Learning representations for graph-structured data is essential for graph analytical tasks. While remarkable progress has been made on static graphs, researches on temporal graphs are still in its beginning stage. The bottleneck of the temporal graph representation learning approach is the neighborhood aggregation strategy, based on which graph attributes share and gather information explicitly. Existing neighborhood aggregation strategies fail to capture either the short-term features or the long-term features of temporal graph attributes, leading to unsatisfactory model performance and even poor robustness and domain generality of the representation learning method. To address this problem, we propose a Frame-level Timeline Modeling (FTM) method that helps to capture both short-term and long-term features and thus learns more informative representations on temporal graphs. In particular, we present a novel link-based framing technique to preserve the short-term features and then incorporate a timeline aggregator module to capture the intrinsic dynamics of graph evolution as long-term features. Our method can be easily assembled with most temporal GNNs. Extensive experiments on common datasets show that our method brings great improvements to the capability, robustness, and domain generality of backbone methods in downstream tasks. Our code can be found at https://github.com/yeeeqichen/FTM.
翻译:图表结构数据的学习表现对于图表分析任务至关重要。虽然静态图表取得了显著进展,但时间图表的研究仍处于初始阶段。时间图表学习方法的瓶颈在于邻里聚合战略,根据这一战略,图形属性共享并明确收集信息。现有的街坊汇总战略既不能反映短期特征,也不能反映时间图属性的长期特征,导致模型性能不尽人意,甚至缺乏稳健性和代表性学习方法的广度。为解决这一问题,我们提议了一个框架级时间线建模方法(FTM),该方法有助于捕捉短期和长期特征,从而在时间图上学习更多信息化的表述。特别是,我们提出了一种新的基于链接的建构技术,以保存短期特征,然后纳入一个时间线性集成模块,作为长期特征来捕捉图形演变过程的内在动态。我们的方法可以很容易地与大多数时间性GNNS组合在一起。关于共同数据集的广泛实验表明,我们的方法大大改进了下游中的主干/F任务的能力、稳健性和域性。我们的代码可以在 http://chenchereqiam 任务中找到。</s>