可解释人工智能系统的人机交互技术

S. T. Anand Reddy
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引用次数: 0

摘要

随着人工智能(AI)系统的普及,人们越来越需要提高透明度,以确保人类的理解和监督。这就是可解释的人工智能(XAI)的用武之地,它能使人工智能系统更加透明和可解释。然而,制定适当的解释仍然是一个有待解决的研究问题。人机交互(HCI)对于设计可解释人工智能的界面意义重大。本文回顾了可用于可解人工智能系统的人机交互技术。本文重点探讨了人机交互和 XAI 交叉领域的文献。基本技术包括交互式可视化、自然语言解释、对话式代理、混合倡议系统和模型自省方法。可解释的人工智能为提高系统透明度带来了机遇,但同时也存在风险,尤其是在需要精心设计解释的情况下。为了确保为不同用户、环境和人工智能应用量身定制解释,可以利用人机交互原则和参与式设计方法。因此,本文最后提出了开发以人为本的 XAI 系统的建议,这可以通过人机交互和人工智能之间的跨学科合作来实现。随着人工智能(AI)系统在我们的日常生活中越来越常见,这些系统对透明度的需求也变得越来越重要。确保人类清楚地了解人工智能系统是如何工作的,并能监督其运作,这一点至关重要。这就是 "可解释的人工智能"(XAI)概念的由来,它使人工智能系统更加透明和可解释。然而,为人工智能系统制定适当的解释仍然是一个尚未解决的研究问题。在这种情况下,人机交互(HCI)对于设计可解释人工智能的界面具有重要意义。通过整合人机交互原则,我们可以创造出人类能够理解并更有效操作的系统。本文回顾了可用于可解人工智能系统的人机交互技术。本文以人机交互和 XAI 交叉领域的论文为重点,对相关文献进行了探讨。所确定的基本方法包括交互式可视化、自然语言解释、会话代理、混合倡议系统和模型内省方法。这些技术各有独特优势,可用于为不同类型的人工智能系统提供解释。可解释的人工智能为提高系统透明度带来了机遇,但同时也存在风险,尤其是在需要精心设计解释的情况下。过度简化有可能导致对人工智能系统的误解或不信任。必须采用人机交互原则和参与式设计方法,以确保为不同用户、环境和人工智能应用量身定制解释。通过开发以人为本的 XAI 系统,我们可以确保人工智能系统是透明的、可解释的和可信的。这可以通过人机交互和人工智能之间的跨学科合作来实现。本文的建议为设计此类系统提供了一个起点。从本质上讲,XAI 为提高人工智能系统的透明度提供了一个重要机会,但它需要精心设计和实施才能有效。
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Human-Computer Interaction Techniques for Explainable Artificial Intelligence Systems
As Artificial Intelligence (AI) systems become more widespread, there is a growing need for transparency to ensure human understanding and oversight. This is where Explainable AI (XAI) comes in to make AI systems more transparent and interpretable. However, developing adequate explanations is still an open research problem. Human-Computer Interaction (HCI) is significant in designing interfaces for explainable AI. This article reviews the HCI techniques that can be used for solvable AI systems. The literature was explored with a focus on papers at the intersection of HCI and XAI. Essential techniques include interactive visualizations, natural language explanations, conversational agents, mixed-initiative systems, and model introspection methods while Explainable AI presents opportunities to improve system transparency, it also comes with risks, especially if the explanations need to be designed carefully. To ensure that explanations are tailored for diverse users, contexts, and AI applications, HCI principles and participatory design approaches can be utilized. Therefore, this article concludes with recommendations for developing human-centred XAI systems, which can be achieved through interdisciplinary collaboration between HCI and AI. As Artificial Intelligence (AI) systems become more common in our daily lives, the need for transparency in these systems is becoming increasingly important. Ensuring that humans clearly understand how AI systems work and can oversee their functioning is crucial. This is where the concept of Explainable AI (XAI) comes in to make AI systems more transparent and interpretable. However, developing adequate explanations for AI systems is still an open research problem. In this context, Human-Computer Interaction (HCI) is significant in designing interfaces for explainable AI. By integrating HCI principles, we can create systems humans understand and operate more efficiently. This article reviews the HCI techniques that can be used for solvable AI systems. The literature was explored with a focus on papers at the intersection of HCI and XAI. The essential methods identified include interactive visualizations, natural language explanations, conversational agents, mixed-initiative systems, and model introspection methods. Each of these techniques has unique advantages and can be used to provide explanations for different types of AI systems. While Explainable AI presents opportunities to improve system transparency, it also comes with risks, especially if the explanations need to be designed carefully. There is a risk of oversimplification, leading to misunderstanding or mistrust of the AI system. It is essential to employ HCI principles and participatory design approaches to ensure that explanations are tailored for diverse users, contexts, and AI applications. By developing human-centred XAI systems, we can ensure that AI systems are transparent, interpretable, and trustworthy. This can be achieved through interdisciplinary collaboration between HCI and AI. The recommendations in this article provide a starting point for designing such systems. In essence, XAI presents a significant opportunity to improve the transparency of AI systems, but it requires careful design and implementation to be effective.
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