Mixed aggregation functions for outliers detection

A scenario that often encounters in the event of aggregating options of different experts for the acquisition of a robust overall consensus is the possible existence of extremely large or small values termed as outliers in this paper, which easily lead to counter-intuitive results in decision aggreg...

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Veröffentlicht in:Journal of intelligent & fuzzy systems 2021-01, Vol.40 (3), p.3999-4012
Hauptverfasser: Zhang, Hengshan, Chen, Chunru, Chen, Tianhua, Wang, Zhongmin, Chen, Yanping
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container_issue 3
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container_title Journal of intelligent & fuzzy systems
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creator Zhang, Hengshan
Chen, Chunru
Chen, Tianhua
Wang, Zhongmin
Chen, Yanping
description A scenario that often encounters in the event of aggregating options of different experts for the acquisition of a robust overall consensus is the possible existence of extremely large or small values termed as outliers in this paper, which easily lead to counter-intuitive results in decision aggregation. This paper attempts to devise a novel approach to tackle the consensus outliers especially for non-uniform data, filling the gap in the existing literature. In particular, the concentrate region for a set of non-uniform data is first computed with the proposed searching algorithm such that the domain of aggregation function is partitioned into sub-regions. The aggregation will then operate adaptively with respect to the corresponding sub-regions previously partitioned. Finally, the overall aggregation is operated with a proposed novel consensus measure. To demonstrate the working and efficacy of the proposed approach, several illustrative examples are given in comparison to a number of alternative aggregation functions, with the results achieved being more intuitive and of higher consensus.
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subjects Agglomeration
Data analysis
Outliers (statistics)
Search algorithms
title Mixed aggregation functions for outliers detection
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