Improved subspace-based and angle-based outlier detections for fuzzy datasets with a real case study

Author:

Jahromi Alireza Fakharzadeh1,Hajiloei Mehdi1,Dehghani Yeganeh2,Lahoninezhad Sara2

Affiliation:

1. Department of OR, Shiraz University of Technology, Iran

2. Payame Noor University, Iran

Abstract

To overcome curse of dimensionality for outlier detecting in high dimensional dataset, axis-parallel subspace (SOD) and angle-based outlier detection (ABOD) methods were presented. These methods are also friendly used distance-based to detect outliers. In this regard, based on the reality of fuzzy data for explaining the world phenomena, this paper introduces an extended version of both methods for fuzzy dataset. First, the basic concepts of both methods are explained. Next we provide two metrics based on Euclidean and analytic distance to measure distance between fuzzy objects; also Cosine similarity measure formula for calculating the cosine of angle between two difference vectors in high-dimensional fuzzy dataset is illustrated. Then the algorithms to determine outliers of fuzzy datasets by using these metrics and Cosine similarity measure, based on ABOD and SOD algorithms, are presented. Some numerical experimental examples are also presented, in which both real and synthesis datasets are used, For a real numerical examination, we have applied proposed algorithms to data from 15 Iranian petrochemical companies in a fully fuzzy environment. The obtained results show the significant properties of the new methods in detecting outliers.

Publisher

IOS Press

Subject

Artificial Intelligence,General Engineering,Statistics and Probability

Reference13 articles.

1. Solving the nextrelease problem by means of the fuzzy logic inference system withrespect to the competitive market;Alrezaamiri;Journal of Experimental &Theoretical Artificial Intelligence,2020

2. Angiulli F. and Pizzuti C. , Fast outlier detection in high dimensional spaces, In European conference on principles of data mining and knowledge discovery, pages 15–27. Springer, (2002).

3. Dillon M. , Introduction to modern information retrieval: G. salton and m. mcgill. mcgraw-hill, new york (1983). xv+ 448 pp., AA32.95 isbn 0-07-054484-0, (1983).

4. A new outlierdetection method for high dimensional fuzzy databases based on lof;Fakharzadeh Jahromi;Journal of Mathematical Modeling,2018

5. A loop based outlier detectionmethod for high dimensional fuzzy data set;Fakharzadeh Jahromi;Journal ofIntelligent & Fuzzy Systems,2017

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