toplogo
Logga in

Developers' Perception: Bug Reporting and Software Quality


Centrala begrepp
Programmers often misunderstand the importance of bug reporting in software quality.
Sammanfattning

The article discusses how programmers sometimes view bug reports negatively, leading to underreporting and misconceptions about the value of testing. A survey of 102 programmers revealed that only a third perceive bug quantity as indicative of higher quality. The study highlights the impact of withholding bug reports on projects and the misconception that absence of bugs indicates high coding quality. Results show that programmers are not afraid to report bugs but do not consider a larger number of reports as an indicator of higher quality. The research aims to shed light on programmers' perceptions regarding bug reporting and its relation to software quality.

edit_icon

Anpassa sammanfattning

edit_icon

Skriv om med AI

edit_icon

Generera citat

translate_icon

Översätt källa

visual_icon

Generera MindMap

visit_icon

Besök källa

Statistik
Through a survey of 102 programmers, only a third perceive the quantity of bugs found and rectified in a repository as indicative of higher quality. More than 60% of answers were in favor of improving and reporting a sample low-quality bug report. 33% of respondents consider software quality positively correlated with the number of bugs reported. Majority (60%) are comfortable with reporting bugs, while 40% prefer technical improvements over avoidance.
Citat
"Programmers may believe that the absence of bug reports in their projects is a sign of high coding quality." "Some authors raised concerns about programmers misunderstanding the value of testing." "Results demonstrate that libraries with more closed bug reports are preferable."

Viktiga insikter från

by Vitaly Alifa... arxiv.org 03-19-2024

https://arxiv.org/pdf/2403.10806.pdf
Developers' Perception

Djupare frågor

Why do developers prioritize metrics like GitHub stars over bug reports for assessing software quality?

Developers may prioritize metrics like GitHub stars over bug reports for assessing software quality due to several reasons. Firstly, GitHub stars are often perceived as a measure of popularity and community approval rather than an indicator of actual code quality. Developers might believe that projects with more stars have a higher likelihood of being well-maintained, supported by the community, and potentially more reliable. Secondly, the visibility provided by GitHub stars can influence developers' perceptions of a project's reputation and credibility. Projects with a high number of stars may be seen as more trustworthy or established in the developer community, leading to an assumption that they are of higher quality. Additionally, some developers may find it easier to assess projects based on quantitative metrics like GitHub stars rather than diving into the details of bug reports. Stars provide a quick snapshot that can help them make initial judgments about a project without delving deep into technical aspects such as bug fixes and code improvements. Overall, while bug reports are crucial for identifying and addressing issues within software projects, factors like GitHub stars offer a simpler way for developers to gauge overall project popularity and community support quickly.

Is a sample size of 102 programmers sufficient to draw conclusions about common thinking in software development?

A sample size of 102 programmers can provide valuable insights into common trends or patterns in software development attitudes; however, its sufficiency depends on various factors. Firstly, the representativeness of the sample is crucial. If the participants accurately reflect diverse backgrounds, experiences, roles (developers vs managers), industries (tech companies vs startups), etc., then findings from this group could be indicative of broader industry sentiments. Secondly, considering statistical significance is essential when determining if results from this sample can be generalized across larger populations. Statistical tests can help ascertain whether any observed patterns are likely due to chance or actually representative trends among all software professionals. Moreover, qualitative data obtained from surveys should ideally be supplemented with other research methods such as interviews or observations to gain deeper insights into participants' perspectives beyond what limited survey options allow. In conclusion: While 102 respondents offer valuable insights into developer perceptions regarding bug reporting and quality assessment metrics like GitHub stars; researchers must consider representativeness and statistical significance before confidently generalizing findings across all software development contexts.

How can researchers ensure more comprehensive data collection beyond limited options provided in surveys?

Researchers aiming for comprehensive data collection beyond limited survey options should employ mixed-method approaches combining surveys with qualitative methods: Interviews: Conducting structured or semi-structured interviews allows researchers to delve deeper into participants' responses during surveys. This method enables open-ended questions that reveal nuanced opinions not captured through multiple-choice selections. Focus Groups: Bringing together small groups facilitates interactive discussions where participants share diverse viewpoints on specific topics related to bug reporting attitudes or metric preferences. Observations: Observing developers at work provides real-time insights into their behaviors concerning testing practices and bug reporting habits. Document Analysis: Reviewing relevant documents such as past bug reports submitted by developers offers additional context on how they perceive bugs within their projects. 5 .Triangulation: Combining multiple data sources helps validate findings by cross-verifying information gathered through different methods. By incorporating these strategies alongside traditional survey methodologies,researchers enhance their understandingof complex phenomena withinsoftwaredevelopmentandensurecomprehensiveandrobustdatacollectionprocesses
0
star