论文标题
图形延长卷积网络:在图形上显式多尺度机器学习,并应用了用于模拟细胞骨架的应用
Graph Prolongation Convolutional Networks: Explicitly Multiscale Machine Learning on Graphs with Applications to Modeling of Cytoskeleton
论文作者
论文摘要
我们定义了一种新型的集合图卷积网络(GCN)模型。使用优化的线性投影操作员在图形的空间尺度之间映射,该集成模型学会了从每个量表中汇总信息以进行最终预测。我们将这些线性投影算子计算为与每个GCN使用的结构矩阵相关的目标函数的INVIMA。配备了这些投影,我们的模型(图形延长 - 跨倾斜网络)的表现优于其他GCN集合模型,可以预测微管弯曲的粗粒机械化学模拟中单体亚基的势能。我们通过测量用于训练每个模型的拖船以及墙壁锁定时间的拖船来证明这些性能的增长。由于我们的模型在多个尺度上学习,因此可以根据预定的粗训练时间表和精细培训的时间表在每个尺度上进行训练。我们检查了几个改编自代数多式(AMG)文献的时间表,并量化了每个文献的计算益处。我们还将该模型与另一个具有优化的输入图的模型进行了比较。最后,我们为网络模型在其输出方面的输入而得出了反向传播规则,并讨论了如何将方法扩展到非常大的图形。
We define a novel type of ensemble Graph Convolutional Network (GCN) model. Using optimized linear projection operators to map between spatial scales of graph, this ensemble model learns to aggregate information from each scale for its final prediction. We calculate these linear projection operators as the infima of an objective function relating the structure matrices used for each GCN. Equipped with these projections, our model (a Graph Prolongation-Convolutional Network) outperforms other GCN ensemble models at predicting the potential energy of monomer subunits in a coarse-grained mechanochemical simulation of microtubule bending. We demonstrate these performance gains by measuring an estimate of the FLOPs spent to train each model, as well as wall-clock time. Because our model learns at multiple scales, it is possible to train at each scale according to a predetermined schedule of coarse vs. fine training. We examine several such schedules adapted from the Algebraic Multigrid (AMG) literature, and quantify the computational benefit of each. We also compare this model to another model which features an optimized coarsening of the input graph. Finally, we derive backpropagation rules for the input of our network model with respect to its output, and discuss how our method may be extended to very large graphs.