Beyond kNN: Adaptive, Sparse Neighborhood Graphs via Optimal Transport

08/01/2022
by   Tetsuya Matsumoto, et al.
0

Nearest neighbour graphs are widely used to capture the geometry or topology of a dataset. One of the most common strategies to construct such a graph is based on selecting a fixed number k of nearest neighbours (kNN) for each point. However, the kNN heuristic may become inappropriate when sampling density or noise level varies across datasets. Strategies that try to get around this typically introduce additional parameters that need to be tuned. We propose a simple approach to construct an adaptive neighbourhood graph from a single parameter, based on quadratically regularised optimal transport. Our numerical experiments show that graphs constructed in this manner perform favourably in unsupervised and semi-supervised learning applications.

READ FULL TEXT

page 12

page 15

research
03/22/2021

Regularized Optimal Transport for Dynamic Semi-supervised Learning

Semi-supervised learning provides an effective paradigm for leveraging u...
research
03/09/2020

COPT: Coordinated Optimal Transport on Graphs

We introduce COPT, a novel distance metric between graphs defined via an...
research
12/14/2021

Inductive Semi-supervised Learning Through Optimal Transport

In this paper, we tackle the inductive semi-supervised learning problem ...
research
12/24/2019

Unsupervised Learning of Graph Hierarchical Abstractions with Differentiable Coarsening and Optimal Transport

Hierarchical abstractions are a methodology for solving large-scale grap...
research
10/12/2019

Model Fusion via Optimal Transport

Combining different models is a widely used paradigm in machine learning...
research
10/01/2021

Label Propagation Through Optimal Transport

In this paper, we tackle the transductive semi-supervised learning probl...
research
10/16/2017

Large Scale Graph Learning from Smooth Signals

Graphs are a prevalent tool in data science, as they model the inherent ...

Please sign up or login with your details

Forgot password? Click here to reset