Adaptive AI for Decision Making
Models and algorithms that update decisions as new information arrives.
AI · Business Analytics · Decision Science
I am an Assistant Professor at the Institute of Service Science, College of Technology Management, National Tsing Hua University. My work studies how AI, statistical learning, simulation, and uncertainty-aware models can support better decisions in complex, data-rich environments.
Research identity
Trained as a statistician, I develop adaptive and uncertainty-aware approaches that help decision makers learn from data, evaluate risk, and act when information is incomplete, costly, or evolving. My research builds on Bayesian optimization, adaptive experimental design, machine learning, simulation, and predictive modeling, with growing applications in business analytics and decision support systems.
Research themes
Models and algorithms that update decisions as new information arrives.
Predictive tools that communicate risk, confidence, and trade-offs to decision makers.
Simulation-based evaluation of marketing, supply chain, and service system decisions.
Data collection and experimental design strategies for learning efficiently under constraints.
Teaching
Upcoming course at NTHU on simulation-based decision making in marketing and supply chain contexts, with cases involving campaign allocation, customer retention, A/B testing, demand forecasting, inventory dynamics, resilience, and capacity allocation.
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My published and ongoing work develops methods for efficient data collection, optimal design, predictive modeling, and adaptive decision-making under uncertainty.
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