1 research outputs found
Improving Change Prediction Models with Code Smell-Related Information
Code smells represent sub-optimal implementation choices applied by
developers when evolving software systems. The negative impact of code smells
has been widely investigated in the past: besides developers' productivity and
ability to comprehend source code, researchers empirically showed that the
presence of code smells heavily impacts the change-proneness of the affected
classes. On the basis of these findings, in this paper we conjecture that code
smell-related information can be effectively exploited to improve the
performance of change prediction models, ie models having as goal that of
indicating to developers which classes are more likely to change in the future,
so that they may apply preventive maintenance actions. Specifically, we exploit
the so-called intensity index - a previously defined metric that captures the
severity of a code smell - and evaluate its contribution when added as
additional feature in the context of three state of the art change prediction
models based on product, process, and developer-based features. We also compare
the performance achieved by the proposed model with the one of an alternative
technique that considers the previously defined antipattern metrics, namely a
set of indicators computed considering the history of code smells in files. Our
results report that (i) the prediction performance of the intensity-including
models is statistically better than that of the baselines and (ii) the
intensity is a more powerful metric with respect to the alternative
smell-related ones