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논문 기본 정보

자료유형
학술저널
저자정보
Seung-Hee Han (한국전기통신공사) Yong-Rae Kwon (한국과학기술원)
저널정보
Korean Institute of Information Scientists and Engineers Journal of Computing Science and Engineering Journal of Computing Science and Engineering Vol.2 No.3
발행연도
2008.9
수록면
274 - 300 (27page)

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초록· 키워드

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Software testing cost can be reduced if the process of testing is automated. However, the test data generation task is still performed mostly by hand although numerous theoretical works have been proposed to automate the process of generating test data and even commercial test data generators appeared on the market. Despite prolific research reports, few attempts have been made to evaluate and characterize those techniques. Therefore, a lot of works have been proposed to automate the process of generating test data. However, there is no overall evaluation and comparison of these techniques. Evaluation and comparison of existing techniques are useful for choosing appropriate approaches for particular applications, and also provide insights into the strengths and weaknesses of current methods. This paper conducts experiments on four representative test data generation techniques and discusses the experimental results. The results of the experiments show that the genetic algorithm (GA)-based test data generation performs the best. However, there are still some weaknesses in the GA-based method. Therefore, we modify the standard GA-based method to cope with these weaknesses. The experiments are carried out to compare the standard GA-based method and two modified versions of the GA-based method.

목차

1. INTRODUCTION
2. AUTOMATIC TEST DATA GENERATION
3. EVALUATION OF TEST DATA GENERATION TECHNIQUES
4. IMPROVEMENT OF TIME EFFICIENCY OF THE GA-BASED TEST DATA GENERATION
5. CONCLUSIONS AND FUTURE WORK
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