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Active Semi-Supervised Learning Using Sampling Theory for Graph Signals

机译:使用采样理论的图形信号主动半监督学习

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We consider the problem of offline, pool-based active semi-supervised learning on graphs. This problem is important when the labeled data is scarce and expensive whereas unlabeled data is easily available. The data points are represented by the vertices of an undirected graph with the similarity between them captured by the edge weights. Given a target number of nodes to label, the goal is to choose those nodes that are most informative and then predict the unknown labels. We propose a novel framework for this problem based on our recent results on sampling theory for graph signals. A graph signal is a real-valued function defined on each node of the graph. A notion of frequency for such signals can be defined using the spectrum of the graph Laplacian matrix. The sampling theory for graph signals aims to extend the traditional Nyquist-Shannon sampling theory by allowing us to identify the class of graph signals that can be reconstructed from their values on a subset of vertices. This approach allows us to define a criterion for active learning based on sampling set selection which aims at maximizing the frequency of the signals that can be reconstructed from their samples on the set. Experiments show the effectiveness of our method.
机译:我们考虑图上基于池的离线主​​动半监督学习的问题。当标记的数据稀少且昂贵而未标记的数据易于获得时,此问题很重要。数据点由无向图的顶点表示,它们之间的相似性由边缘权重捕获。给定要标记的目标节点数,目标是选择信息最丰富的那些节点,然后预测未知的标签。我们基于对图形信号采样理论的最新研究结果,为这个问题提出了一个新颖的框架。图信号是在图的每个节点上定义的实值函数。可以使用图拉普拉斯矩阵的频谱来定义此类信号的频率概念。图信号的采样理论旨在通过允许我们识别可从顶点子集上的值重构的图信号类别来扩展传统的Nyquist-Shannon采样理论。这种方法使我们能够基于采样集选择来定义主动学习的准则,该准则旨在使可以从集合上的样本重构的信号频率最大化。实验证明了我们方法的有效性。

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