Hierarchical Learning in Euclidean Neural Networks

10/10/2022
by   Joshua A. Rackers, et al.
0

Equivariant machine learning methods have shown wide success at 3D learning applications in recent years. These models explicitly build in the reflection, translation and rotation symmetries of Euclidean space and have facilitated large advances in accuracy and data efficiency for a range of applications in the physical sciences. An outstanding question for equivariant models is why they achieve such larger-than-expected advances in these applications. To probe this question, we examine the role of higher order (non-scalar) features in Euclidean Neural Networks (). We focus on the previously studied application of to the problem of electron density prediction, which allows for a variety of non-scalar outputs, and examine whether the nature of the output (scalar l=0, vector l=1, or higher order l>1) is relevant to the effectiveness of non-scalar hidden features in the network. Further, we examine the behavior of non-scalar features throughout training, finding a natural hierarchy of features by l, reminiscent of a multipole expansion. We aim for our work to ultimately inform design principles and choices of domain applications for e3nn networks.

READ FULL TEXT
research
06/11/2021

Scalars are universal: Gauge-equivariant machine learning, structured like classical physics

There has been enormous progress in the last few years in designing conc...
research
12/02/2021

Isomeric trees and the order of Runge–Kutta methods

The conditions for a Runge–Kutta method to be of order p with p≥ 5 for a...
research
10/12/2020

k-simplex2vec: a simplicial extension of node2vec

We present a novel method of associating Euclidean features to simplicia...
research
11/17/2018

Deep Learning of Turbulent Scalar Mixing

Based on recent developments in physics-informed deep learning and deep ...
research
05/11/2017

Denominator Bounds and Polynomial Solutions for Systems of q-Recurrences over K(t) for Constant K

We consider systems A_ℓ(t) y(q^ℓ t) + ... + A_0(t) y(t) = b(t) of higher...
research
04/17/2023

Magnitude of arithmetic scalar and matrix categories

We develop tools for explicitly constructing categories enriched over ge...
research
08/10/2021

Scalar actions in Lean's mathlib

Scalar actions are ubiquitous in mathematics, and therefore it is valuab...

Please sign up or login with your details

Forgot password? Click here to reset