Artículos de revistas
Semi-supervised learning guided by the modularity measure in complex networks
Fecha
2012Registro en:
NEUROCOMPUTING, AMSTERDAM, v. 78, n. 1, Special Issue, p. 30-37, FEB 15, 2012
0925-2312
10.1016/j.neucom.2011.04.042
Autor
Silva, Thiago Christiano
Liang, Zhao
Institución
Resumen
Semi-supervised learning techniques have gained increasing attention in the machine learning community, as a result of two main factors: (1) the available data is exponentially increasing; (2) the task of data labeling is cumbersome and expensive, involving human experts in the process. In this paper, we propose a network-based semi-supervised learning method inspired by the modularity greedy algorithm, which was originally applied for unsupervised learning. Changes have been made in the process of modularity maximization in a way to adapt the model to propagate labels throughout the network. Furthermore, a network reduction technique is introduced, as well as an extensive analysis of its impact on the network. Computer simulations are performed for artificial and real-world databases, providing a numerical quantitative basis for the performance of the proposed method.