A comparison of methods for cascade prediction

Conference object, Preprint English OPEN
Guo, Ruocheng ; Shakarian, Paulo (2016)
  • Publisher: IEEE
  • Related identifiers: doi: 10.1109/asonam.2016.7752296
  • Subject: Computer Science - Social and Information Networks | Physics - Physics and Society

Information cascades exist in a wide variety of platforms on Internet. A very important real-world problem is to identify which information cascades can go viral. A system addressing this problem can be used in a variety of applications including public health, marketin... View more
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