Experimental Evaluation of A New Ranking Formula for Spectrum
based Fault Localization
Qusay Idrees Sarhan
and Árpád
Beszédes
Spectrum-Based Fault Localization (SBFL) uses a
mathematical formula to determine a suspicion score for each
program element (such as a statement, method, or class) based on
fundamental statistics (e.g., how many times each element is
executed and not executed in passed and failed tests) taken from
test coverage and results. Based on the calculated scores, program
elements are then ordered from most suspicious to least
suspicious. The elements with the highest scores are thought to be
the most prone to error. The final ranking list of program
elements aids developers in debugging when looking for the source
of a fault in the program under test.
In this paper, we present a new SBFL ranking formula that enhances
a base formula by ranking code elements slightly higher than
others that are executed by more failed tests and less passing
ones. Its novelty is that it breaks ties between the elements that
share the same suspicion score of the base formula. Experiments
were conducted on six single-fault programs of the Defects4J
dataset to evaluate the effectiveness of the proposed formula. The
results show that our new formula when compared to three
widely-studied SBFL formulas, achieved a better performance in
terms of average ranking. It also achieved positive results in all
of the Top-N categories and increased the number of cases where
the faulty element became the top-ranked element by 13–23%.
Keywords:
Debugging, fault localization, spectrum-based
fault localization, formulas, ranking list.
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