Sciweavers

AIRS
2010
Springer

Event Recognition from News Webpages through Latent Ingredients Extraction

13 years 9 months ago
Event Recognition from News Webpages through Latent Ingredients Extraction
We investigate the novel problem of event recognition from news webpages. "Events" are basic text units containing news elements. We observe that a news article is always constituted by more than one event, namely Latent Ingredients (LIs) which form the whole document. Event recognition aims to mine these Latent Ingredients out. Researchers have tackled related problems before, such as discourse analysis and text segmentation, with different goals and methods. The challenge is to detect event boundaries from plain contexts accurately and the boundary decision is affected by multiple features. Event recognition can be beneficial for topic detection with finer granularity and better accuracy. In this paper, we present two novel event recognition models based on LIs extraction and exploit a set of useful features consisting of context similarity, distance restriction, entity influence from thesaurus and temporal proximity. We conduct thorough experiments with two real datasets a...
Rui Yan, Yu Li, Yan Zhang, Xiaoming Li
Added 28 Feb 2011
Updated 28 Feb 2011
Type Journal
Year 2010
Where AIRS
Authors Rui Yan, Yu Li, Yan Zhang, Xiaoming Li
Comments (0)