Randomization Program

Randomization programs are increasingly used across diverse scientific fields to improve the design and analysis of experiments and algorithms. Current research focuses on developing and analyzing randomized methods for causal inference (e.g., A/B testing with dependent outcomes), procedural content generation (using constraint satisfaction problems and tailored randomization strategies), and machine learning (enhancing model robustness, fairness, and efficiency). These advancements are significant because they address limitations of deterministic approaches, leading to more accurate estimations, improved model generalization, and fairer outcomes in various applications, from online advertising to medical diagnosis.

Papers