
Sparse regression codes
Sekhar Tatikonda, Yale University, USA
Abstract:

We first review sparse regression codes; demonstrate how to implement random binning and superposition using these codes; and then show for a variety of multiterminal source and channel coding problems that these codes achieve the information theoretic limits and are computationally efficient. Joint work with Ramji Venkataramanan.