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What and Who

Z-ACM: An approximate calculation method of Z-numbers for large data sets based on kernel density estimation and its application in decision-making

Ruonan Zhu
Northwest A&F University
PhD Application Talk
AG 1, AG 2, AG 3, INET, AG 4, AG 5, D6, SWS, RG1, MMCI  
AG Audience
English

Date, Time and Location

Friday, 27 January 2023
08:30
30 Minutes
Virtual talk
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Abstract

The concept of a Z-number has obtained plenty of interest for its ability to represent uncertain and partially reliable information. Z-numbers are also widely used in decision-making for the reason that they can describe real-world information and human cognition more flexibly. However, the classical arithmetic complexity of Z-numbers is a burden in real applications, especially under large data sets. How to both retain the inherent meaning of Z-numbers and reduce the calculation complexity is a critical issue in the real Znumber-based applications. Limited theoretical progress has so far been discussed. To balance the gap between the arithmetic complexity and the inherent meaning of Z-numbers, we propose an approximate calculation method of Z-numbers (Z-ACM) based on kernel density estimation. The main ideas are as follows: first, kernel density estimation is used to partition/group Z-numbers with the total utility of Z-numbers; second, aggregate the representative Z-number in each partitioned interval using the classical arithmetic framework of Z-numbers. Based on the proposed Z-ACM, a fast decision model (FDM) is designed to deal with the issue of multi-criteria decision-making. Some examples with comparative analysis and rationality analysis are conducted to illustrate the effectiveness of the proposed methodology.

Contact

Jennifer Gerling
+49 681 9325 1801
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Virtual Meeting Details

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Jennifer Gerling, 01/26/2023 17:06
Jennifer Gerling, 01/26/2023 17:05 -- Created document.