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Learning Steady-States of Iterative Algorithms over Graphs

机译:在图表中学习迭代算法的稳定状态

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Many graph analytics problems can be solved via iterative algorithms where the solutions are often characterized by a set of steady-state conditions. Different algorithms respect to different set of fixed point constraints, so instead of using these traditional algorithms, can we learn an algorithm which can obtain the same steady-state solutions automatically from examples, in an effective and scalable way? How to represent the meta learner for such algorithm and how to carry out the learning? In this paper, we propose an embedding representation for iterative algorithms over graphs, and design a learning method which alternates between updating the embeddings and projecting them onto the steady-state constraints. We demonstrate the effectiveness of our framework using a few commonly used graph algorithms, and show that in some cases, the learned algorithm can handle graphs with more than 100,000,000 nodes in a single machine.
机译:可以通过迭代算法解决许多图形分析问题,其中解决方案通常具有一组稳态条件。不同算法尊重不同一组固定点约束,所以我们可以学习一种算法,可以以有效且可扩展的方式自动获得相同的稳态解决方案吗?如何为这种算法代表元学习者以及如何进行学习?在本文中,我们提出了对图形迭代算法的嵌入表示,并设计了一种在更新嵌入物之间交替的学习方法,并将它们投影到稳态约束上。我们使用少数常用的图形算法展示我们框架的有效性,并显示在某些情况下,学习算法可以在单个机器中处理具有超过100,000,000个节点的图表。

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