可解释的知识支持系统的基础

Shruthi Chari, Daniel Gruen, O. Seneviratne, D. McGuinness
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引用次数: 25

摘要

自人工智能早期以来,可解释性一直是一个重要的目标。已经发展了几种解释的方法。然而,这些方法中的许多都与当时人工智能系统的能力紧密结合在一起。随着人工智能系统在某些关键环境中的扩散,有必要向最终用户和决策者解释它们。我们介绍了可解释的人工智能系统的历史概述,重点是知识支持系统,跨越专家系统,认知助理,语义应用和机器学习领域。此外,借鉴过去方法的优势,并确定使解释以用户和上下文为中心所需的差距,我们提出了解释和可解释的知识支持系统的新定义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Foundations of Explainable Knowledge-Enabled Systems
Explainability has been an important goal since the early days of Artificial Intelligence. Several approaches for producing explanations have been developed. However, many of these approaches were tightly coupled with the capabilities of the artificial intelligence systems at the time. With the proliferation of AI-enabled systems in sometimes critical settings, there is a need for them to be explainable to end-users and decision-makers. We present a historical overview of explainable artificial intelligence systems, with a focus on knowledge-enabled systems, spanning the expert systems, cognitive assistants, semantic applications, and machine learning domains. Additionally, borrowing from the strengths of past approaches and identifying gaps needed to make explanations user- and context-focused, we propose new definitions for explanations and explainable knowledge-enabled systems.
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