Neural approximation of Wasserstein distance via a universal architecture for symmetric and factorwise group invariant functions

Neural Information Processing Systems 

Learning distance functions between complex objects, such as the Wasserstein distance to compare point sets, is a common goal in machine learning applications. However, functions on such complex objects (e.g., point sets and graphs) are often required to be invariant to a wide variety of group actions e.g.