基于模糊蚂蚁挖掘算法的肝炎数据挖掘

S. Madhusudhanan, M. Karnan, K. Gandhi
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引用次数: 10

摘要

数据挖掘或数据库中的知识发现,简单来说就是从数据中提取隐含的、先前未知的和潜在有用的信息。它涉及从大型数据库中发现隐藏知识、意外模式和新规则。数据库中的知识发现是识别数据中有效的、可能有用的和最终可理解的结构的过程。从基准库中收集肝炎数据集,并显示训练数据集。数据挖掘任务包括分类、聚类、回归等,为了发现分类规则,采用蚁群挖掘算法。蚂蚁挖掘算法是基于蚂蚁寻找食物的行为。该方法采用基于模糊蚂蚁挖掘算法(FACO)提取分类规则。取训练集,初始应用FACO算法对分类属性进行分类。利用启发式函数,生成最佳规则。然后,根据质量函数对规则进行剪枝,得到优化后的规则。使用测试用例来确定所设计系统的准确性。采用FACO对分类规则进行改进,提高了分类规则的质量。该项目旨在以最大的精度获得最佳规则。它为医生提供了次要意见,并在早期预测肝炎。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fuzzy Based Ant Miner Algorithm in Datamining for Hepatitis
Data mining or knowledge discovery in databases in simple words is the non-trivial extraction of implicit, previously unknown and potentially useful information from data. It deals with the discovery of hidden knowledge, unexpected patterns and new rules from large databases. Knowledge discovery in databases is the process of identifying a valid, potentially useful and ultimately understandable structure in data. Datasets of hepatitis are collected from the benchmark repository and training datasets are revealed. Data mining tasks including classification, clustering, regression etc., In order to discover the classification rules, ant miner algorithm is used. The ant miner algorithm is based on the behavior of ants in searching of food. The proposed method extracts the classified rules using Fuzzy Based Ant Miner Algorithm (FACO). The training set is taken and the FACO algorithm is applied initially for classifying the categorical attributes. Using heuristic functions, the best rules are generated. Next, rule pruning is performed to obtain the optimized rules based on quality functions. The accuracy of the designed system is determined using the test cases. FACO is used to bring out with better quality for the classified rules. The project aims at obtaining the best rules with maximum accuracy. It provides the secondary opinion for the doctors and it predicts the hepatitis in the earlier stage.
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