Reviews: Sample Efficient Stochastic Gradient Iterative Hard Thresholding Method for Stochastic Sparse Linear Regression with Limited Attribute Observation

Neural Information Processing Systems 

This looks an interesting result. Authors suggest a couple of methods, inspired by "mini batch strategy", for solving linear regression when the signal of interest is sparse and one can observe the data partially. The problem and their proposed methods are clearly described in the paper. Theoretical guarantees for convergence of the algorithms are provided which is supported by practical evidence given in the paper. As the authors suggest, these methods look to outperform other existing methods in term of "sample complexity".