基于新时间中心性算法的进化网络评价

I. Zelinka, Lukas Tomaszek, V. Snás̃el
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引用次数: 2

摘要

在本文中,我们将继续展示两个不同研究领域的相互交叉:复杂网络和进化计算。我们展示了基于达尔文进化论和孟德尔遗传理论的进化算法的动态,也可以可视化为复杂的网络。这样的网络可以用复杂网络科学的经典工具来分析。我们在之前的论文中给出的结果目前是数值演示,而不是理论数学证明。我们提出的问题是,进化算法是否真的创造了复杂的网络结构,以及这些知识是否可以像反馈一样成功地用于控制进化动力学及其改进,以提高进化算法的性能。本文从窗口时间的角度对复杂网络的动力学进行了研究,提出了一种新的窗口时间算法来评价复杂网络的演化动力学。有时间中心性和变化中心性。这些中心是通过Gephi插件和自己的工具实现的。最后是使用实现算法对一些网络进行分析的例子。
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On Evaluation of Evolutionary Networks Using New Temporal Centralities Algorithm
In this paper, we are continuing to show mutual intersection of two different areas of research: complex networks and evolutionary computation. We demonstrate that dynamics of evolutionary algorithms, that are based on Darwin theory of evolution and Mendel theory of genetic heritage, can be also visualized as complex networks. Such network can be then analyzed by means of classical tools of complex networks science. Results presented in our previous papers were currently numerical demonstration rather than theoretical mathematical proofs. We opened question whether evolutionary algorithms really create complex network structures and whether this knowledge can be successfully used like feedback for control of evolutionary dynamics and its improvement in order to increase the performance of evolutionary algorithms. This research paper is focused on the dynamics of complex networks from windows time point of view with proposition of a new windows time algorithm to evaluated evolution dynamics. There are described by temporal centralities and change centrality. These centralities are implemented as Gephi plugin and an own tool. At the end are examples of analysis of some networks using implemented algorithms.
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