On the Computational Power of Online Gradient Descent

Chatziafratis, Vaggos, Roughgarden, Tim, Wang, Joshua R.

arXiv.org Machine Learning 

We prove that the evolution of weight vectors in online gradient descent can encode arbitrary polynomial-space computations, even in the special case of soft-margin support vector machines. Our results imply that, under weak complexity-theoretic assumptions, it is impossible to reason efficiently about the fine-grained behavior of online gradient descent.

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