Three iterations of (d-1)-WL test distinguish non isometric clouds of d-dimensional points

03/22/2023
by   Valentino Delle Rose, et al.
0

The Weisfeiler–Lehman (WL) test is a fundamental iterative algorithm for checking isomorphism of graphs. It has also been observed that it underlies the design of several graph neural network architectures, whose capabilities and performance can be understood in terms of the expressive power of this test. Motivated by recent developments in machine learning applications to datasets involving three-dimensional objects, we study when the WL test is complete for clouds of euclidean points represented by complete distance graphs, i.e., when it can distinguish, up to isometry, any arbitrary such cloud. Our main result states that the (d-1)-dimensional WL test is complete for point clouds in d-dimensional Euclidean space, for any d≥ 2, and that only three iterations of the test suffice. Our result is tight for d = 2, 3. We also observe that the d-dimensional WL test only requires one iteration to achieve completeness.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/23/2020

The expressive power of kth-order invariant graph networks

The expressive power of graph neural network formalisms is commonly meas...
research
06/15/2022

Unsupervised Capsule Networks of High-Dimension Point Clouds classification

Three-dimensional point clouds learning is widely applied, but the point...
research
01/18/2022

Incompleteness of graph convolutional neural networks for points clouds in three dimensions

Graph convolutional neural networks (GCNN) are very popular methods in m...
research
07/18/2022

Computable complete invariants for finite clouds of unlabeled points under Euclidean isometry

A finite cloud of unlabeled points is the simplest representation of man...
research
07/11/2023

Weisfeiler and Lehman Go Measurement Modeling: Probing the Validity of the WL Test

The expressive power of graph neural networks is usually measured by com...
research
04/08/2019

Weighted Point Cloud Augmentation for Neural Network Training Data Class-Imbalance

Recent developments in the field of deep learning for 3D data have demon...

Please sign up or login with your details

Forgot password? Click here to reset