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Complementarity of information found in media reports across different countries and languages
Published on Apr 22, 20118891 Views
There is ample evidence that information published in the media in different countries is largely complementary and that only the biggest stories are being discussed internationally. This applies to f
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Chapter list
Complementarity of information found in media reports across different countries and languages 00:00
Agenda - 100:40
Joint Research Centre - Who we are01:58
EMM media monitoring users02:49
Europe Media Monitor (EMM) News gathering04:01
Agenda - 205:48
Multilinguality: coverage of medical news in various languages06:01
NewsBrief Live Cluster Map07:27
Multilinguality: More information about relations between people08:23
Multilinguality: less-biased centrality in social networks09:40
Multilinguality: Gathering more information about people10:46
Agenda - 312:08
EMM – NewsBrief & MedISys (up to 50 languages)12:35
MedISys – Filtering and classification in up to 50 languages14:43
MedISys - Aggregation of multilingual information; Alerting15:18
Latest News17:15
EMM-NewsBrief – Example page: Ecology17:32
Agenda - 4 18:28
NewsExplorer – Multilingual daily news overview18:40
NewsExplorer – Cross - lingual cluster linking19:57
NewsExplorer – Time line: biggest clusters per day20:35
NewsExplorer – Aggregation of clusters into longer "stories"21:36
Name variants found in 16 hours of multilingual news analysis23:21
NewsExplorer – Information about people24:21
NewsExplorer – Relation exploration26:04
Agenda - 526:33
EMM - NEXUS Event Extraction System26:45
EMM - NEXUS – Event Extraction System26:51
Event Extraction Output29:16
Aggregating information extracted from various articles29:20
Event extraction – Text Version30:11
Event extraction – Display on a map30:19
Event extraction – Display on a map – click on one event30:30
Event extraction – View news cluster and translation30:57
Event types currently recognised31:58
Agenda - 632:16
Ongoing: Opinion mining (Sentiment Analysis)32:33
Ongoing: Monitoring social media33:33
Summary – News complementarity34:12
Questions?35:33