The Choice of an Appropriate Stochastic Order to Aggregate Random Variables
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Universidad de Oviedo
info
Argitaletxea: Springer
ISSN: 2194-5357, 2194-5365
ISBN: 9783031155086, 9783031155093
Argitalpen urtea: 2022
Orrialdeak: 40-47
Mota: Liburuko kapitulua
Laburpena
Aggregation functions have been widely used as a method to fuse data in a large number of applications. In most of them, the data can be modeled as a simple random sample. Thus, it is reasonable to treat the aggregated values as random variables. In this paper, the concept of aggregation functions of random variables with respect to a stochastic order is presented. Additionally, four alternatives for the choice of the adequate order are considered and their benefits and drawbacks are studied.
Finantzaketari buruzko informazioa
This research has been partially supported by the Spanish Ministry of Science and Technology (TIN-2017-87600-P and PGC2018- 098623-B-I00).Finantzatzaile
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Ministry of Science and Technology
Spain
- TIN-2017-87600-P
- PGC2018- 098623-B-I00
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