eXtended Artificial Intelligence: New Prospects of Human-AI Interaction Research
Carolin Wienrich, Marc Erich Latoschik

TL;DR
This paper introduces a theoretical XR-AI continuum framework for studying human-AI interactions, supported by two experiments revealing gender effects and the Eliza effect, advancing human-centered AI design using XR technologies.
Contribution
It presents a novel XR-AI continuum model and demonstrates its application through two experiments, enhancing systematic investigation of human-AI interfaces.
Findings
Gender effect in human-robot interaction
Eliza effect in recommender systems
Valid XR testbed implementations
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…
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