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Trends in Explanations: Understanding and Debugging Data-driven Systems

机译:解释趋势:了解和调试数据驱动系统

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Humans reason about the world around them by seeking to understand why and how something occurs. The same principle extends to the technology that so many of human activities increasingly rely on. Issues of trust, transparency, and understandability are critical in promoting adoption and proper use of systems. However, with increasing complexity of the systems and technologies we use, it is hard or even impossible to comprehend their function and behavior, and justify surprising observations through manual investigation alone. Explanation support can ease humans' interactions with technology: explanations can help users understand a system's function, justify system results, and increase their trust in automated decisions. Our goal in this article is to provide an overview of existing work in explanation support for data-driven processes, through a lens that identifies commonalities across varied problem settings and solutions. We suggest a classification of explainability requirements across three dimensions: the target of the explanation ("What"), the audience of the explanation ("Who"), and the purpose of the explanation ("Why"). We identify dominant themes across these dimensions and the high-level desiderata each implies, accompanied by several examples to motivate various problem settings. We discuss explainability solutions through the lens of the "How" dimension: How something is explained (the form of the explanation) and how explanations are derived (methodology). We conclude with a roadmap of possible research directions for the data management community within the field of explainability in data systems.
机译:通过寻求理解为什么以及如何发生一些事情,人们对他们周围的世界的原因。相同的原则延伸到这项技术,这是许多人类活动越来越依赖的技术。信任,透明度和可理解性问题对于促进采用和适当使用系统至关重要。然而,随着我们使用的系统和技术的复杂性,难以甚至不可能理解其功能和行为,并通过单独进行手工调查来证明令人惊讶的观察。解释支持可以缓解人类与技术的互动:解释可以帮助用户了解系统的功能,证明系统结果,并增加他们对自动决策的信任。我们本文的目标是通过识别各种问题设置和解决方案的共性的镜头来提供对数据驱动过程的解释支持的现有工作概述。我们建议跨三个维度解释要求的分类:解释的目标(“什么”),解释的观众(“谁”),以及解释的目的(“为什么”)。我们识别跨越这些尺寸的主导主题,并且高级Desiderata每个都暗示,伴随着若干示例来激励各种问题设置。我们通过“如何”维度的镜头来讨论解释解决方案:如何解释某些事情(解释的形式)以及导出的解释(方法)。我们在数据系统中的解释性领域内的数据管理界的可能研究方向的路线图结束。

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