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Eliciting fuzzy location data from social media posts with Natural Language Processing

Research output: Contribution to conference - Without ISBN/ISSN Conference paperpeer-review

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Eliciting fuzzy location data from social media posts with Natural Language Processing. / Gullick, David Stephen; Whyatt, James Duncan; Richardson, Joseph.
2018. Paper presented at GISRUK 2018, Leicester, United Kingdom.

Research output: Contribution to conference - Without ISBN/ISSN Conference paperpeer-review

Harvard

Gullick, DS, Whyatt, JD & Richardson, J 2018, 'Eliciting fuzzy location data from social media posts with Natural Language Processing', Paper presented at GISRUK 2018, Leicester, United Kingdom, 17/04/18 - 20/04/18. <https://www122.lamp.le.ac.uk/download/GISRUK2018_Contribution_049.pdf>

APA

Vancouver

Gullick DS, Whyatt JD, Richardson J. Eliciting fuzzy location data from social media posts with Natural Language Processing. 2018. Paper presented at GISRUK 2018, Leicester, United Kingdom.

Author

Gullick, David Stephen ; Whyatt, James Duncan ; Richardson, Joseph. / Eliciting fuzzy location data from social media posts with Natural Language Processing. Paper presented at GISRUK 2018, Leicester, United Kingdom.6 p.

Bibtex

@conference{696f2141acdb42af9e11a04e2cf0dc9d,
title = "Eliciting fuzzy location data from social media posts with Natural Language Processing",
abstract = "Social Media Platforms such as Twitter are collecting large volumes amounts of user generated content every day, much of which is location aware. Whilst there are clear use cases for data harvested from these platforms in research, harvesting and analysis of these datasets represents a substantial challenge. Existing work exploits geotagged or geocoded metadata collected alongside user generated content (and the challenges that accompany its use).However, the majority of user generated content lacks explicit locational information, but may still contain location information albeit in a less explicit, or “fuzzy”, form such as textual descriptions in the main body of the social media posting. This work explores the analysis of such datasets, and presents a novel generalisable methodolog",
author = "Gullick, {David Stephen} and Whyatt, {James Duncan} and Joseph Richardson",
year = "2018",
month = apr,
day = "17",
language = "English",
note = "GISRUK 2018 : 26th GIScience Research UK Conference, University of Leicester ; Conference date: 17-04-2018 Through 20-04-2018",
url = "http://leicester.gisruk.org",

}

RIS

TY - CONF

T1 - Eliciting fuzzy location data from social media posts with Natural Language Processing

AU - Gullick, David Stephen

AU - Whyatt, James Duncan

AU - Richardson, Joseph

PY - 2018/4/17

Y1 - 2018/4/17

N2 - Social Media Platforms such as Twitter are collecting large volumes amounts of user generated content every day, much of which is location aware. Whilst there are clear use cases for data harvested from these platforms in research, harvesting and analysis of these datasets represents a substantial challenge. Existing work exploits geotagged or geocoded metadata collected alongside user generated content (and the challenges that accompany its use).However, the majority of user generated content lacks explicit locational information, but may still contain location information albeit in a less explicit, or “fuzzy”, form such as textual descriptions in the main body of the social media posting. This work explores the analysis of such datasets, and presents a novel generalisable methodolog

AB - Social Media Platforms such as Twitter are collecting large volumes amounts of user generated content every day, much of which is location aware. Whilst there are clear use cases for data harvested from these platforms in research, harvesting and analysis of these datasets represents a substantial challenge. Existing work exploits geotagged or geocoded metadata collected alongside user generated content (and the challenges that accompany its use).However, the majority of user generated content lacks explicit locational information, but may still contain location information albeit in a less explicit, or “fuzzy”, form such as textual descriptions in the main body of the social media posting. This work explores the analysis of such datasets, and presents a novel generalisable methodolog

M3 - Conference paper

T2 - GISRUK 2018

Y2 - 17 April 2018 through 20 April 2018

ER -