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Learning product set models of fault triggers in high-dimensional software interfaces

机译:在高维软件界面中学习故障触发器的产品集模型

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We propose a method for generating interpretable descriptions of inputs that cause faults in high-dimensional software interfaces. Our method models the set of fault-triggering inputs as a Cartesian product and identifies this set by actively querying the system under test. The active sampling scheme is very efficient in the common case that few fields in the interface are relevant to causing the fault. This scheme also solves the problem of efficiently finding sufficient examples to model rare faults, which is problematic for other learning-based methods. Compared to other techniques, ours requires no parameter turning or post-processing in order to produce useful results. We analyze the method qualitatively, theoretically, and empirically. An experimental evaluation demonstrates superior performance and reliability compared to a basic decision tree approach. We also briefly discuss how the method has assisted in debugging a commercial autonomous ground vehicle system.
机译:我们提出了一种用于生成在高维软件界面中引起故障的输入的可解释描述的方法。我们的方法将故障触发输入的集合建模为笛卡尔积,并通过主动查询被测系统来识别该集合。在接口很少有字段与引起故障相关的常见情况下,主动采样方案非常有效。该方案还解决了有效地找到足够的示例以对罕见故障进行建模的问题,这对于其他基于学习的方法是有问题的。与其他技术相比,我们的技术不需要参数转换或后处理即可产生有用的结果。我们定性,理论和经验地分析该方法。与基本的决策树方法相比,实验评估显示出卓越的性能和可靠性。我们还将简要讨论该方法如何帮助调试商用自动地面车辆系统。

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