Published January 1, 2018
| Version v1
Conference paper
Open
Event Detection by Change Tracking on Community Structure of Temporal Networks
Description
Event detection is a popular research problem, aiming to detect events from online data sources with least possible delay. Most of the previous work focus on analyzing textual content such as social media postings to detect happenings. In this work, we consider event detection as a change detection problem in network structure, and propose a method that detects change in community structure extracted from communication network. We study three versions of the method based on different change models. Experimental analysis on benchmark data set reveals that change in the community can be used as an indication of an event.
Files
bib-1fd2a7a0-e920-40c9-85d9-9b8be8bc5926.txt
Files
(224 Bytes)
| Name | Size | Download all |
|---|---|---|
|
md5:5af7f61489936ca99650f5131fa2eb4c
|
224 Bytes | Preview Download |