[PDF][PDF] Trends in explanations: Understanding and debugging data-driven systems
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 …
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 …
Abstract
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
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