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Extra Form
Lecturer 신연종
Dept. KAIST
date Oct 13, 2022

 

Machine learning (ML) has achieved unprecedented empirical success in diverse applications. It now has been applied to solve scientific problems, which has become an emerging field, Scientific Machine Learning (SciML). Many ML techniques, however, are very complex and sophisticated, commonly requiring many trial-and-error and tricks. These result in a lack of robustness and interpretability, which are critical factors for scientific applications. This talk centers around mathematical approaches for SciML, promoting trustworthiness. The first part is about how to embed physics into neural networks (NNs). I will present a general framework for designing NNs that obey the first and second laws of thermodynamics. The framework not only provides flexible ways of leveraging available physics information but also results in expressive NN architectures. The second part is about the training of NNs, one of the biggest challenges in ML. I will present an efficient training method for NNs - Active Neuron Least Squares (ANLS). ANLS is developed from the insight gained from the analysis of gradient descent training.

Atachment
Attachment '1'
  1. Symplectic topology and mirror symmetry of partial flag manifolds

  2. The classification of fusion categories and operator algebras

  3. The Lagrange and Markov Spectra of Pythagorean triples

  4. The Mathematics of the Bose Gas and its Condensation

  5. The phase retrieval problem

  6. The process of mathematical modelling for complex and stochastic biological systems

  7. The Shape of Data

  8. The significance of dimensions in mathematics

  9. Theory and applications of partial differential equations

  10. Topological aspects in the theory of aperiodic solids and tiling spaces

  11. Topological Mapping of Point Cloud Data

  12. Topological surgery through singularity in mean curvature flow

  13. Topology and number theory

  14. Topology of configuration spaces on graphs

  15. Toward bridging a connection between machine learning and applied mathematics

  16. 17Oct
    by 김수현
    in Math Colloquia

    Towards Trustworthy Scientific Machine Learning: Theory, Algorithms, and Applications

  17. Trends to equilibrium in collisional rarefied gas theory

  18. Unique ergodicity for foliations

  19. Universality of log-correlated fields

  20. Unprojection

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