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Statistics and Data Science Seminar Tengyuan Liang (University of Chicago)

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IDS.190 Topics in Bayesian Modeling and Computation Tamara Broderick (MIT)

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IDS.190 Topics in Bayesian Modeling and Computation Brian Patton (Google AI)

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Statistics and Data Science Seminar Samory Kpotufe (Columbia)

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Statistics and Data Science Seminar Adam Klivans (UT Austin)

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Data Science and Big Data Analytics: Making Data-Driven Decisions

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IDS.190 Topics in Bayesian Modeling and Computation Natesh Pillai (Harvard)

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GANs, Optimal Transport, and Implicit Density Estimation

Tengyuan Liang (University of Chicago)
E18-304

Abstract: We first study the rate of convergence for learning distributions with the adversarial framework and Generative Adversarial Networks (GANs), which subsumes Wasserstein, Sobolev, and MMD GANs as special cases. We study a wide range of parametric and nonparametric target distributions, under a collection of objective evaluation metrics. On the nonparametric end, we investigate the…

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Automated Data Summarization for Scalability in Bayesian Inference

Tamara Broderick (MIT)
E18-304

IDS.190 - Topics in Bayesian Modeling and Computation Abstract: Many algorithms take prohibitively long to run on modern, large datasets. 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…

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Probabilistic Modeling meets Deep Learning using TensorFlow Probability

Brian Patton (Google AI)
E18-304

IDS.190 - Topics in Bayesian Modeling and Computation Speaker: Brian Patton (Google AI) Abstract: TensorFlow Probability provides a toolkit to enable researchers and practitioners to integrate uncertainty with gradient-based deep learning on modern accelerators. In this talk we'll walk through some practical problems addressed using TFP; discuss the high-level interfaces, goals, and principles of the…

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Some New Insights On Transfer Learning

Samory Kpotufe (Columbia)
E18-304

Abstract: The problem of transfer and domain adaptation is ubiquitous in machine learning and concerns situations where predictive technologies, trained on a given source dataset, have to be transferred to a new target domain that is somewhat related. For example, transferring voice recognition trained on American English accents to apply to Scottish accents, with minimal…

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Frontiers of Efficient Neural-Network Learnability

Adam Klivans (UT Austin)
E18-304

Abstract: What are the most expressive classes of neural networks that can be learned, provably, in polynomial-time in a distribution-free setting? In this talk we give the first efficient algorithm for learning neural networks with two nonlinear layers using tools for solving isotonic regression, a nonconvex (but tractable) optimization problem. If we further assume the…

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Behavior of the Gibbs Sampler in the Imbalanced Case/Bias Correction from Daily Min and Max Temperature Measurements

Natesh Pillai (Harvard)
E18-304

IDS.190 Topics in Bayesian Modeling and Computation *Note:  The speaker this week will give two shorter talks within the usual session Title:   Behavior of the Gibbs sampler in the imbalanced case Abstract:   Many modern applications collect highly imbalanced categorical data, with some categories relatively rare. Bayesian hierarchical models combat data sparsity by borrowing information, while also…

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