Title :
Statistical Selection of Relevant Features to Classify Random, Scale Free and Exponential Networks
Author :
Santillán, Claudia Gómez ; López, Tania Turrubiates ; Reyes, Laura Cruz ; Conde, Eustorgio Meza ; Izaguirre, Rogelio Ortega
Author_Institution :
CICATA, Altamira
Abstract :
In this paper a statistical selection of relevant features is presented. An experiment was designed to select relevant and not redundant features or characterization functions, which allow quantitatively discriminating among different types of complex networks. As well there exist researchers given to the task of classifying some networks of the real world through characterization functions inside a type of complex network, they do not give enough evidences of detailed analysis of the functions that allow to determine if all are necessary to carry out an efficient discrimination or which are better functions for discriminating. Our results show that with a reduced number of characterization functions such as the shortest path length, standard deviation of the degree, and local efficiency of the network can discriminate efficiently among the types of complex networks treated here.
Keywords :
complex networks; network theory (graphs); pattern classification; statistical analysis; characterization functions; complex networks; exponential network classification; random network classification; relevant features; scale free network classification; statistical selection; Algorithm design and analysis; Character generation; Complex networks; Exponential distribution; Graphics; IP networks; Routing; Telecommunication traffic;
Conference_Titel :
Electronics, Robotics and Automotive Mechanics Conference, 2007. CERMA 2007
Conference_Location :
Morelos
Print_ISBN :
978-0-7695-2974-5
DOI :
10.1109/CERMA.2007.4367716