Learning through structure: towards deep neuromorphic knowledge graph embeddings

09/21/2021
by   Victor Caceres Chian, et al.
0

Computing latent representations for graph-structured data is an ubiquitous learning task in many industrial and academic applications ranging from molecule synthetization to social network analysis and recommender systems. Knowledge graphs are among the most popular and widely used data representations related to the Semantic Web. Next to structuring factual knowledge in a machine-readable format, knowledge graphs serve as the backbone of many artificial intelligence applications and allow the ingestion of context information into various learning algorithms. Graph neural networks attempt to encode graph structures in low-dimensional vector spaces via a message passing heuristic between neighboring nodes. Over the recent years, a multitude of different graph neural network architectures demonstrated ground-breaking performances in many learning tasks. In this work, we propose a strategy to map deep graph learning architectures for knowledge graph reasoning to neuromorphic architectures. Based on the insight that randomly initialized and untrained (i.e., frozen) graph neural networks are able to preserve local graph structures, we compose a frozen neural network with shallow knowledge graph embedding models. We experimentally show that already on conventional computing hardware, this leads to a significant speedup and memory reduction while maintaining a competitive performance level. Moreover, we extend the frozen architecture to spiking neural networks, introducing a novel, event-based and highly sparse knowledge graph embedding algorithm that is suitable for implementation in neuromorphic hardware.

READ FULL TEXT
research
08/04/2022

Neuro-symbolic computing with spiking neural networks

Knowledge graphs are an expressive and widely used data structure due to...
research
04/16/2020

Hcore-Init: Neural Network Initialization based on Graph Degeneracy

Neural networks are the pinnacle of Artificial Intelligence, as in recen...
research
10/04/2021

An energy-based model for neuro-symbolic reasoning on knowledge graphs

Machine learning on graph-structured data has recently become a major to...
research
04/27/2021

SpikE: spike-based embeddings for multi-relational graph data

Despite the recent success of reconciling spike-based coding with the er...
research
04/23/2020

SIGN: Scalable Inception Graph Neural Networks

Geometric deep learning, a novel class of machine learning algorithms ex...
research
12/01/2019

Knowledge Infused Learning (K-IL): Towards Deep Incorporation of Knowledge in Deep Learning

Learning the underlying patterns in the data goes beyond instance-based ...
research
09/15/2021

Learning Robot Structure and Motion Embeddings using Graph Neural Networks

We propose a learning framework to find the representation of a robot's ...

Please sign up or login with your details

Forgot password? Click here to reset