Some Intuition on the Neural Tangent Kernel

·inFERENCe··

Neural tangent kernels are a useful tool for understanding neural network training and implicit regularization in gradient descent. But it's not the easiest concept to wrap your head around. The paper that I found to have been most useful for me to develop an understanding is this one:Lee et al (2019) Wide Neural Networks of Any Depth Evolve as Linear Models Under Gradient DescentIn this post I will illustrate the concept of neural tangent kernels through a simple 1D regression example. Ple...

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