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The rise of artificial intelligence has recently led to bots writing real news stories about sports, finance and politics. As yet, bots have not turned their attention to science, but the changes AI bots could unleash in science writing are remarkable.
11:30-12:15:
Jean-Loup
Guillaume, Université catholique de Louvain,
Belgium and Université de Paris 6, France
Ultra-fast
multi-resolution method for detecting communities in large networks
A. Sonnenbichler. (2010)cite arxiv:1006.4271
Comment: Presented at the International Network For Social Network Analysis
(INSNA): Sunbelt Conference 2009, San Diego, California, USA. 9 pages, 6
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