Approximating velocity fields with planted attractors via Neural-ODEs for classification
This work employs Neural ODEs equipped with a curated collection of equilibrium points to perform classification tasks. The planted attractors serve as indicators for target classes, while the velocity field shapes the dynamical landscape to direct inputs toward their corresponding destinations.