Detecting Events in a Million New York Times ArticlesTristan Snowsill, Ilias Flaounas, Tijl De Bie, Nello Cristianini, Detecting Events in a Million New York Times Articles . Machine Learning and Knowledge Discovery in Databases (ECML/PKDD), pp. 615–618. September 2010. No electronic version available. External information
We present a demonstration of a newly developed text stream event detection method on over a million articles from the New York Times corpus. The event detection is designed to operate in a predominantly on-line fashion, reporting new events within a specified timeframe. The event detection is achieved by detecting significant changes in the statistical properties of the text where those properties are efficiently stored and updated in a suffix tree. This particular demonstration shows how our method is effective at discovering both short- and long-term events (which are often denoted topics), and how it automatically copes with topic drift on a corpus of 1035263 articles.
- Homepage of Tristan Snowsill
- Homepage of Ilias Flaounas
- Homepage of Tijl De Bie
- Homepage of Nello Cristianini