通过深度截图理解优先考虑众包测试报告

Shengcheng Yu, Chunrong Fang, Zhenfei Cao, Xu Wang, Tongyu Li, Zhenyu Chen
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引用次数: 15

摘要

众包测试在移动应用测试中越来越占主导地位,但对于应用开发者来说,检查数量惊人的测试报告是一个巨大的负担。已有许多研究提出仅基于文本或附加简单图像特征来处理测试报告。然而,在移动应用测试中,测试报告中包含的文本内容很紧凑,信息不充分。许多屏幕截图作为补充包含了比文本更丰富的信息。这一趋势促使我们基于对截图的深入理解来优先考虑众包测试报告。在本文中,我们提出了一种新颖的众包测试报告优先排序方法,即DeepPrior。我们首先用一个新引入的特性来表示众包测试报告,即DeepFeature,它包括所有小部件及其文本、坐标、类型,甚至是基于对应用程序截图的深度分析的意图,以及众包测试报告中的文本描述。DeepFeature包括Bug Feature(直接描述Bug)和Context Feature(描述Bug的完整背景)。DeepFeature的相似度用于表示测试报告的相似度,并对众包测试报告进行优先级排序。我们将相似度正式定义为DeepSimilarity。我们还进行了一个实证实验,以评估所提出的技术与大型数据集组的有效性。结果表明,DeepPrior很有前途,它的性能比目前最先进的方法要好,开销不到一半。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prioritize Crowdsourced Test Reports via Deep Screenshot Understanding
Crowdsourced testing is increasingly dominant in mobile application (app) testing, but it is a great burden for app developers to inspect the incredible number of test reports. Many researches have been proposed to deal with test reports based only on texts or additionally simple image features. However, in mobile app testing, texts contained in test reports are condensed and the information is inadequate. Many screenshots are included as complements that contain much richer information beyond texts. This trend motivates us to prioritize crowdsourced test reports based on a deep screenshot understanding. In this paper, we present a novel crowdsourced test report prioritization approach, namely DeepPrior. We first represent the crowdsourced test reports with a novelly introduced feature, namely DeepFeature, that includes all the widgets along with their texts, coordinates, types, and even intents based on the deep analysis of the app screenshots, and the textual descriptions in the crowdsourced test reports. DeepFeature includes the Bug Feature, which directly describes the bugs, and the Context Feature, which depicts the thorough context of the bug. The similarity of the DeepFeature is used to represent the test reports' similarity and prioritize the crowdsourced test reports. We formally define the similarity as DeepSimilarity. We also conduct an empirical experiment to evaluate the effectiveness of the proposed technique with a large dataset group. The results show that DeepPrior is promising, and it outperforms the state-of-the-art approach with less than half the overhead.
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