Abstract

Artificial intelligence (AI) systems offer effective support for online learning and teaching, including personalizing learning for students, automating instructors’ routine tasks, and powering adaptive assessments. However, while the opportunities for AI are promising, the impact of AI systems on the culture of, norms in, and expectations about interactions between students and instructors are still elusive. In online learning, learner–instructor interaction (inter alia, communication, support, and presence) has a profound impact on students’ satisfaction and learning outcomes. Thus, identifying how students and instructors perceive the impact of AI systems on their interaction is important to identify any gaps, challenges, or barriers preventing AI systems from achieving their intended potential and risking the safety of these interactions. To address this need for forward-looking decisions, we used Speed Dating with storyboards to analyze the authentic voices of 12 students and 11 instructors on diverse use cases of possible AI systems in online learning. Findings show that participants envision adopting AI systems in online learning can enable personalized learner–instructor interaction at scale but at the risk of violating social boundaries. Although AI systems have been positively recognized for improving the quantity and quality of communication, for providing just-in-time, personalized support for large-scale settings, and for improving the feeling of connection, there were concerns about responsibility, agency, and surveillance issues. These findings have implications for the design of AI systems to ensure explainability, human-in-the-loop, and careful data collection and presentation. Overall, contributions of this study include the design of AI system storyboards which are technically feasible and positively support learner–instructor interaction, capturing students’ and instructors’ concerns of AI systems through Speed Dating, and suggesting practical implications for maximizing the positive impact of AI systems while minimizing the negative ones.

Highlights

  • The opportunities for artificial intelligence (AI) in online learning and teaching are broad (Anderson et al, 1985; Baker, 2016; Roll et al, 2018; Seo et al, 2020b; VanLehn, 2011), ranging from personalized learning for students and automation of instructors’ routine tasks to AI-powered assessments (Popenici & Kerr, 2017)

  • Considering the findings in the literature and the areas for further research, the present study aimed to identify how students and instructors perceive the impact of AI systems on learner–instructor interaction in online learning

  • We showed each scenario to AI experts and asked the following questions: “Can you improve this scenario to make it technically feasible?” and “Can you improve this scenario to have a positive impact on learner–instructor interaction based on your own online teaching experience?” After showing all the scenarios, the following question was asked: “Do you have any research ideas that can be used as a new scenario?” The scenario was modified to reflect the opinions of AI experts and AI in Education (AIEd) literature

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Summary

Introduction

The opportunities for artificial intelligence (AI) in online learning and teaching are broad (Anderson et al, 1985; Baker, 2016; Roll et al, 2018; Seo et al, 2020b; VanLehn, 2011), ranging from personalized learning for students and automation of instructors’ routine tasks to AI-powered assessments (Popenici & Kerr, 2017). While the opportunities for AI are promising, students and instructors may perceive the impact of AI systems negatively. It is important to examine how students and instructors perceive the impact of AI systems in online learning environments (Cruz-Benito et al, 2019). Moore (1989) classified these interactions in online learning into three types: learner–content, learner–learner, and learner–instructor. These interactions help students become active and more engaged in their online courses (Seo et al, 2021; Martin et al, 2018), and by doing so strengthen their sense of community which is essential for the continuous usage of online learning platforms (Luo et al, 2017)

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