A review on search-based mutation testing

Big Data is a larger and more complex collection of datasets that exceeds the processing. In order to improve the productivity of non-testable Big Data, machine learning is able to determine various types of high volume, velocity and variety of data that need to be processed. Search-based mutation t...

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Bibliographic Details
Main Authors: Abdul Rahman, Nor Ashila, Hassan, Rohayanti, Ahmad, Johanna, Zakaria, Noor Hidayah, Sim, Hiew Moi, Sa'adon, Nor Azizah
Format: Article
Published: Excelligent Academia 2022
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Online Access:http://eprints.utm.my/104738/
https://excelligentacademia.com/journal/index.php/AICR/article/view/76
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Summary:Big Data is a larger and more complex collection of datasets that exceeds the processing. In order to improve the productivity of non-testable Big Data, machine learning is able to determine various types of high volume, velocity and variety of data that need to be processed. Search-based mutation testing works by formulating the test data generation/optimization and mutant optimization problems as search problems and by applying meta-heuristic techniques to solve them. This paper aims to present the researches carried out in mutation testing particularly in search-based approaches. 205 papers were reviewed and analyzed from 2014-2018. This paper later on proceeds to elaborate on SBMT functions, First and Higher Order Mutant as well as multi-objective optimization.