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Statistics and Data Science Seminar Series David Spiegelhalter

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Statistics and Data Science Seminar Series Yudong Chen

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Statistics and Data Science Seminar Series Lenka Zdeborová

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Communicating uncertainty about facts, numbers and science

David Spiegelhalter (University of Cambridge)
32-D643

The claim of a ‘post-truth’ society, in which emotional responses trump balanced consideration of evidence, presents a strong challenge to those who value quantitative and scientific evidence: how can we communicate risks and unavoidable scientific uncertainty in a transparent and trustworthy way? Communication of quantifiable risks has been well-studied, leading to recommendations for using an…

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SDP Relaxation for Learning Discrete Structures: Optimal Rates, Hidden Integrality, and Semirandom Robustness

Yudong Chen (Cornell University)
E18-304

Abstract: We consider the problems of learning discrete structures from network data under statistical settings. Popular examples include various block models, Z2 synchronization and mixture models. Semidefinite programming (SDP) relaxation has emerged as a versatile and robust approach to these problems. We show that despite being a relaxation, SDP achieves the optimal Bayes error rate…

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Understanding machine learning with statistical physics

Lenka Zdeborová (Institute of Theoretical Physics, CNRS)
E18-304

Abstract: The affinity between statistical physics and machine learning has long history, this is reflected even in the machine learning terminology that is in part adopted from physics. Current theoretical challenges and open questions about deep learning and statistical learning call for unified account of the following three ingredients: (a) the dynamics of the learning algorithm,…

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Automated Data Summarization for Scalability in Bayesian Inference

Tamara Broderick (MIT)
E18-304

Abstract: Many algorithms take prohibitively long to run on modern, large data sets. But even in complex data sets, many data points may be at least partially redundant for some task of interest. So one might instead construct and use a weighted subset of the data (called a “coreset”) that is much smaller than the…

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