Research Bio
Amanda Coston is an assistant professor of statistics at UC Berkeley. Her research addresses real-world data problems that challenge the validity, reliability, and equity of algorithmic decision support systems and data-driven policy-making. Her work draws on techniques from causal inference, machine learning, and nonparametric statistics.
She earned her PhD in machine learning and public policy at Carnegie Mellon University and subsequently completed a postdoc at Microsoft Research on the Machine Learning and Statistics Team. She also holds a Bachelor of Science in Engineering from Princeton in computer science and a certificate in the Princeton School of Public and International Affairs.
Research Expertise and Interest
causal inference, machine learning, nonparametric statistics, responsible AI, algorithmic fairness
Teaching
Statistical Models: Theory and Application [STAT 215B - 001]
Directed Study for Graduate Students [STAT 298 - 001]
Individual Study Leading to Higher Degrees [STAT 299 - 032]
Directed Study for Graduate Students [STAT 298 - 001]
Individual Study Leading to Higher Degrees [STAT 299 - 004]