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AdaDIF: Adaptive Diffusions for Efficient Semi-supervised Learning over Graphs

机译:AdaDIF:自适应扩散,用于图的高效半监督学习

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Diffusion-based classifiers such as those relying on the Personalized PageRank and the Heat kernel, enjoy remarkable classification accuracy at modest computational requirements. Their performance however is affected by the extent to which the chosen diffusion captures a typically unknown label propagation mechanism, that can be specific to the underlying graph, and potentially different for each class. The present work introduces a disciplined, data-efficient approach to learning class-specific diffusion functions adapted to the underlying network topology. The novel learning approach leverages the notion of "landing probabilities" of class-specific random walks, which can be computed efficiently, thereby ensuring scalability to large graphs. This is supported by rigorous analysis of the properties of the model as well as the proposed algorithms. Classification tests on real networks demonstrate that adapting the diffusion function to the given graph and observed labels, significantly improves the performance over fixed diffusions; reaching-and many times surpassing-the classification accuracy of computationally heavier state-of-the-art competing methods, that rely on node embeddings and deep neural networks.
机译:基于扩散的分类器(例如依赖于Personalized PageRank和Heat内核的分类器)在适度的计算要求下享有显着的分类精度。但是,其性能受所选扩散捕获通常未知的标签传播机制的程度的影响,该机制可能特定于基础图,并且对于每个类别可能有所不同。本工作介绍了一种纪律严明,数据有效的方法,用于学习适合基础网络拓扑的特定于类的扩散函数。新颖的学习方法利用了类特定随机游走的“着陆概率”概念,该概念可以有效地计算出来,从而确保了对大图的可伸缩性。通过对模型属性以及所提出算法的严格分析来支持这一点。在真实网络上的分类测试表明,使扩散函数适应给定的图和观察到的标签,可以显着提高固定扩散方面的性能;依靠节点嵌入和深层神经网络,可以达到甚至超过许多计算上最先进的竞争方法的分类精度。

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