This HTML5 document contains 40 embedded RDF statements represented using HTML+Microdata notation.

The embedded RDF content will be recognized by any processor of HTML5 Microdata.

Namespace Prefixes

PrefixIRI
n9https://kar.kent.ac.uk/id/eprint/67656#
dctermshttp://purl.org/dc/terms/
n2https://kar.kent.ac.uk/id/eprint/
wdrshttp://www.w3.org/2007/05/powder-s#
n11doi:10.1186/
dchttp://purl.org/dc/elements/1.1/
n14http://purl.org/ontology/bibo/status/
rdfshttp://www.w3.org/2000/01/rdf-schema#
n5https://kar.kent.ac.uk/id/subject/
n16https://demo.openlinksw.com/about/id/entity/https/raw.githubusercontent.com/annajordanous/CO644Files/main/
n6http://eprints.org/ontology/
bibohttp://purl.org/ontology/bibo/
n17https://kar.kent.ac.uk/id/publication/
n18https://kar.kent.ac.uk/id/org/
rdfhttp://www.w3.org/1999/02/22-rdf-syntax-ns#
n21https://kar.kent.ac.uk/67656/
owlhttp://www.w3.org/2002/07/owl#
n7https://kar.kent.ac.uk/id/document/
n15https://kar.kent.ac.uk/id/
xsdhhttp://www.w3.org/2001/XMLSchema#
n13https://demo.openlinksw.com/about/id/entity/https/www.cs.kent.ac.uk/people/staff/akj22/materials/CO644/
n8https://kar.kent.ac.uk/id/person/

Statements

Subject Item
n2:67656
rdf:type
bibo:Article bibo:AcademicArticle n6:EPrint n6:ArticleEPrint
rdfs:seeAlso
n21:
owl:sameAs
n11:s13673-018-0145-6
n6:hasAccepted
n7:2213380
n6:hasDocument
n7:3145668 n7:3150594 n7:3145678 n7:3150595 n7:3150596 n7:2250090 n7:3150597 n7:2250091 n7:2250092 n7:2250093 n7:2213380 n7:2214552
n6:hasPublished
n7:3145668
dc:hasVersion
n7:2213380 n7:3145668
dcterms:title
Using semantic clustering to support situation awareness on Twitter: The case of World Views
wdrs:describedby
n13:export_kar_RDFN3.n3 n16:export_kar_RDFN3.n3
dcterms:date
2018-07-30
dcterms:creator
n8:ext-ff67f3f80d464a98b3ee5bafbf3ce64e n8:ext-26487f38999341fc871482d9f3864b6b n8:ext-j.r.c.nurse@kent.ac.uk n8:ext-5bdb055a4c6e60b7b866b4b1e80a3922
bibo:status
n14:peerReviewed n14:published
dcterms:publisher
n18:ext-1c5ddec173ca8cdfba8b274309638579
bibo:abstract
In recent years, situation awareness has been recognised as a critical part of effective decision making, in particular for crisis management. One way to extract value and allow for better situation awareness is to develop a system capable of analysing a dataset of multiple posts, and clustering consistent posts into different views or stories (or, world views). However, this can be challenging as it requires an understanding of the data, including determining what is consistent data, and what data corroborates other data. Attempting to address these problems, this article proposes Subject-Verb-Object Semantic Suffix Tree Clustering (SVOSSTC) and a system to support it, with a special focus on Twitter content. The novelty and value of SVOSSTC is its emphasis on utilising the Subject-Verb-Object (SVO) typology in order to construct semantically consistent world views, in which individuals---particularly those involved in crisis response---might achieve an enhanced picture of a situation from social media data. To evaluate our system and its ability to provide enhanced situation awareness, we tested it against existing approaches, including human data analysis, using a variety of real-world scenarios. The results indicated a noteworthy degree of evidence (e.g., in cluster granularity and meaningfulness) to affirm the suitability and rigour of our approach. Moreover, these results highlight this article's proposals as innovative and practical system contributions to the research field.
dcterms:isPartOf
n15:repository n17:ext-21921962
dcterms:subject
n5:T n5:QA n5:H1
bibo:authorList
n9:authors