Fast Semi-Supervised Learning on Large Graphs: An Improved Green-Function Method

Feiping Nie;Yitao Song;Wei Chang;Rong Wang;Xuelong Li
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Abstract

In the graph-based semi-supervised learning, the Green-function method is a classical method that works by computing the Green's function in the graph space. However, when applied to large graphs, especially those sparse ones, this method performs unstably and unsatisfactorily. We make a detailed analysis on it and propose a novel method from the perspective of optimization. On fully connected graphs, the method is equivalent to the Green-function method and can be seen as another interpretation with physical meanings, while on non-fully connected graphs, it helps to explain why the Green-function method causes a mess on large sparse graphs. To solve this dilemma, we propose a workable approach to improve our proposed method. Unlike the original method, our improved method can also apply two accelerating techniques, Gaussian Elimination, and Anchored Graphs to become more efficient on large graphs. Finally, the extensive experiments prove our conclusions and the efficiency, accuracy, and stability of our improved Green's function method.
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大型图上的快速半监督学习:改进的绿色函数方法
在基于图的半监督学习中,格林函数方法是通过计算图空间中的格林函数来实现的一种经典方法。然而,当应用于大型图,特别是稀疏图时,该方法的性能不稳定,效果不理想。我们对此进行了详细的分析,并从优化的角度提出了一种新的方法。在完全连通图上,该方法等同于Green-function方法,可以看作是具有物理意义的另一种解释,而在非完全连通图上,它有助于解释Green-function方法在大型稀疏图上导致混乱的原因。为了解决这一困境,我们提出了一个可行的方法来改进我们提出的方法。与原始方法不同,我们改进的方法还可以应用两种加速技术,高斯消去和锚定图,以提高对大型图的效率。最后,通过大量的实验验证了我们的结论和改进的格林函数方法的有效性、准确性和稳定性。
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