2022 Annual Meeting
(542e) Learning What to Learn: Common and Sensor-Specific Information across Multiple Sensors, with Some Thoughts about Sensor Spoofing and Causality
Authors
From this point, it is desirable to also parametrize each uncommon system. We demonstrate an approach using Output-Influenced Diffusion Maps [4], as well as a more reliable approach using Conformal Neural Networks to find parametrizations of the disjoint features; these are (in the original sensor data) locally conformal to the common system parametrization.
References:
[1] R.R. Coifman and S. Lafon, Appl. Comput. Harmon. Anal. 21, 5 (2006).
[2] R.R. Lederman and R. Talmon, Appl. Comput. Harmon. Anal. 44, 509 (2018).
[3] O. Yair, F. Dietrich, R. Mulayoff, R. Talmon, and I.G. Kevrekidis, Spectral discovery of jointly smooth features for multimodal data, ArXiv (2020).
[4] A. Holiday, M. Kooshkbaghi, J.M. Bello-Rivas, C. William Gear, A. Zagaris, and I.G. Kevrekidis, J. Comput. Phys. 392, 419 (2019).