Implicit feedback plays a huge role in recommender systems, but its high noise characteristic seriously reduces its effect. To denoise implicit feedback, some efforts have been devoted to graph data augmentation (GDA) methods. Although the bi-level optimization thought of GDA guarantees better recommendation performance theoretically, it also leads to expensive time costs and severe space explosion problems. Specifically, bi-level optimization involves repeated traversal of all positive and negative instances after each optimization of the recommendation model. In this paper, we propose a new denoising paradigm, i.e., Quick Graph Conversion (QGrace), to effectively transform the original interaction graph into a purified (for positive instances) and densified (for negative instances) interest graph during the recommendation model training process. In QGrace, we leverage the gradient matching scheme based on elaborated generative models to fulfill the conversion and generation of an interest graph, elegantly overcoming the high time and space cost problems. To enable recommendation models to run on interest graphs that lack implicit feedback data, we provide a fine-grained objective function from the perspective of alignment and uniformity. The experimental results on three benchmark datasets demonstrate that the QGrace outperforms the state-of-the-art GDA methods and recommendation models in effectiveness and robustness.
翻译:虽然GDA的双层优化想法在理论上保证了更好的建议性表现,但也导致了严重的空间爆炸问题。具体地说,双层优化涉及在建议模式的每次优化后反复翻遍所有正反实例,从而克服高时空成本问题。在本文件中,我们提出了一个新的去音模式,即快速图形转换(QGrace),以便有效地将原始互动图转换成一个纯化的(正面实例)和增积的(负实例)利息图表。在QGrace中,我们利用基于精心开发的缩微模型的梯度匹配办法,完成利息图的转换和生成,优雅地克服高时空成本问题。为了使建议模型能够运行缺乏隐含反馈数据的利息图,我们从调整和统一的角度提供了一个精细的客观功能。三个基准数据模型的实验结果显示GDA的有效性,在三个基准数据模型中显示GDA的州性模型。