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Statistics and Data Science Seminar Series Tselil Schramm

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Statistics and Data Science Seminar Series John Duchi

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Statistics and Data Science Seminar Series Aukosh Jagannath

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Statistics and Data Science Seminar Series Sumit Mukherjee

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Efficient Algorithms for the Graph Matching Problem in Correlated Random Graphs

Tselil Schramm (Harvard University)

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,…

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Locally private estimation, learning, inference, and optimality

John Duchi (Stanford University)

Abstract: In this talk, we investigate statistical learning and estimation under local privacy constraints, where data providers do not trust the collector of the data and so privatize their data before it is even collected. We identify fundamental tradeoffs between statistical utility and privacy in such local models of privacy, providing instance-specific bounds for private…

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Algorithmic thresholds for tensor principle component analysis

Aukosh Jagannath (Harvard University)

Abstract: Consider the problem of recovering a rank 1 tensor of order k that has been subject to Gaussian noise. The log-likelihood for this problem is highly non-convex. It is information theoretically possible to recover the tensor with a finite number of samples via maximum likelihood estimation, however, it is expected that one needs a…

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Joint estimation of parameters in Ising Model

Sumit Mukherjee (Columbia University)
E18-304

Abstract: Inference in the framework of Ising models has received significant attention in Statistics and Machine Learning in recent years. In this talk we study joint estimation of the inverse temperature parameter β, and the magnetization parameter B, given one realization from the Ising model, under the assumption that the underlying graph of the Ising…

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MIT Institute for Data, Systems, and Society
Massachusetts Institute of Technology
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