Xiaoyuan Qian

2papers

2 Papers

OCSep 8, 2019
On the connections between algorithmic regularization and penalization for convex losses

Qian Qian, Xiaoyuan Qian

In this work we establish the equivalence of algorithmic regularization and explicit convex penalization for generic convex losses. We introduce a geometric condition for the optimization path of a convex function, and show that if such a condition is satisfied, the optimization path of an iterative algorithm on the unregularized optimization problem can be represented as the solution path of a corresponding penalized problem.

MLJun 9, 2019
The Implicit Bias of AdaGrad on Separable Data

Qian Qian, Xiaoyuan Qian

We study the implicit bias of AdaGrad on separable linear classification problems. We show that AdaGrad converges to a direction that can be characterized as the solution of a quadratic optimization problem with the same feasible set as the hard SVM problem. We also give a discussion about how different choices of the hyperparameters of AdaGrad might impact this direction. This provides a deeper understanding of why adaptive methods do not seem to have the generalization ability as good as gradient descent does in practice.