CADV: A software visualization approach for code annotations distribution [article]

Phyllipe Lima, Jorge Melegati, Everaldo Gomes, Nathalya Stefhany Pereira, Eduardo Guerra, Paulo Meirelles
2022 arXiv   pre-print
Code annotations is a widely used feature in Java systems to configure custom metadata on programming elements. Their increasing presence creates the need for approaches to assess and comprehend their usage and distribution. In this context, software visualization has been studied and researched to improve program comprehension in different aspects. This study aimed at designing a software visualization approach that graphically displays how code annotations are distributed and organized in a
more » ... ftware system and developing a tool, as a reference implementation of the approach, to generate views and interact with users. We conducted an empirical evaluation through questionnaires and interviews to evaluate our visualization approach considering four aspects: effectiveness for program comprehension, perceived usefulness, perceived ease of use, and suitability for the intended audience. The resulting data was used to perform a qualitative and quantitative analysis. The tool identifies package responsibilities providing visual information about their annotations at different levels. Using the developed tool, the participants achieved a high correctness rate in the program comprehension tasks and performed very well in questions about the overview of the system under analysis. Finally, participants perceived that the tool outperforms existing approaches for code inspection when searching for information related to code annotations. The results show that the visualization approach using the developed tool is effective in program comprehension tasks related to code annotations, which can also be used to identify responsibilities in the application packages. Moreover, it was evaluated as suitable for newcomers to overview the usage of annotations in the system and for architects to perform a deep analysis that can potentially detect misplaced annotations and abnormal growths on their usage.
arXiv:2112.10938v3 fatcat:h3e7vj3chjef3dco65vuw22e6q