Scalable Label Propagation for Multi-relational Learning on Tensor Product Graph

02/20/2018
by   Zhuliu Li, et al.
0

Label propagation on the tensor product of multiple graphs can infer multi-relations among the entities across the graphs by learning labels in a tensor. However, the tensor formulation is only empirically scalable up to three graphs due to the exponential complexity of computing tensors. In this paper, we propose an optimization formulation and a scalable Lowrank Tensor-based Label Propagation algorithm (LowrankTLP). The optimization formulation minimizes the rank-k approximation error for computing the closed-form solution of label propagation on a tensor product graph with efficient tensor computations used in LowrankTLP. LowrankTLP takes either a sparse tensor of known multi-relations or pairwise relations between each pair of graphs as the input to infer unknown multi-relations by semi-supervised learning on the tensor product graph. We also accelerate LowrankTLP with parallel tensor computation which enabled label propagation on a tensor product of 100 graphs of size 1000 within 150 seconds in simulation. LowrankTLP was also successfully applied to multi-relational learning for predicting author-paper-venue in publication records, alignment of several protein-protein interaction networks across species and alignment of segmented regions across up to 7 CT scan images. The experiments prove that LowrankTLP indeed well approximates the original label propagation with high scalability. Source code: https://github.com/kuanglab/LowrankTLP

READ FULL TEXT

page 3

page 8

research
03/15/2020

Tensor Graph Convolutional Networks for Multi-relational and Robust Learning

The era of "data deluge" has sparked renewed interest in graph-based lea...
research
11/17/2020

Addressing Computational Bottlenecks in Higher-Order Graph Matching with Tensor Kronecker Product Structure

Graph matching, also known as network alignment, is the problem of findi...
research
10/15/2021

Propagation on Multi-relational Graphs for Node Regression

Recent years have witnessed a rise in real-world data captured with rich...
research
05/01/2023

A note on generalized tensor CUR approximation for tensor pairs and tensor triplets based on the tubal product

In this note, we briefly present a generalized tensor CUR (GTCUR) approx...
research
02/20/2016

Context-guided diffusion for label propagation on graphs

Existing approaches for diffusion on graphs, e.g., for label propagation...
research
02/08/2021

Graph Traversal with Tensor Functionals: A Meta-Algorithm for Scalable Learning

Graph Representation Learning (GRL) methods have impacted fields from ch...
research
05/11/2018

TensOrMachine: Probabilistic Boolean Tensor Decomposition

Boolean tensor decomposition approximates data of multi-way binary relat...

Please sign up or login with your details

Forgot password? Click here to reset