Context, Utility and Influence of an Explanation
- URL: http://arxiv.org/abs/2303.13552v1
- Date: Wed, 22 Mar 2023 11:30:48 GMT
- Title: Context, Utility and Influence of an Explanation
- Authors: Minal Suresh Patil and Kary Fr\"amling
- Abstract summary: Contextual utility theory integrates context-sensitive factors into utility-based decision-making models.
It stresses the importance of understanding individual decision-makers' preferences, values, and beliefs.
It can improve transparency and understanding of how AI systems affect decision-making.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Contextual utility theory integrates context-sensitive factors into
utility-based decision-making models. It stresses the importance of
understanding individual decision-makers' preferences, values, and beliefs and
the situational factors that affect them. Contextual utility theory benefits
explainable AI. First, it can improve transparency and understanding of how AI
systems affect decision-making. It can reveal AI model biases and limitations
by considering personal preferences and context. Second, contextual utility
theory can make AI systems more personalized and adaptable to users and
stakeholders. AI systems can better meet user needs and values by incorporating
demographic and cultural data. Finally, contextual utility theory promotes
ethical AI development and social responsibility. AI developers can create
ethical systems that benefit society by considering contextual factors like
societal norms and values. This work, demonstrates how contextual utility
theory can improve AI system transparency, personalization, and ethics,
benefiting both users and developers.
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