Abstract
As a holistic conceptualization of AI-advised decision-making currently does not exist, we propose such conceptualization by utilizing a proven framework: Toulmin’s Model of Argumentation. To achieve this, we break down AI advice into its core elements; namely the AI prediction, the AI explanation, and AI confidence level. We argue that each of these elements can be mapped to the argumentative elements proposed by Toulmin’s Model: The prediction constitutes grounds and claim, the explanation warrant and backing, and the confidence level the qualifier. Through this new perspective, this conceptual paper offers three main contributions: 1) We present the first holistic conceptualization for AI-advised decision-making, 2) Building on the proven explanatory powers of TMA, our novel conceptualization deepens our understand of contemporary issues in humans interacting with AI advice, and 3) The conceptualization can be used by practitioners to build more persuasive AI systems for real-world applications.
Original language | English |
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Title of host publication | ECIS 2024 Proceedings |
Publication date | 2024 |
Publication status | Published - 2024 |
Externally published | Yes |
Event | The 32nd European Conference on Information Systems - Paphos, Cyprus Duration: 17 Jun 2024 → 19 Jun 2024 https://ecis2024.eu/ |
Conference
Conference | The 32nd European Conference on Information Systems |
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Country/Territory | Cyprus |
City | Paphos |
Period | 17/06/2024 → 19/06/2024 |
Internet address |
Keywords
- AI Advice
- Explanation
- Confidence
- Decision-Making
- Toulmin
- Conceptualization