عنوان المقالة:IRPS – An Efficient Test Data Generation Strategy for Pairwise Testing IRPS – An Efficient Test Data Generation Strategy for Pairwise Testing
ا.د. محمد عصام يونس | Mohammed I. Younis | 13966
Publication Type
Chapter in Book
Arabic Authors
Mohammed I. YounisKamal Zuhairi ZamliNor Ashidi Mat Isa
English Authors
Mohammed I. YounisKamal Zuhairi ZamliNor Ashidi Mat Isa
Abstract
Software testing is an integral part of software engineering. Lack of testing often leads to disastrous consequences including loss of data, fortunes, and even lives. In order to ensure software reliability, many combinations of possible input parameters, hardware/software environments, and system configurations need to be tested and verified against for conformance. Due to costing factors as well as time to market constraints, considering all exhaustive test possibilities would be infeasible (i.e. due to combinatorial explosion problem). Earlier work suggests that pairwise sampling strategy (i.e. based on two-way parameter interaction) can be effective. Building and complementing earlier work, this paper discusses an efficient pairwise test data generation strategy, called IRPS. In doing so, IRPS is compared against existing strategies including AETG and its variations, IPO, SA, GA, ACA, and All Pairs. Empirical results demonstrate that IRPS strategy, in most cases, outperformed other strategies as far as the number of test data generated within reasonable time.
Abstract
Software testing is an integral part of software engineering. Lack of testing often leads to disastrous consequences including loss of data, fortunes, and even lives. In order to ensure software reliability, many combinations of possible input parameters, hardware/software environments, and system configurations need to be tested and verified against for conformance. Due to costing factors as well as time to market constraints, considering all exhaustive test possibilities would be infeasible (i.e. due to combinatorial explosion problem). Earlier work suggests that pairwise sampling strategy (i.e. based on two-way parameter interaction) can be effective. Building and complementing earlier work, this paper discusses an efficient pairwise test data generation strategy, called IRPS. In doing so, IRPS is compared against existing strategies including AETG and its variations, IPO, SA, GA, ACA, and All Pairs. Empirical results demonstrate that IRPS strategy, in most cases, outperformed other strategies as far as the number of test data generated within reasonable time.
Publication Date
4/1/2008
Publisher
Knowledge-Based Intelligent Information and Engineering Systems. KES 2008. Lecture Notes in Computer Science, vol 5177. Springer, Berlin, Heidelberg
Volume No
5177
Issue No
DOI
10.1007/978-3-540-85563-7_63
Pages
493-500
File Link
تحميل (491 مرات التحميل)
External Link
https://doi.org/10.1007/978-3-540-85563-7_63
Keywords
Execution Time Simulated Annealing Greedy Algorithm Algebraic Approach Pairwise Test
رجوع