Spatial autocorrelation statistics have a long-standing history being used by geographers to determine whether identifiable spatial patterns exist in data. However, existing research has identified that solely relying on p-values can be problematic when working with large datasets. This paper introduces a generalised model that can capture geographical data’s spatial patterns using a graph convolutional network (GCN). The preliminary analysis demonstrates that GCN can capture the localities among areas in local-scale datasets by processing the data features and the spatial information separately into the graph network
Spatio-temporal modeling is an essential lens to understand many real-world phenomena from traffic [...
Similarity measurement has been a prevailing research topic in geographic information science. Geome...
Spatio-temporal count data relating to a set of non-overlapping areal units are prevalent in many fi...
The understanding of geographical reality is a process of data representation and pattern discovery....
In this paper, we develop a novel Aligned-Spatial Graph Convolutional Network (ASGCN) model to learn...
Geo-spatial data mining is a process to discover interesting and potentially useful spatial patterns...
Spatial autocorrelation may be defined as the relationship among values of a single variable that co...
Geospatial artificial intelligence (GeoAI) has emerged as a subfield of GIScience that uses artific...
Spatial interpolation is a class of estimation problems where locations with known values are used t...
International audienceThe use by geographers of local indicators of spatial autocorrelation has spre...
This repository contains the geodemographic classifications obtained through different setups of our...
Georeferenced user-generated datasets like those extracted from Twitter are increasingly gaining the...
Machine learning methods such as Convolutional Neural Network (CNN) are becoming an integral part of...
Unsupervised spatial representation learning aims to automatically identify effective features of ge...
Graph neural networks are a newly established category of machine learning algorithms dealing with r...
Spatio-temporal modeling is an essential lens to understand many real-world phenomena from traffic [...
Similarity measurement has been a prevailing research topic in geographic information science. Geome...
Spatio-temporal count data relating to a set of non-overlapping areal units are prevalent in many fi...
The understanding of geographical reality is a process of data representation and pattern discovery....
In this paper, we develop a novel Aligned-Spatial Graph Convolutional Network (ASGCN) model to learn...
Geo-spatial data mining is a process to discover interesting and potentially useful spatial patterns...
Spatial autocorrelation may be defined as the relationship among values of a single variable that co...
Geospatial artificial intelligence (GeoAI) has emerged as a subfield of GIScience that uses artific...
Spatial interpolation is a class of estimation problems where locations with known values are used t...
International audienceThe use by geographers of local indicators of spatial autocorrelation has spre...
This repository contains the geodemographic classifications obtained through different setups of our...
Georeferenced user-generated datasets like those extracted from Twitter are increasingly gaining the...
Machine learning methods such as Convolutional Neural Network (CNN) are becoming an integral part of...
Unsupervised spatial representation learning aims to automatically identify effective features of ge...
Graph neural networks are a newly established category of machine learning algorithms dealing with r...
Spatio-temporal modeling is an essential lens to understand many real-world phenomena from traffic [...
Similarity measurement has been a prevailing research topic in geographic information science. Geome...
Spatio-temporal count data relating to a set of non-overlapping areal units are prevalent in many fi...