Mobile App Crowdsourced Test Report Consistency Detection via Deep Image-and-Text Fusion Understanding
Shengcheng Yu, Chunrong Fang, Quanjun Zhang, Zhihao Cao, Yexiao Yun,, Zhenfei Cao, Kai Mei, Zhenyu Chen

TL;DR
This paper presents ReCoDe, a deep learning approach that combines image and text analysis to automatically detect inconsistencies in crowdsourced mobile app test reports, improving bug report quality assessment.
Contribution
ReCoDe introduces a novel two-stage deep fusion method for classifying and understanding test reports, addressing report inconsistency issues in crowdsourced mobile app testing.
Findings
ReCoDe achieves high accuracy in detecting report consistency.
The approach effectively distinguishes high-quality from low-quality reports.
User study confirms practical benefits for app developers.
Abstract
Crowdsourced testing, as a distinct testing paradigm, has attracted much attention in software testing, especially in mobile application (app) testing field. Compared with in-house testing, crowdsourced testing shows superiority with the diverse testing environments when faced with the mobile testing fragmentation problem. However, crowdsourced testing also encounters the low-quality test report problem caused by unprofessional crowdworkers involved with different expertise. In order to handle the submitted reports of uneven quality, app developers have to distinguish high-quality reports from low-quality ones to help the bug inspection. One kind of typical low-quality test report is inconsistent test reports, which means the textual descriptions are not focusing on the attached bug-occurring screenshots. According to our empirical survey, only 18.07% crowdsourced test reports are…
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