Building and displaying name relations using automatic unsupervised analysis of newspaper articles
Pouliquen, Bruno, Steinberger, Ralf, Ignat, Camelia, Oellinger, Tamara
–arXiv.org Artificial Intelligence
We present a tool that, from automatically recognised names, tries to infer inter-person relations in order to present associated people on maps. Based on an in-house Named Entity Recognition tool, applied on clusters of an average of 15,000 news articles per day, in 15 different languages, we build a knowledge base that allows extracting statistical co-occurrences of persons and visualising them on a per-person page or in various graphs.
arXiv.org Artificial Intelligence
Dec-1-2009
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