Towards Robust Representations of Spatial Networks Using Graph Neural Networks

The effectiveness of a machine learning model is impacted by the data representation used. Consequently, it is crucial to investigate robust representations for efficient machine learning methods. In this paper, we explore the link between data representations and model performance for inference tas...

Full description

Bibliographic Details
Main Authors: Chidubem Iddianozie, Gavin McArdle
Format: Article
Language:English
Published: MDPI AG 2021-07-01
Series:Applied Sciences
Subjects:
Online Access:https://www.mdpi.com/2076-3417/11/15/6918
id doaj-4d244a91ccb0471d9435ca62920fae9f
record_format Article
spelling doaj-4d244a91ccb0471d9435ca62920fae9f2021-08-06T15:19:08ZengMDPI AGApplied Sciences2076-34172021-07-01116918691810.3390/app11156918Towards Robust Representations of Spatial Networks Using Graph Neural NetworksChidubem Iddianozie0Gavin McArdle1School of Computer Science, University College Dublin, Dublin 4, IrelandSchool of Computer Science, University College Dublin, Dublin 4, IrelandThe effectiveness of a machine learning model is impacted by the data representation used. Consequently, it is crucial to investigate robust representations for efficient machine learning methods. In this paper, we explore the link between data representations and model performance for inference tasks on spatial networks. We argue that representations which explicitly encode the relations between spatial entities would improve model performance. Specifically, we consider homogeneous and heterogeneous representations of spatial networks. We recognise that the expressive nature of the heterogeneous representation may benefit spatial networks and could improve model performance on certain tasks. Thus, we carry out an empirical study using Graph Neural Network models for two inference tasks on spatial networks. Our results demonstrate that heterogeneous representations improves model performance for down-stream inference tasks on spatial networks.https://www.mdpi.com/2076-3417/11/15/6918spatial networksdata representationsheterogeneous representationsGraph Neural Networks
collection DOAJ
language English
format Article
sources DOAJ
author Chidubem Iddianozie
Gavin McArdle
spellingShingle Chidubem Iddianozie
Gavin McArdle
Towards Robust Representations of Spatial Networks Using Graph Neural Networks
Applied Sciences
spatial networks
data representations
heterogeneous representations
Graph Neural Networks
author_facet Chidubem Iddianozie
Gavin McArdle
author_sort Chidubem Iddianozie
title Towards Robust Representations of Spatial Networks Using Graph Neural Networks
title_short Towards Robust Representations of Spatial Networks Using Graph Neural Networks
title_full Towards Robust Representations of Spatial Networks Using Graph Neural Networks
title_fullStr Towards Robust Representations of Spatial Networks Using Graph Neural Networks
title_full_unstemmed Towards Robust Representations of Spatial Networks Using Graph Neural Networks
title_sort towards robust representations of spatial networks using graph neural networks
publisher MDPI AG
series Applied Sciences
issn 2076-3417
publishDate 2021-07-01
description The effectiveness of a machine learning model is impacted by the data representation used. Consequently, it is crucial to investigate robust representations for efficient machine learning methods. In this paper, we explore the link between data representations and model performance for inference tasks on spatial networks. We argue that representations which explicitly encode the relations between spatial entities would improve model performance. Specifically, we consider homogeneous and heterogeneous representations of spatial networks. We recognise that the expressive nature of the heterogeneous representation may benefit spatial networks and could improve model performance on certain tasks. Thus, we carry out an empirical study using Graph Neural Network models for two inference tasks on spatial networks. Our results demonstrate that heterogeneous representations improves model performance for down-stream inference tasks on spatial networks.
topic spatial networks
data representations
heterogeneous representations
Graph Neural Networks
url https://www.mdpi.com/2076-3417/11/15/6918
work_keys_str_mv AT chidubemiddianozie towardsrobustrepresentationsofspatialnetworksusinggraphneuralnetworks
AT gavinmcardle towardsrobustrepresentationsofspatialnetworksusinggraphneuralnetworks
_version_ 1721218900462403584