Ground-truth datasets are essential for the training and evaluation of any automated algorithm. As such, gold-standard annotated corpora underlie most advances in natural language processing (NLP). However, only a few relatively small (geo-)annotated datasets are available for geoparsing, i.e., the automatic recognition and geolocation of place references in unstructured text. The creation of geoparsing corpora that include both the recognition of place names in text and matching of those names to toponyms in a geographic gazetteer (a process we call geo-annotation), is a laborious, time-consuming and expensive task. The field lacks efficient geo-annotation tools to support corpus building and lacks design guidelines for the development of ...
This paper describes the development of an annotated corpus which forms a challenging testbed for ge...
Empirical methods in geoparsing have thus far lacked a standard evaluation framework describing the ...
Abstract: Empirical methods in geoparsing have thus far lacked a standard evaluation framework descr...
Ground-truth datasets are essential for the training and evaluation of any automated algorithm. As s...
Geographical data can be obtained by converting place names from free-format text into geographical ...
SpatialML is an annotation scheme for marking up references to places in natural language. It covers...
Online social networks convey rich information about geospatial facets of reality. However in most c...
The majority of textual information currently available on the Internet contains some sort of geogra...
Geoparsing and geocoding are two essential middleware ser-vices to facilitate final user application...
Nowadays, spatial analysis in text is widely considered as important for both researchers and users....
In this paper we illustrate the Geo Data Annotator (GDA), a framework which helps a user to build a ...
A vast amount of location information exists in unstructured texts, such as social media posts, news...
Nowadays the internet is overcrowded with huge amount of textual data – various news p...
The amount of information on the internet grows exponentially. It isnot enough anymore just to have ...
In order to extract and map location information from natural language descriptions, a first step is...
This paper describes the development of an annotated corpus which forms a challenging testbed for ge...
Empirical methods in geoparsing have thus far lacked a standard evaluation framework describing the ...
Abstract: Empirical methods in geoparsing have thus far lacked a standard evaluation framework descr...
Ground-truth datasets are essential for the training and evaluation of any automated algorithm. As s...
Geographical data can be obtained by converting place names from free-format text into geographical ...
SpatialML is an annotation scheme for marking up references to places in natural language. It covers...
Online social networks convey rich information about geospatial facets of reality. However in most c...
The majority of textual information currently available on the Internet contains some sort of geogra...
Geoparsing and geocoding are two essential middleware ser-vices to facilitate final user application...
Nowadays, spatial analysis in text is widely considered as important for both researchers and users....
In this paper we illustrate the Geo Data Annotator (GDA), a framework which helps a user to build a ...
A vast amount of location information exists in unstructured texts, such as social media posts, news...
Nowadays the internet is overcrowded with huge amount of textual data – various news p...
The amount of information on the internet grows exponentially. It isnot enough anymore just to have ...
In order to extract and map location information from natural language descriptions, a first step is...
This paper describes the development of an annotated corpus which forms a challenging testbed for ge...
Empirical methods in geoparsing have thus far lacked a standard evaluation framework describing the ...
Abstract: Empirical methods in geoparsing have thus far lacked a standard evaluation framework descr...