@article{200296, keywords = {dimensionality reduction, Manifold learning, autoencoder, canonical coordinates}, author = {Erez Peterfreund and Ofir Lindenbaum and Felix Dietrich and Tom Bertalan and Matan Gavish and IoannisG. Kevrekidis and Ronald R. Coifman}, title = {Local conformal autoencoder for standardized data coordinates}, abstract = { We propose a local conformal autoencoder (LOCA) for standardized data coordinates. LOCA is a deep learning-based method for obtaining standardized data coordinates from scientific measurements. Data observations are modeled as samples from an unknown, nonlinear deformation of an underlying Riemannian manifold, which is parametrized by a few normalized, latent variables. We assume a repeated measurement sampling strategy, common in scientific measurements, and present a method for learning an embedding in Rd that is isometric to the latent variables of the manifold. The coordinates recovered by our method are invariant to diffeomorphisms of the manifold, making it possible to match between different instrumental observations of the same phenomenon. Our embedding is obtained using LOCA, which is an algorithm that learns to rectify deformations by using a local z-scoring procedure, while preserving relevant geometric information. We demonstrate the isometric embedding properties of LOCA in various model settings and observe that it exhibits promising interpolation and extrapolation capabilities, superior to the current state of the art. Finally, we demonstrate LOCA's efficacy in single-site Wi-Fi localization data and for the reconstruction of three-dimensional curved surfaces from two-dimensional projections. }, year = {2020}, journal = {Proc. Natl. Acad. Sci. U. S. A.}, volume = {117}, number = {49}, pages = {30918-30927}, publisher = {National Academy of Sciences}, isbn = {1091-64900027-8424}, url = {https://doi.org/10.1073/pnas.2014627117}, language = {eng}, }