A novel framework for predicting regression test failures is proposed. The basic principle embodied in the framework is to use performance analysis tools to capture the runtime behaviour of a program as it executes each test in a regression suite. The performance information is then used to build a dynamically predictive model of test outcomes. Our framework is evaluated using a genetic algorithm for dynamic metric selection in combination with state-of-the-art machine learning classifiers. We show that if a program is modified and some tests subsequently fail, then it is possible to predict with considerable accuracy which of the remaining tests will also fail which can be used to help prioritise tests in time constrained testing environme...
The strategy of regression test selection is critical to a new version of software product. Although...
Regression testing is one of the software maintenance activities that is time consuming and expensiv...
The study of problem difficulty is an open issue in Genetic Programming (GP). Thegoal of this work i...
Abstract. A novel framework for predicting regression test failures is proposed. The basic principle...
A novel framework for predicting regression test failures is proposed. The basic principle embodied ...
Automated testing is a safeguard against software regression and provides huge benefits. However, it...
The present paper addresses to the research in the area of regression testing with emphasis on autom...
Evolutionary testing (ET) is a test case generation technique based upon the application of an evolu...
Abstract — When previously developed software is modified, there are chances that there may be lot o...
One of the most important activities in software maintenance is Regression testing. The re-execution...
The quality of the evolved solutions of an evolutionary algorithm (EA) varies across different runs ...
In this paper, we present the Framework for building Failure Prediction Models ((FPM)-P-2), a Machin...
The estimation of problem difficulty is an open issue in genetic programming (GP). The goal of this ...
Evolutionary testing is an optimisation-based test-case generation technique. It can be applied to t...
Symbolic regression, an application domain of genetic programming (GP), aims to find a function whos...
The strategy of regression test selection is critical to a new version of software product. Although...
Regression testing is one of the software maintenance activities that is time consuming and expensiv...
The study of problem difficulty is an open issue in Genetic Programming (GP). Thegoal of this work i...
Abstract. A novel framework for predicting regression test failures is proposed. The basic principle...
A novel framework for predicting regression test failures is proposed. The basic principle embodied ...
Automated testing is a safeguard against software regression and provides huge benefits. However, it...
The present paper addresses to the research in the area of regression testing with emphasis on autom...
Evolutionary testing (ET) is a test case generation technique based upon the application of an evolu...
Abstract — When previously developed software is modified, there are chances that there may be lot o...
One of the most important activities in software maintenance is Regression testing. The re-execution...
The quality of the evolved solutions of an evolutionary algorithm (EA) varies across different runs ...
In this paper, we present the Framework for building Failure Prediction Models ((FPM)-P-2), a Machin...
The estimation of problem difficulty is an open issue in genetic programming (GP). The goal of this ...
Evolutionary testing is an optimisation-based test-case generation technique. It can be applied to t...
Symbolic regression, an application domain of genetic programming (GP), aims to find a function whos...
The strategy of regression test selection is critical to a new version of software product. Although...
Regression testing is one of the software maintenance activities that is time consuming and expensiv...
The study of problem difficulty is an open issue in Genetic Programming (GP). Thegoal of this work i...