https://web.math.snu.ac.kr/board/files/attach/images/701/ff97c54e6e21a4ae39315f9a12b27314.png
Extra Form
강연자 이창한
소속 Northwestern University
date 2021-09-16

 

Abstract: 
While the typical behaviors of stochastic systems are often deceptively oblivious to the tail distributions of the underlying uncertainties, the ways rare events arise are vastly different depending on whether the underlying tail distributions are light-tailed or heavy-tailed. Roughly speaking, in light-tailed settings, a system-wide rare event arises because everything goes wrong a little bit as if the entire system has conspired up to provoke the rare event (conspiracy principle), whereas, in heavy-tailed settings, a system-wide rare event arises because a small number of components fail catastrophically (catastrophe principle). In the first part of this talk, I will introduce the recent developments in the theory of large deviations for heavy-tailed stochastic processes at the sample path level and rigorously characterize the catastrophe principle. In the second part, I will explore an intriguing connection between the catastrophe principle and a central mystery of modern AI—the unreasonably good generalization performance of deep neural networks.
 
This talk is based on the ongoing research in collaboration with Mihail Bazhba, Jose Blanchet, Bohan Chen, Sewoong Oh, Insuk Seo, Zhe Su, Xingyu Wang, and Bert Zwart.
 
Short Bio: 
Chang-Han Rhee is an Assistant Professor in Industrial Engineering and Management Sciences at Northwestern University. Before joining Northwestern University, he was a postdoctoral researcher in the Stochastics Group at Centrum Wiskunde & Informatica and in Industrial & Systems Engineering and Biomedical Engineering at Georgia Tech. He received his Ph.D. in Computational and Mathematical Engineering from Stanford University. His research interests include applied probability, stochastic simulation, and statistical learning. He was a winner of the Outstanding Publication Award from the INFORMS Simulation Society in 2016, a winner of the Best Student Paper Award (MS/OR focused) at the 2012 Winter Simulation Conference, and a finalist of the 2013 INFORMS George Nicholson Student Paper Competition.
Atachment
첨부 '1'
  1. 12Apr
    by 김수현
    in 수학강연회

    Creation of concepts for prediction models and quantitative trading

  2. 2022-2 Rookies Pitch: Representation Theory(이신명)

  3. 29May
    by 김수현
    in 수학강연회

    On function field and smooth specialization of a hypersurface in the projective space

  4. 07Nov
    by Editor
    in 수학강연회

    Global result for multiple positive radial solutions of p-Laplacian system on exterior domain

  5. 17Oct
    by 김수현
    in 수학강연회

    <정년퇴임 기념강연> Hardy, Beurling, and invariant subspaces

  6. 2023-1 Stochastic PDE(이재윤)

  7. 2023-2 Minimal Surface Theory (이재훈)

  8. 29Nov
    by 김수현
    in 수학강연회

    Survey on a geography of model theory

  9. 2021-2 Rookies Pitch: Arithmetic Statistics (이정인)

  10. 01Nov
    by Manager
    in 수학강연회

    Averaging formula for Nielsen numbers

  11. 2022-2 Rookies Pitch: Probability Theory (이중경)

  12. 07Nov
    by Editor
    in 수학강연회

    The Mathematics of the Bose Gas and its Condensation

  13. 2021-2 Rookies Pitch: Harmonic Analysis (이진봉)

  14. 07Nov
    by Editor
    in 수학강연회

    Role of Computational Mathematics and Image Processing in Magnetic Resonance Electrical Impedance Tomography (MREIT)

  15. 17Oct
    by 김수현
    in 수학강연회

    Heavy-tailed large deviations and deep learning's generalization mystery

  16. 2021-2 Rookies Pitch: Stochastic Analysis (이해성)

  17. 14Jun
    by 김수현
    in 수학강연회

    Analysis and computations of stochastic optimal control problems for stochastic PDEs

  18. 07Nov
    by Editor
    in 수학강연회

    Non-commutative Lp-spaces and analysis on quantum spaces

  19. 28Sep
    by 김수현
    in 수학강연회

    Alice and Bob meet Banach and von Neumann

  20. 2023-2 Long-time Behavior of PDE (임덕우)

Board Pagination Prev 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 Next
/ 16