SEMar 13, 2019

Is the Stack Distance Between Test Case and Method Correlated With Test Effectiveness?

arXiv:1903.05432v112 citationsHas Code
Originality Incremental advance
AI Analysis

This work addresses the computational burden of mutation testing for software developers, offering a more efficient method to approximate test effectiveness, though it is incremental as it builds on existing mutation testing concepts.

The paper tackles the problem of mutation testing's high computational cost by proposing a lightweight alternative based on stack distance, showing a correlation up to 0.58 with test effectiveness and achieving 92.9% precision and 93.4% recall in predicting mutation results.

Mutation testing is a means to assess the effectiveness of a test suite and its outcome is considered more meaningful than code coverage metrics. However, despite several optimizations, mutation testing requires a significant computational effort and has not been widely adopted in industry. Therefore, we study in this paper whether test effectiveness can be approximated using a more light-weight approach. We hypothesize that a test case is more likely to detect faults in methods that are close to the test case on the call stack than in methods that the test case accesses indirectly through many other methods. Based on this hypothesis, we propose the minimal stack distance between test case and method as a new test measure, which expresses how close any test case comes to a given method, and study its correlation with test effectiveness. We conducted an empirical study with 21 open-source projects, which comprise in total 1.8 million LOC, and show that a correlation exists between stack distance and test effectiveness. The correlation reaches a strength up to 0.58. We further show that a classifier using the minimal stack distance along with additional easily computable measures can predict the mutation testing result of a method with 92.9% precision and 93.4% recall. Hence, such a classifier can be taken into consideration as a light-weight alternative to mutation testing or as a preceding, less costly step to that.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes