This paper reflects on a number of trends towards a more open and reproducible approach to geographic and spatial data science over recent years. In particular, it considers trends towards Big Data, and the impacts this is having on spatial data analysis and modelling. It identifies a turn in academia towards coding as a core analytic tool, and away from proprietary software tools offering ‘black boxes’ where the internal workings of the analysis are not revealed. It is argued that this closed form software is problematic and considers a number of ways in which issues identified in spatial data analysis (such as the MAUP) could be overlooked when working with closed tools, leading to problems of interpretation and possibly inappropriate act...
It is widely acknowledged that the emergence of “Big Data” is having a profound and often controvers...
Spatial data is playing an emerging role in new technologies such as web and mobile mapping and Geog...
This paper considers the intersection of academic spatial analysis with the open source revolution. ...
This paper reflects on a number of trends towards a more open and reproducible approach to geographi...
This paper reflects on a number of trends towards a more open and reproducible approach to geographi...
In this paper we consider some of the issues of working with big data and big spatial data and highl...
When reviewing quantitative content in the geography curriculum, amongst other things it is importan...
Reproducibility is one of the corner stones of science: when studies cannot be reproduced it is hard...
Data analytics, particularly the current rhetoric around \u27Big Data\u27, tend to be presented as n...
Thinking Big Data in Geography offers a practical state-of-the-field overview of big data as both a ...
When reviewing quantitative content in the geography curriculum, amongst other things it is importan...
When conducting research within a framework of Geographic Information Science (GISc), the scientifi...
Amid the continued rise of big data in both the public and private sectors, spatial information has ...
This paper develops the notion of "open data product". We define an open data product as the open re...
This paper considers the intersection of academic spatial analysis with the open source revolution. ...
It is widely acknowledged that the emergence of “Big Data” is having a profound and often controvers...
Spatial data is playing an emerging role in new technologies such as web and mobile mapping and Geog...
This paper considers the intersection of academic spatial analysis with the open source revolution. ...
This paper reflects on a number of trends towards a more open and reproducible approach to geographi...
This paper reflects on a number of trends towards a more open and reproducible approach to geographi...
In this paper we consider some of the issues of working with big data and big spatial data and highl...
When reviewing quantitative content in the geography curriculum, amongst other things it is importan...
Reproducibility is one of the corner stones of science: when studies cannot be reproduced it is hard...
Data analytics, particularly the current rhetoric around \u27Big Data\u27, tend to be presented as n...
Thinking Big Data in Geography offers a practical state-of-the-field overview of big data as both a ...
When reviewing quantitative content in the geography curriculum, amongst other things it is importan...
When conducting research within a framework of Geographic Information Science (GISc), the scientifi...
Amid the continued rise of big data in both the public and private sectors, spatial information has ...
This paper develops the notion of "open data product". We define an open data product as the open re...
This paper considers the intersection of academic spatial analysis with the open source revolution. ...
It is widely acknowledged that the emergence of “Big Data” is having a profound and often controvers...
Spatial data is playing an emerging role in new technologies such as web and mobile mapping and Geog...
This paper considers the intersection of academic spatial analysis with the open source revolution. ...