Kernels, data & physics
Lecture notes from the course given by Professor Julia Kempe at the summer school ‘Statistical physics of Machine Learning’ in Les Houches. The notes discuss the so-called NTK approach to problems in machine learning, which consists of gaining an understanding of generally unsolvable problems by finding a tractable kernel formulation. The notes are mainly focused on practical applications such as data distillation and adversarial robustness, examples of inductive bias are also discussed.
2-s2.0-85208386159
École Polytechnique Fédérale de Lausanne
Instituto Nacional de Matematica Pura E Aplicada, Rio de Janeiro
Technische Universität München
New York University
New York University
2024-10-31
2024
10
104013
REVIEWED
EPFL
| Funder | Funding(s) | Grant Number | Grant URL |
EPFL | |||
CAPES | |||
FAPERJ | E-26/202.668/2019 | ||
| Show more | |||