.
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