基于蚁群算法的事件日志分类避障策略

V. Vijaykumar, R. Chandrasekar, T. Srinivasan
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引用次数: 3

摘要

本文提出了一种新的蚁群优化算法,利用避障策略从事件日志文件数据集中挖掘分类规则。如果分类规则的收敛时间很高,或者对规则的连续修改之间的变化程度超过某个阈值,则当分类规则逐渐被发现时,假定路径上存在障碍。根据关联平均障碍物密度为区域内的完整路径分配区域并对其进行优先级排序,按照区域优先级的降序发现分类规则,从而在更无障碍的路径上更快地进行挖掘。实验结果描述了与流行的C5算法在事件日志文件数据集上的比较研究
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Obstacle Avoidance Strategy to Ant Colony Optimization Algorithm for Classification in Event Logs
This paper presents a novel approach to the ant colony optimization algorithm by using an obstacle avoidance strategy for mining classification rules from event log file datasets. An obstacle is purported to be present on a path as a classification rule is incrementally discovered if the rule convergence time is high or the degree of change between successive modifications to the rule exceeds a certain threshold value. By assigning zones to complete paths in a region based on the associated average obstacle density and prioritizing them, classification rules are discovered in descending order of the priorities of zones to enable faster mining in more obstacle-free paths. Experimental results are shown describing a comparative study with the popular C5 algorithm for the event log file datasets
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