Kolmogorov Arnold Networks (KAN) Paper Explained - An exciting new paradigm for Deep Learning?

Описание к видео Kolmogorov Arnold Networks (KAN) Paper Explained - An exciting new paradigm for Deep Learning?

This is a paper breakdown video of the paper: Kolmogorov Arnold Networks, which brilliantly provides an alternative to standard Multi Layer Perceptrons. The video discusses the main contributions and core ideas of the paper, visually explaining the math, concepts, and challenges ahead.

#deeplearning #machinelearning #neuralnetworks

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Timestamps:
0:00 - Intro
1:03 - Kolmogorov Arnold Representation Theorem
5:05 - KAN Layers
8:00 - Comparisons
9:00 - B-splines
11:08 - Grid Extension, Sparsification, Continual Learning
14:00 - KANs get the best of MLPs and Splines
15:00 - Advantages and Challenges for KANs

Check out the paper:
https://arxiv.org/abs/2404.19756

Check out code:
https://kindxiaoming.github.io/pykan/... and
https://github.com/KindXiaoming/pykan

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