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Title: Principled AI
Abstract: We are entering an era where artificial intelligence is transforming science, medicine, and society, yet the enduring principles of statistics remain central to ensuring validity, interpretability, and trust. This talk reflects on core statistical foundations, including error control and calibration, optimality and decision-theoretic framing, reproducibility and robustness, sampling, prior/empirical Bayes, modern statistical/mathematical computation, and the likelihood principle. And we will examine their continued impact in the age of AI. Through examples drawn from several clinical studies, the discussion will show how principled statistical thinking safeguards against bias while enabling innovation. These case studies illustrate that statisticians are not bystanders but essential architects of reliable evidence generation and decision-making in an AI-driven world.
Yong Chen is a professor of biostatistics in the Department of Biostatistics, Epidemiology, and Informatics (DBEI), and a senior scholar at the Center for Clinical Epidemiology & Biostatistics (CCEB) at the University of Pennsylvania Perelman School of Medicine.
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