ARC-ACO Lecture Series: featuring Pravesh Kothari (CMU)

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Event Details
  • Dates/Times:
    • Tuesday February 15, 2022
      11:00 am
    • Thursday February 17, 2022
      11:00 am
    • Friday February 18, 2022
      11:00 am
  • Location: Groseclose 402
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  • Fee(s):
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Summaries

Summary Sentence: High-Dimensional Statistical Estimation via Sum-of-Squares - Groseclose 402 11:00AM

Full Summary: No summary paragraph submitted.

ARC - ACO Lecture Series

featuring Pravesh Kothari (CMU)

February 15 & 17 - Groseclose 402 - 11:00AM

February 18 - Groseclose 402 - 1:00PM

 

Title:  High-Dimensional Statistical Estimation via Sum-of-Squares

Abstract: One exciting new development of the past decade is the evolution of the sum-of-squares method for algorithm design for high-dimensional statistical estimation. This paradigm can be viewed as a principled approach to generating and analyzing semidefinite programming relaxations for statistical estimation problems by thinking of the duals as proofs of statistical identifiability -- i.e., proof that the input data uniquely identifies the unknown target parameters.

In this sequence of three lectures, I will give an overview of the sum-of-squares method for statistical estimation. Specifically, I will discuss how strengthening (via semidefinite certificates) of basic analytic properties of probability distributions such as subgaussian tails, hypercontractive moments, and anti-concentration yield new algorithms for problems such as learning spherical and non-spherical Gaussian mixture models and basic tasks in algorithmic robust statistics. 

Bio:  Pravesh Kothari is an Assistant Professor in the Computer Science Department at CMU. He is broadly interested in algorithms and algorithmic thresholds for average-case computational problems with a specific focus on problems at the intersection of theoretical computer science and statistics. His prior work has focused on developing the Sum-of-Squares method for algorithm design leading to progress on problems such as learning mixtures of Gaussians, refuting random constraint satisfaction problems, and problems in algorithmic robust statistics.  His research has been recognized with a Google Research Scholar Award and an NSF Career Award.  

Pravesh Kothari's Webpage

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Videos of recent talks are available at: https://smartech.gatech.edu/handle/1853/46836

Click here to subscribe to the seminar email list: arc-colloq@Klauscc.gatech.edu

Additional Information

In Campus Calendar
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ARC

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Faculty/Staff, Postdoc, Graduate students, Undergraduate students
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Seminar/Lecture/Colloquium
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Status
  • Created By: Francella Tonge
  • Workflow Status: Published
  • Created On: Nov 3, 2021 - 1:07pm
  • Last Updated: Feb 2, 2022 - 3:38pm