一个使用自然启发算法挖掘社区的框架

N. Arora, H. Banati
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引用次数: 0

摘要

自然智能启发式技术已经证明了它们为许多现实生活中的复杂问题提供可接受的解决方案的能力。它们从复杂网络中挖掘社区的潜力已经被许多研究人员成功地测试过。随着新的鲁棒和高效的基于自然的算法的发展速度的增长,人们强烈需要一个通用的框架来发展社区,以适应任何现有的或新的基于自然的算法。本文提出了一个框架,应用基于自然智能的优化策略,使用任何受自然启发的算法来检测社区。所提出的框架可以作为一种抽象,用于评估一组新的/现有的基于自然的方法,用于检测处于不同最优水平的群体,以选择最有效的算法。通过考虑算法提取不同最优级别的群体,可以揭示复杂网络中普遍存在的多种分组模式,并有助于规划战略决策。该框架由四个突出的、独立的阶段组成:分析、初始化、演化和结果生成阶段。对社区检测的任何新的/现有的元启发式或进化算法的评估可以简单地通过修改进化阶段来完成。因此,该框架为社区检测领域的研究人员提供了一个易于使用的灵活平台。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A framework to mine communities using nature inspired algorithms
Natural intelligence heuristic techniques have demonstrated their capability to provide acceptable solutions to many real life complex problems. Their potential to mine communities from complex networks has been successfully tested by many researchers. With the growing rate of development of new robust and efficient nature based algorithms, a strong need is felt for a generalized framework to evolve communities which can accommodate any existing or new nature based algorithm. This paper proposes a framework for applying natural intelligence based optimization strategies to detect communities using any nature inspired algorithm. The proposed framework can serve as an abstraction for evaluating a set of new/existing nature based methodologies for detecting communities at varied level of optimalities in order to select the most efficient algorithm. Extraction of communities at varied optimality levels by considered algorithms can reveal multiple grouping patterns prevailing in the complex network and can help in planning strategic decision. The framework consists of four prominent, independent phases: The Analysis, Initialization, Evolution and Result Generation Phase. Evaluation of any new/existing metaheuristic or evolutionary algorithm for community detection may be simply done by modifying the Evolution Phase. The framework thus provides an easy to use flexible platform for use by researchers in the domain of community detection.
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