Abstract

Artificial Intelligence (AI) covers a broad spectrum of computational problems and use cases. Many of those implicate profound and sometimes intricate questions of how humans interact or should interact with AIs. Moreover, many users or future users do have abstract ideas of what AI is, significantly depending on the specific embodiment of AI applications. Human-centered-design approaches would suggest evaluating the impact of different embodiments on human perception of and interaction with AI. An approach that is difficult to realize due to the sheer complexity of application fields and embodiments in reality. However, here XR opens new possibilities to research human-AI interactions. The article’s contribution is twofold: First, it provides a theoretical treatment and model of human-AI interaction based on an XR-AI continuum as a framework for and a perspective of different approaches of XR-AI combinations. It motivates XR-AI combinations as a method to learn about the effects of prospective human-AI interfaces and showswhythe combination of XR and AI fruitfully contributes to a valid and systematic investigation of human-AI interactions and interfaces. Second, the article provides two exemplary experiments investigating the aforementioned approach for two distinct AI-systems. The first experiment reveals an interesting gender effect in human-robot interaction, while the second experiment reveals an Eliza effect of a recommender system. Here the article introduces two paradigmatic implementations of the proposed XR testbed for human-AI interactions and interfaces and showshowa valid and systematic investigation can be conducted. In sum, the article opens new perspectives on how XR benefits human-centered AI design and development.

Highlights

  • Artificial Intelligence (AI) today covers a broad spectrum of application use cases and the associated computational problems

  • The present paper suggests and discusses XR as a new perspective on the XR-AI combination space and as a new testbed for human-AI interactions and interfaces by raising the question: How can we establish valid and systematic investigation procedures for human-AI interfaces and interactions?

  • Human-Computer Interaction (HCI) approaches would suggest evaluating the impact of different AI applications, appearances, and operations on human perception of and interaction with AIs and identifying the effects these manipulations would have on users (Wienrich et al, 2021b)

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Summary

Introduction

Artificial Intelligence (AI) today covers a broad spectrum of application use cases and the associated computational problems. There is an open and ongoing debate on the necessity of required media competencies or, even more, on required computer science competencies for users of computer systems This digital literacy eXtended Artificial Intelligence (competencies needed to use computational devices (Bawden and others, 2008) and computational literacy (the ability to use code to express, explore, and communicate ideas (DiSessa, 2001)), lately has been extended to include AI literacy to denote competencies that enable individuals to critically evaluate AI technologies; communicate and collaborate effectively with AI; and use AI as a tool online, at home, and in the workplace (Long and Magerko, 2020).

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