ICIS 2019 SIGHCI Workshop Panel Report: Human Computer Interaction Challenges and Opportunities for Fair, Trustworthy and Ethical Artificial Intelligence
Robert, Lionel; Bansal, Gaurav; Lütge, Christoph
2020-06-30
Other Titles
Human Computer Interaction Challenges and Opportunities for Fair, Trustworthy and Ethical Artificial Intelligence
Citation
Robert, L. P., Gaurav, B., & Lütge, C. (2020). ICIS 2019 SIGHCI Workshop Panel Report: Human–Computer Interaction Challenges and Opportunities for Fair, Trustworthy and Ethical Artificial Intelligence. AIS Transactions on Human-Computer Interaction, 12(2), pp. 96-108
Abstract
Artificial Intelligence (AI) is rapidly changing every aspect of our society—including amplifying our biases. Fairness, trust and ethics are at the core of many of the issues underlying the implications of AI. Despite this, research on AI with relation to fairness, trust and ethics in the information systems (IS) field is still scarce. This panel brought together academia, business and government perspectives to discuss the challenges and identify potential solutions to address such challenges. This panel report presents eight themes based around the discussion of two questions: (1) What are the biggest challenges to designing, implementing and deploying fair, ethical and trustworthy AI?; and (2) What are the biggest challenges to policy and governance for fair, ethical and trustworthy AI? The eight themes are: (1) identifying AI biases; (2) drawing attention to AI biases; (3) addressing AI biases; (4) designing transparent and explainable AI; (5) AI fairness, trust, ethics: old wine in a new bottle?; (6) AI accountability; (7) AI laws, policies, regulations and standards; and (8) frameworks for fair, ethical and trustworthy AI. Based on the results of the panel discussion, we present research questions for each theme to guide future research in the area of human–computer interaction.Publisher
AIS Transactions on Human-Computer Interaction
Other DOIs
Subjects
Trustworthy and Ethical Artificial Intelligence Artificial Intelligence Trustworthy Artificial Intelligence Ethical Artificial Intelligence Fair Artificial Intelligence AI Fairness Human-Computer Interaction Human-Computer Interaction Artificial Intelligence Ethics in the information systems AI biases Transparent Artificial Intelligence Explainable Artificial Intelligence Artificial Intelligence Accountability Artificial Intelligence Governance Designing Artificial Intelligence Implementing Artificial Intelligence Artificial Intelligence Deploying Artificial Intelligence Policy Algorithmic Bias Algorithmic Fairness Artificial Intelligence Trust Artificial Intelligence Ethics Artificial Intelligence policies Artificial Intelligence regulations Artificial Intelligence standards Ethical frameworks Artificial Intelligence and Human Interactions Human Interactions with Artificial Intelligence Global Coordination Artificial Intelligence
Types
Article
Metadata
Show full item recordShowing items related by title, author, creator and subject.
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Hughes, Claretha; Robert, Lionel + "Jr"; Frady, Kristin; Arroyos, Adam (Emerald Publishing Limited, 2019-07-23)
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Esterwood, Connor; Robert, Lionel + "Jr" (Frontiers in Robotics and AI, 2021-09-17)
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