An Effective Meta-Heuristic Cuckoo Search Algorithm for Test Suite Optimization

Automation testing is the process of generating test data without any human interventions. In recent times, nature-inspired solutions are planned, tested and validated successfully in many areas for the purpose of optimization. One such meta heuristic technique is Cuckoo Algorithm (CA) that receives...

Full description

Saved in:
Bibliographic Details
Published inInformatica (Ljubljana) Vol. 41; no. 3; pp. 363 - 377
Main Authors Khari, Manju, Kumar, Prabhat
Format Journal Article
LanguageEnglish
Published Ljubljana Slovenian Society Informatika / Slovensko drustvo Informatika 01.09.2017
Subjects
Online AccessGet full text
ISSN0350-5596
1854-3871

Cover

More Information
Summary:Automation testing is the process of generating test data without any human interventions. In recent times, nature-inspired solutions are planned, tested and validated successfully in many areas for the purpose of optimization. One such meta heuristic technique is Cuckoo Algorithm (CA) that receives its sole inspiration from the behavior of cuckoo, who has the ability to resolve complex issues using simple initial conditions and limited knowledge of the search space. This paper presents a cost effective and time efficient algorithm inspired from cuckoo for optimizing the test data. On comparing the proposed algorithm with existing Firefly Algorithm (FA) and Hill Climbing (HC) algorithms, it was found that CA outperforms both FA and HC in terms of the test data optimization process. The work done in the current study would be helpful to testers in generating optimized test data which would result in saving of both testing cost and time.
Bibliography:ObjectType-Article-1
SourceType-Scholarly Journals-1
ObjectType-Feature-2
content type line 14
ISSN:0350-5596
1854-3871