Model-centric Data Manifold: the Data Through the Eyes of the Model

04/26/2021
by   Luca Grementieri, et al.
11

We discover that deep ReLU neural network classifiers can see a low-dimensional Riemannian manifold structure on data. Such structure comes via the local data matrix, a variation of the Fisher information matrix, where the role of the model parameters is taken by the data variables. We obtain a foliation of the data domain and we show that the dataset on which the model is trained lies on a leaf, the data leaf, whose dimension is bounded by the number of classification labels. We validate our results with some experiments with the MNIST dataset: paths on the data leaf connect valid images, while other leaves cover noisy images.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset