Accelerated Mini-batch Randomized Block Coordinate Descent Method

Tuo Zhao, Mo Yu, Yiming Wang, Raman Arora, Han Liu

Neural Information Processing Systems 

We consider regularized empirical risk minimization problems. In particular, we minimize the sum of a smooth empirical risk function and a nonsmooth regularization function. When the regularization function is block separable, we can solve the minimization problems in a randomized block coordinate descent (RBCD) manner. Existing RBCD methods usually decrease the objective value by exploiting the partial gradient of a randomly selected block of coordinates in each iteration. Thus they need all data to be accessible so that the partial gradient of the block gradient can be exactly obtained.