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首页> 外文期刊>Informatica: An International Journal of Computing and Informatics >An Improved Pattern Mining Technique for Graph Pattern Analysis Using Novel Behavior of Artificial Bee Colony Algorithm
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An Improved Pattern Mining Technique for Graph Pattern Analysis Using Novel Behavior of Artificial Bee Colony Algorithm

机译:利用人工蜂菌算法的新行为改进的图案挖掘技术分析

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Rising data complexity and volume in the network has attracted researchers towards substructure analysis. Subgraph mining is an area that has gained remarkable attention in the last couple of years to offer an intelligent analysis of more massive graphs and complicated data structures. It has been observed that graph pattern mining faces issues regarding the matching ruleset and complex instruction set execution problem. This paper introduces modern-day intelligence architecture based on Swarm Intelligence that is cross-validated by supervised machine learning mechanisms. A new behavior incorporated with a new inter and intra hive behavior is incorporated in Swarm based Artificial Bee Colony. The proposed work model is evaluated over two different datasets with more than 4900 nodes in the graph. The proposed framework is evaluated using True Detection Rate, False Detection Rate, precision, and F-Measure, demonstrating an average improvement of 9.8%, 8.35%, 8.35% and 9.15% against existing GraMi work that represent an enhanced performance of the proposed pattern mining technique.
机译:网络中的上升和网络中的卷吸引了研究人员对子结构分析。 Subgraph Mining是在过去几年中获得了显着关注的一个区域,以提供更加巨大的图形和复杂的数据结构的智能分析。已经观察到图形模式挖掘面对有关匹配规则集和复杂指令集执行问题的问题。本文介绍了基于群体智能的现代情报架构,由监督机器学习机制交叉验证。纳入了基于群的人造蜂殖民地的新行为并入了新的行为。所提出的工作模型在两个不同的数据集中评估了图表中超过4900个节点的不同数据集。通过真正的检测率,假检测率,精度和F测量来评估所提出的框架,展示了9.8%,8.35%,8.35%和9.15%的平均提高,而现有的克拉米工作代表了提出的模式的表现增强采矿技术。

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