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Some inferences on a mixture of exponential and Rayleigh distributions based on fuzzy data

Ashlyn Maria Mathai (Department of Mathematics, National Institute of Technology Calicut, Kozhikode, India)
Mahesh Kumar (Department of Mathematics, National Institute of Technology Calicut, Kozhikode, India)

International Journal of Quality & Reliability Management

ISSN: 0265-671X

Article publication date: 17 April 2023

29

Abstract

Purpose

In this paper, a mixture of exponential and Rayleigh distributions in the proportions α and 1 − α and all the parameters in the mixture distribution are estimated based on fuzzy data.

Design/methodology/approach

The methods such as maximum likelihood estimation (MLE) and method of moments (MOM) are applied for estimation. Fuzzy data of triangular fuzzy numbers and Gaussian fuzzy numbers for different sample sizes are considered to illustrate the resulting estimation and to compare these methods. In addition to this, the obtained results are compared with existing results for crisp data in the literature.

Findings

The application of fuzziness in the data will be very useful to obtain precise results in the presence of vagueness in data. Mean square errors (MSEs) of the resulting estimators are computed using crisp data and fuzzy data. On comparison, in terms of MSEs, it is observed that maximum likelihood estimators perform better than moment estimators.

Originality/value

Classical methods of obtaining estimators of unknown parameters fail to give realistic estimators since these methods assume the data collected to be crisp or exact. Normally, such case of precise data is not always feasible and realistic in practice. Most of them will be incomplete and sometimes expressed in linguistic variables. Such data can be handled by generalizing the classical inference methods using fuzzy set theory.

Keywords

Citation

Mathai, A.M. and Kumar, M. (2023), "Some inferences on a mixture of exponential and Rayleigh distributions based on fuzzy data", International Journal of Quality & Reliability Management, Vol. ahead-of-print No. ahead-of-print. https://doi.org/10.1108/IJQRM-10-2022-0300

Publisher

:

Emerald Publishing Limited

Copyright © 2023, Emerald Publishing Limited

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