Detecting and labeling representative nodes for network-based semi-supervised learning

Bilzã Araújo, Liang Zhao
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引用次数: 3

Abstract

Network-based Semi-Supervised Learning (NBSSL) propagates labels in networks constructed from the original vector-based data sets taking advantage of the network topology. However, the NBSSL classification performance often varies according to the representativeness of the labeled data instances. Herein, we address this issue. We adopt heuristic criteria for selecting data items for manual labeling based on complex networks centrality measures. The numerical analysis are performed on Girvan and Newman homogeneous networks and Lancichinetti-Fortunato-Radicchi heterogeneous networks. Counterintuitively, we found that the highly connective nodes (hubs) are usually not representative, in the sense that random samples performs as well as them or even better. Other than expected, nodes with high clustering coefficient are good representatives of the data in homogeneous networks. On the other hand, in heterogeneous networks, nodes with high betweenness are the good representatives. A high clustering coefficient means that the node lies in a much connected motif (clique) and a high betweenness means that the node lies interconnecting modular structures. Moreover, aggregating the complex networks measures through Principal Components Analysis, we observed that the second principal component (Z2) exhibits potentially promising properties. It appears that Z2 is able to extract discriminative characteristics allowing finding good representatives of the data. Our results reveal that the performance of the NBSSL can be significantly improved by finding and labeling representative data instances.
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基于网络的半监督学习中代表性节点的检测和标记
基于网络的半监督学习(NBSSL)利用网络拓扑结构,在原始基于向量的数据集构建的网络中传播标签。然而,NBSSL的分类性能通常会根据标记数据实例的代表性而变化。在此,我们讨论这个问题。我们采用启发式标准来选择基于复杂网络中心性度量的人工标记数据项。对Girvan和Newman同质网络和Lancichinetti-Fortunato-Radicchi异质网络进行了数值分析。与直觉相反,我们发现高度关联的节点(枢纽)通常不具有代表性,因为随机样本的表现与它们一样好,甚至更好。与预期不同的是,具有高聚类系数的节点是同质网络中数据的良好代表。另一方面,在异构网络中,具有高中间性的节点是很好的代表。高聚类系数意味着节点位于一个紧密连接的基元(集团)中,高中间度意味着节点位于相互连接的模块结构中。此外,通过主成分分析聚合复杂网络测量,我们观察到第二个主成分(Z2)表现出潜在的前景。似乎Z2能够提取判别特征,从而找到数据的良好代表。我们的研究结果表明,通过寻找和标记具有代表性的数据实例,可以显著提高NBSSL的性能。
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