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Statistics and Data Science Seminar Dejan Slepčev (Carnegie Mellon University)

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Statistics and Data Science Seminar Gregory Wornell (MIT)

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IDSS Special Seminar Yury Polyanskiy (MIT)

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IDSS Special Seminar Caroline Uhler (MIT)

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Statistics and Data Science Seminar Jingbo Liu (MIT)

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Statistics and Data Science Seminar Tselil Schramm (Harvard University)

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Variational problems on random structures and their continuum limits

Dejan Slepčev (Carnegie Mellon University)
E18-304

Abstract: We will discuss variational problems arising in machine learning and their limits as the number of data points goes to infinity. Consider point clouds obtained as random samples of an underlying "ground-truth" measure. Graph representing the point cloud is obtained by assigning weights to edges based on the distance between the points. Many machine…

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An Information-Geometric View of Learning in High Dimensions

Gregory Wornell (MIT)
32-155

Abstract: We consider the problem of data feature selection prior to inference task specification, which is central to high-dimensional learning. Introducing natural notions of universality for such problems, we show a local equivalence among them. Our analysis is naturally expressed via information geometry, and represents a conceptually and practically useful learning methodology. The development reveals…

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Strong data processing inequalities and information percolation

Yury Polyanskiy (MIT)
32-D677

Title: Strong data processing inequalities and information percolation Abstract:  The data-processing inequality, that is, $I(U;Y) \le I(U;X)$ for a Markov chain $U \to X \to Y$, has been the method of choice for proving impossibility (converse) results in information theory and many other disciplines. A channel-dependent improvement is called the strong data-processing inequality (or SDPI).…

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Graphical models under total positivity

Caroline Uhler (MIT)
32-D677

Title: Graphical models under total positivity Abstract: We discuss properties of distributions that are multivariate totally positive of order two (MTP2). Such distributions appear in the context of positive dependence, ferromagnetism in the Ising model, and various latent models. While such distributions have a long history in probability theory and statistical physics, in this talk…

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Reverse hypercontractivity beats measure concentration for information theoretic converses

Jingbo Liu (MIT)
E18-304

Abstract: Concentration of measure refers to a collection of tools and results from analysis and probability theory that have been used in many areas of pure and applied mathematics. Arguably, the first data science application of measure concentration (under the name ‘‘blowing-up lemma’’) is the proof of strong converses in multiuser information theory by Ahlswede,…

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Efficient Algorithms for the Graph Matching Problem in Correlated Random Graphs

Tselil Schramm (Harvard University)
E18-304

Abstract: The Graph Matching problem is a robust version of the Graph Isomorphism problem: given two not-necessarily-isomorphic graphs, the goal is to find a permutation of the vertices which maximizes the number of common edges. We study a popular average-case variant; we deviate from the common heuristic strategy and give the first quasi-polynomial time algorithm, where previously only sub-exponential time algorithms…

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