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Orthogonal array approach to test case optimization in the field of cellular services

Author Affiliations

  • 1Devi Ahilya University, Devi Ahilya University, Indore--452001, MP, India
  • 2Devi Ahilya University, Devi Ahilya University, Indore--452001, MP, India

Res. J. Mathematical & Statistical Sci., Volume 7, Issue (3), Pages 1-18, September,12 (2019)

Abstract

Orthogonal Array testing is a black box testing technique that is a statistical way of software testing. This paper presents, orthogonal array uses in the field of cellular services. Orthogonal Array provides a best set of well-balanced experiments whereas Taguchi method is based on orthogonal array and perform evaluation to test the sensitivity of response variables to control parameters. Our aim is to attain the optimum setting of the control parameters. The objective of this study was to assess the association of demographic variables of using cell phone with socio-demographic variables. Further, we identified to reduce the number of experimental runs by using Orthogonal Arrays to improve the efficiency of software testing and survival analysis method to analyze customer relationship management.

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