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引用次数: 0
摘要
本文介绍了可解释的人工智能(AI)在增强决策方面的应用,并为相应的特刊撰写了社论。人工智能的定义是开发能够通过理解、处理和分析大量数据来完成通常需要人类智能才能完成的任务的计算机系统。几十年来,人工智能一直是信息系统(IS)文献中的主导领域。为此,我们将可解释的人工智能(XAI)定义为能够理解人工智能系统如何决定、预测和执行操作的过程。首先,我们将其当前在改善商业决策方面的作用背景化。其次,我们讨论了 XAI 的三个基本维度,即数据、方法和应用,这三个维度是做出更好、更明智决策的更广泛的创新基础。对于本特刊中的每篇投稿论文,我们都将介绍其在 XAI 决策领域的主要贡献。最后,本文进一步提出了 IS 研究人员在 XAI 领域的未来研究议程。
This paper contextualizes explainable artificial intelligence (AI) for enhanced decision-making and serves as an editorial for the corresponding special issue. AI is defined as the development of computer systems that are able to perform tasks that normally require human intelligence by understanding, processing, and analyzing large amounts of data. AI has been a dominant domain for several decades in the information systems (IS) literature. To this end, we define explainable AI (XAI) as the process that allows one to understand how an AI system decides, predicts, and performs its operations. First, we contextualize its current role for improved business decision-making. Second, we discuss three underlying dimensions of XAI that serve as broader innovation grounds to make better and more informed decisions, i.e., data, method, and application. For each of the contributing papers in this special issue, we describe their major contributions to the field of XAI for decision making. In conclusion, this paper further presents a future research agenda for IS researchers in the XAI field.
期刊介绍:
The common thread of articles published in Decision Support Systems is their relevance to theoretical and technical issues in the support of enhanced decision making. The areas addressed may include foundations, functionality, interfaces, implementation, impacts, and evaluation of decision support systems (DSSs).