39 / 2017-01-21 10:22:04
A Modified Genetic Algorithm for Community Detection in Complex Networks
Community detection;Data processing;Genetic Algorithm;Modularity function
Final Paper
刘松然 刘 / 武汉理工大学
Community detection has a very important role in data processing and analysis, which is very hot in recent years. However, traditional algorithms have shortcomings in both time complexity and precision. In this paper, we introduce a Modified Genetic Algorithm (MGA) that with alleles encoding and half uniform crossover to detect community structure. In the algorithm, each allele of the chromosome stands for the community index of the corresponding node. At the same time, half uniform crossover can better prevent the elite individuals from destroying. And we choose modularity function as its fitness function. It does not need to know how many communities the network has. In order to identify our algorithm is effective. We use both artificial random network and real networks to test our algorithm. The experimental results show that the MGA algorithm can be applied to community detection, and its accuracy and time complexity can reach the effect of classical algorithms.
Important Date
  • Conference Date

    Feb 16

    2017

    to

    Feb 18

    2017

  • Jan 20 2017

    Draft paper submission deadline

  • Jan 30 2017

    Draft Paper Acceptance Notification

  • Feb 10 2017

    Final Paper Deadline

  • Feb 18 2017

    Registration deadline