I’m trying to teach a lesson on gradient descent from a more statistical and theoretical perspective, and need a good example to show its usefulness.

What is the simplest possible algebraic function that would be impossible or rather difficult to optimize for, by setting its 1st derivative to 0, but easily doable with gradient descent? I preferably want to demonstrate this in context linear regression or some extremely simple machine learning model.

  • charlesGodmanB
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    1 year ago

    To be precise: linear regression with L2 loss and L1 regularization. L1 regression with L1 penalty can be solved using a linear program.