In this paper, we study a novel meta aggregation scheme towards binarizing graph neural networks (GNNs). We begin by developing a vanilla 1-bit GNN framework that binarizes both the GNN parameters and the graph features. Despite the lightweight architecture, we observed that this vanilla framework suffered from insufficient discriminative power in distinguishing graph topologies, leading to a dramatic drop in performance. This discovery motivates us to devise meta aggregators to improve the expressive power of vanilla binarized GNNs, of which the aggregation schemes can be adaptively changed in a learnable manner based on the binarized features. Towards this end, we propose two dedicated forms of meta neighborhood aggregators, an exclusive meta aggregator termed as Greedy Gumbel Neighborhood Aggregator (GNA), and a diffused meta aggregator termed as Adaptable Hybrid Neighborhood Aggregator (ANA). GNA learns to exclusively pick one single optimal aggregator from a pool of candidates, while ANA learns a hybrid aggregation behavior to simultaneously retain the benefits of several individual aggregators. Furthermore, the proposed meta aggregators may readily serve as a generic plugin module into existing full-precision GNNs. Experiments across various domains demonstrate that the proposed method yields results superior to the state of the art.
翻译:在本文中,我们研究了一个将图形神经网络(GNNs)二进制的新型元集成计划。我们首先开发了一个将GNN参数和图形特征二进化的香草1-位GNN框架。尽管有轻量结构,我们注意到,尽管这个香草框架在区分图形表层学上缺乏充分的歧视力量,导致性能的急剧下降。这一发现促使我们设计一个元聚合器,以提高香草双进制GNNs的表达力,其中集成计划可以根据二进化特点以可学习的方式对它进行适应性改变。为此,我们提议了两种专门的元区集成聚合器形式,一种叫做Greedy Gumbel Neghibority Agregator(GNA)的独家元集成的元集成集成器,一种叫做可调和混合混合的混合聚合器,用来从候选人群中选择一个单一的最佳聚合器,同时学习一种混合的聚合行为方式,以同时将若干个GNGNBA模型的高级集成模型,从而保留了现有的各种GGGGGGIG的模型。