peer reviewedThis paper discusses the added value of applying machine learning (ML) to contextually enrich digital collections. In this study, we employed ML as a method to geographically enrich historical datasets. Specifically, we used a sequence tagging tool (Riedl and Padó 2018) which implements TensorFlow to perform NER on a corpus of historical immigrant newspapers. Afterwards, the entities were extracted and geocoded. The aim was to prepare large quantities of unstructured data for a conceptual historical analysis of geographical references. The intention was to develop a method that would assist researchers working in spatial humanities, a recently emerged interdisciplinary field focused on geographic and conceptual space. Here we d...
Scholars in the humanities have long paid attention to spatial theory and cartographic outputs. More...
The use of Geographical Information Systems (GIS) has become well established in historical research...
Efficient and effective access to and knowledge construction from massively growing spatial and non-...
peer reviewedThis paper discusses the added value of applying machine learning (ML) to contextually ...
The GeoNewsMiner (GNM) is an interactive tool that maps and visualizes geographical references in hi...
Paper on mapping texts and combining text-mining and geo-visualization to unlock the research potent...
A short pilot study was conducted to provide recommendations on methods and workflows for extracting...
A significant amount of spatial information can be derived from unstructured datasets available in w...
This study conducted geospatial text analysis on historical documents, specifically the Sarawak Ga...
It has long been known that ‘variety’ is one of the key challenges and opportunities of big data. Th...
Within the cultural heritage sector, there has been a growing and concerted effort to consider a cri...
This paper presents a novel study of geographic information implicit in the English Wikipedia archiv...
The current excitement in regards to machine learning has spurred enthusiasm amongst collection hold...
Although the Ordnance Survey has itself been the subject of historical research, scholars have not s...
The latest developments in the field of digital humanities have increasingly enabled the constructio...
Scholars in the humanities have long paid attention to spatial theory and cartographic outputs. More...
The use of Geographical Information Systems (GIS) has become well established in historical research...
Efficient and effective access to and knowledge construction from massively growing spatial and non-...
peer reviewedThis paper discusses the added value of applying machine learning (ML) to contextually ...
The GeoNewsMiner (GNM) is an interactive tool that maps and visualizes geographical references in hi...
Paper on mapping texts and combining text-mining and geo-visualization to unlock the research potent...
A short pilot study was conducted to provide recommendations on methods and workflows for extracting...
A significant amount of spatial information can be derived from unstructured datasets available in w...
This study conducted geospatial text analysis on historical documents, specifically the Sarawak Ga...
It has long been known that ‘variety’ is one of the key challenges and opportunities of big data. Th...
Within the cultural heritage sector, there has been a growing and concerted effort to consider a cri...
This paper presents a novel study of geographic information implicit in the English Wikipedia archiv...
The current excitement in regards to machine learning has spurred enthusiasm amongst collection hold...
Although the Ordnance Survey has itself been the subject of historical research, scholars have not s...
The latest developments in the field of digital humanities have increasingly enabled the constructio...
Scholars in the humanities have long paid attention to spatial theory and cartographic outputs. More...
The use of Geographical Information Systems (GIS) has become well established in historical research...
Efficient and effective access to and knowledge construction from massively growing spatial and non-...