Randomized field experiments are the gold standard for evaluating the impact of software changes on customers. In the online domain, randomization has been the main tool to ensure exchangeability. However, due to the different deployment conditions and the high dependence on the surrounding environment, designing experiments for automotive software needs to consider a higher number of restricted variables to ensure conditional exchangeability. In this paper, we show how at Volvo Cars we utilize causal graphical models to design experiments and explicitly communicate the assumptions of experiments. These graphical models are used to further assess the experiment validity, compute direct and indirect causal effects, and reason on the transportability of the causal conclusions.
翻译:随机化的实地实验是评价软件变化对客户的影响的黄金标准。 在在线域中,随机化一直是确保可互换性的主要工具。然而,由于部署条件不同和对周围环境高度依赖,设计汽车软件的实验需要考虑更多的限制性变量,以确保有条件的互换性。在本文中,我们展示了沃尔沃汽车如何利用因果图形模型设计实验并明确传达实验假设。这些图形模型被用来进一步评估实验的有效性,计算直接和间接因果关系,以及因果关系结论的可传输性。