Global linear convergence of Newton's method without strong-convexity or Lipschitz gradients

1 Jun 2018  ·  Sai Praneeth Karimireddy, Sebastian U. Stich, Martin Jaggi ·

We show that Newton's method converges globally at a linear rate for objective functions whose Hessians are stable. This class of problems includes many functions which are not strongly convex, such as logistic regression. Our linear convergence result is (i) affine-invariant, and holds even if an (ii) approximate Hessian is used, and if the subproblems are (iii) only solved approximately. Thus we theoretically demonstrate the superiority of Newton's method over first-order methods, which would only achieve a sublinear $O(1/t^2)$ rate under similar conditions.

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