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An Effective Hybrid Fuzzy Classifier Using Rough Set Theory for Outlier Detection in Uncertain Environment

机译:一种有效的混合模糊分类器,使用粗糙集理论在不确定环境中对异常检测

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Data mining is the process that is used to extract the meaningful information from the large size dataset. The effective dataset utilization depends on the proper classification of outliers. The main objective of the outlier detection is to extract the abnormal data with inconsistency. The information collection from the different mechanisms is uncertain in nature. The data uncertainty causes the knowledge imperfections namely, vagueness and indiscernibility. The proposed research work implements an efficient fuzzy-rough set classifier for an outlier detection with less computational complexity. The fuzzy logic utilization and the fix of abnormal data easily determine the outliers in the large size database. The proposed classifier is compared with the existing classification methods with performance parameters like average running time, average execution time, execution time, false negative, false positive, true negative, true positive, precision, recall, and accuracy. The comparative analysis depicts the effectiveness of classifier in outlier detection.
机译:数据挖掘是用于从大尺寸数据集中提取有意义信息的过程。有效的数据集利用率取决于异常值的正确分类。异常检测的主要目标是提取不一致的异常数据。来自不同机制的信息收集本质上是不确定的。数据不确定性导致知识缺陷即,模糊和滥用。所提出的研究工作实现了一个高效的模糊粗糙集分类器,用于具有较少计算复杂性的异常检测。模糊逻辑利用率和异常数据的修复容易确定大尺寸数据库中的异常值。将所提出的分类器与具有性能参数的现有分类方法进行比较,如平均运行时间,平均执行时间,执行时间,假阴性,假正,真正的负,真正的正,精度,召回和准确性。比较分析描述了分类器在异常检测中的有效性。

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