A Quotient Homology Theory of Representation in Neural Networks

Abstract

Previous research has proven that the set of maps implemented by neural networks with a ReLU activation function is identical to the set of piecewise linear continuous maps. Furthermore, such networks induce a hyperplane arrangement splitting the input domain of the network into convex polyhedra GJ over which a network Φ operates in an affine manner. In this work, we leverage these properties to define an equivalence relation Φ on top of an input dataset, which defines a quotient space that can be split into two sets related to the local rank of ΦJ and the intersections ImΦJi. We refer to the latter as the overlap decomposition OΦ and prove that if the intersections between each polyhedron and an input manifold are convex, the homology groups of neural representations are isomorphic to quotient homology groups Hk(Φ(M)) Hk(M/OΦ). This lets us intrinsically calculate the Betti numbers of neural representations without the choice of an external metric. We develop methods to numerically compute the overlap decomposition through linear programming and a union-find algorithm. Using this framework, we perform several experiments on toy datasets showing that, compared to standard persistent homology, our overlap homology-based computation of Betti numbers tracks purely topological rather than geometric features. Finally, we study the evolution of the overlap decomposition during training on several classification problems and discuss some shortcomings of our method.

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