论文标题
从常规数据概括下采样到图形
Generalizing Downsampling from Regular Data to Graphs
论文作者
论文摘要
缩减采样可产生数据的粗糙,多分辨率表示,例如,它被用来产生大图像的有损压缩和可视化,减少计算成本并增强深层神经表示学习。不幸的是,由于缺乏常规结构,关于如何将其用于图形和链接数据的降采样尚无共识。实际上,上述目标仍然需要减少图形数据,但是减少机制并没有集中在保存拓扑结构和属性上,同时允许进行分辨率进行分辨,就像常规数据下采样中一样。 在本文中,我们朝这个方向迈出了一步,在常规和图形数据中引入了对倒数采样的统一解释。特别是,我们定义了一种粗化机制,该机制是常规数据中可控的稳固性机制的图形结构化对应物。我们证明了在路径长度上的扭曲界限的理论保证,以及在粗图形中保留关键拓扑特性的能力。我们利用这些概念来定义我们在图形分类任务中经验评估的图表合并机制,提供了一种贪婪的算法,该算法允许在GPU上有效地并行实现,并表明它可以与文献中的汇总方法进行比较。
Downsampling produces coarsened, multi-resolution representations of data and it is used, for example, to produce lossy compression and visualization of large images, reduce computational costs, and boost deep neural representation learning. Unfortunately, due to their lack of a regular structure, there is still no consensus on how downsampling should apply to graphs and linked data. Indeed reductions in graph data are still needed for the goals described above, but reduction mechanisms do not have the same focus on preserving topological structures and properties, while allowing for resolution-tuning, as is the case in regular data downsampling. In this paper, we take a step in this direction, introducing a unifying interpretation of downsampling in regular and graph data. In particular, we define a graph coarsening mechanism which is a graph-structured counterpart of controllable equispaced coarsening mechanisms in regular data. We prove theoretical guarantees for distortion bounds on path lengths, as well as the ability to preserve key topological properties in the coarsened graphs. We leverage these concepts to define a graph pooling mechanism that we empirically assess in graph classification tasks, providing a greedy algorithm that allows efficient parallel implementation on GPUs, and showing that it compares favorably against pooling methods in literature.