Artificial intelligence and uncertainty
Myron S. Scholes
Abstract
Artificial intelligence (AI) has both capabilities and limitations in managing uncertainty, particularly in handling average cases versus extreme outliers. AI excels at analyzing large datasets and predicting typical outcomes, but struggles with rare, critical scenarios that require flexibility beyond its data-driven approach. Integrating human expertise with AI, especially in managing anomalies, enhances AI's potential to address complex situations. The discussion also highlights the tension between rapid innovation and rigid governance, emphasizing the importance of trust and adaptable frameworks for progress in technology and finance. Governance must evolve to allow faster, individualized solutions while maintaining oversight to prevent risks. The concept of "digital twins" improves adaptability and cost efficiency by modeling and simulating physical entities. Transitioning from hardware- to software-driven solutions underscores the need for production agility, enabling industries to adapt without major structural changes. The analysis addresses AI's role in large-scale societal issues like decarbonization, stressing the importance of managing not just mean outcomes but also catastrophic tail risks. AI must identify gaps in its understanding, enhancing efficiency through collaborative training. Technological advancements, including sensors and digital twins, enhance AI's real-time analysis capabilities, expanding applications in robotics, precision agriculture, and decentralized healthcare. The interplay between AI, governance, and innovation shows potential for solving major challenges in finance, healthcare, and sustainability, contingent on integrating adaptive human-AI collaboration.