Open Access Open Access  Restricted Access Subscription Access

Search-Based Software Test Data Generation Using Evolutionary Computation


Affiliations
1 Department of Information Technology, Pondicherry Engineering College, Puducherry, India
 

Search-based Software Engineering has been utilized for a number of software engineering activities. One area where Search-Based Software Engineering has seen much application is test data generation.

Evolutionary testing designates the use of metaheuristic search methods for test case generation. The search space is the input domain of the test object, with each individual or potential solution, being an encoded set of inputs to that test object. The fitness function is tailored to find test data for the type of test that is being undertaken.

Evolutionary Testing (ET) uses optimizing search techniques such as evolutionary algorithms to generate test data. The effectiveness of GA-based testing system is compared with a Random testing system. For simple programs both testing systems work fine, but as the complexity of the program or the complexity of input domain grows, GA-based testing system significantly outperforms Random testing.


Keywords

Search-Based Software Engineering, Evolutionary Algorithms, Optimization Problem, Evolutionary Testing, Meta-Heuristic Search Techniques.
User
Notifications
Font Size

Abstract Views: 327

PDF Views: 177




  • Search-Based Software Test Data Generation Using Evolutionary Computation

Abstract Views: 327  |  PDF Views: 177

Authors

P. Maragathavalli
Department of Information Technology, Pondicherry Engineering College, Puducherry, India

Abstract


Search-based Software Engineering has been utilized for a number of software engineering activities. One area where Search-Based Software Engineering has seen much application is test data generation.

Evolutionary testing designates the use of metaheuristic search methods for test case generation. The search space is the input domain of the test object, with each individual or potential solution, being an encoded set of inputs to that test object. The fitness function is tailored to find test data for the type of test that is being undertaken.

Evolutionary Testing (ET) uses optimizing search techniques such as evolutionary algorithms to generate test data. The effectiveness of GA-based testing system is compared with a Random testing system. For simple programs both testing systems work fine, but as the complexity of the program or the complexity of input domain grows, GA-based testing system significantly outperforms Random testing.


Keywords


Search-Based Software Engineering, Evolutionary Algorithms, Optimization Problem, Evolutionary Testing, Meta-Heuristic Search Techniques.