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System Evolution Analytics: Deep Evolution and Change Learning of Inter-Connected Entities

机译:系统进化分析:互连实体的深度进化和变化学习

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摘要

There are many entities (or components) in a system that keeps on evolving over system states. The connection (or relationship) between entities also keep on evolving over system state, which makes series of evolving networks. Such networks can be studied over evolving state to provide system evolution information for analysis. This can be achieved with the help of hybrid mining approaches. The network rule information can be detected using network rule mining. The network subgraph information can be retrieved using network subgraph mining. The evolution information is detected using evolution mining. In this paper, we introduce a "System Evolution Analytics" model, which is explained using two pattern-mining techniques: network evolution rule mining and network evolution subgraph mining. The first technique retrieves network evolution rules (NERs), and the second technique retrieves network evolution subgraphs (NESs). The two techniques are prototyped as two System Evolution Analytics tools that are used to do experiments on six evolving systems. We demonstrated the application of the tools for the system evolution analysis.
机译:系统中有许多实体(或组件)不断在系统状态上发展。实体之间的连接(或关系)也随着系统状态的发展而不断发展,从而形成了一系列不断发展的网络。可以在进化状态下研究此类网络,以提供系统进化信息以供分析。这可以借助混合采矿方法来实现。可以使用网络规则挖掘来检测网络规则信息。可以使用网络子图挖掘来检索网络子图信息。使用进化挖掘来检测进化信息。在本文中,我们介绍了一个“系统演化分析”模型,该模型使用两种模式挖掘技术进行了解释:网络演化规则挖掘和网络演化子图挖掘。第一种技术检索网络演化规则(NER),第二种技术检索网络演化子图(NESs)。这两种技术被原型化为两个系统演化分析工具,用于在六个不断发展的系统上进行实验。我们演示了工具在系统演化分析中的应用。

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