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An Intuitionistic Fuzzy Approach With Rough Entropy Measure to Detect Outliers in Two Universal Sets

机译:一种直觉模糊方法,具有粗糙熵测量来检测两个通用集中的异常值

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摘要

The process of recognizing patterns, collecting knowledge from massive databases is called data mining. An object which does not obey and deviates from other objects by their characteristics or behavior are known as outliers. Research works carried out so far on outlier detection were focused only on numerical data, categorical data, and in single universal sets. The main goal of this article is to detect outliers significant in two universal sets by applying the intuitionistic fuzzy cut relationship based on membership and non-membership values. The proposed method, weighted density outlier detection, is based on rough entropy, and is employed to detect outliers. Since it is unsupervised, without considering class labels of decision attributes, weighted density values for all conditional attributes and objects are calculated to detect outliers. For experimental analysis, the Iris dataset from the UCI repository is taken to detect outliers, and comparisons have been made with existing algorithms to prove its efficiency.
机译:识别模式的过程,从大规模数据库收集知识称为数据挖掘。不服从并通过其特征或行为偏离其他物体的对象称为异常值。到目前为止对异常值检测进行的研究工作仅集中在数值数据,分类数据和单个通用集上。本文的主要目标是通过基于会员资格和非隶属度值应用直觉模糊切割关系来检测两个通用集中的异常值。所提出的方法,加权密度异常检测,基于粗糙熵,并用于检测异常值。由于它是无监督的,但不考虑决策属性的类标签,计算所有条件属性和对象的加权密度值以检测异常值。对于实验分析,UCI存储库的IRIS数据集被采用来检测异常值,并且已经使用现有算法进行了比较以证明其效率。

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