1. Introduction
A fully data-driven paradigm in conducting science has been emerged during the last years with the advent of GANs [1]. A GAN offers a new methodology for drawing samples from an unknown distribution where only samples from this distribution are available making them one of the hottest areas in machine learning/artificial intelligence research. Indicatively, GANs have been successfully utilized in (conditional) image creation [2], [3], [4], generating very realistic samples [5], [6], speech signal processing [7], [8], natural language processing [9] and astronomy [10], to name a few.