HeadEx

From Knoesis wiki
Jump to: navigation, search

HeadExLogo.jpg

HeadEx: Triple Extraction from Stream of News Headlines on Twitter using n-ary Relations


Abstract Description: The ever-growing datasets published on Linked Data mainly contain encyclopedic information. However, there is a lack of datasets extracted from unstructured real-time sources. News Headlines published on Twitter provide a real-time stream of events. In this paper, we propose an approach for extracting triples, leveraging n-ary relations, from News Headlines on Twitter in real-time. First, we introduce a mechanism for representing n-ary relations and their arguments as a background data model. This representation leverages Levin's classification of English Verbs in \cite{levin_english_1993} to support the use of unstructured text for constructing the background data model and capturing mentions of n-ary relations. Then, we use a learning approach, employing proposed syntactic features derived from parsing, to extract information respecting the data model. As a proof-of-concept, we follow a case study containing three distinct n-ary relations. The results of our experiments are promising and can be used to create timely and structured news headlines dataset.


Background Data Model

HeadEx utilizes CEVO Ontology.




HeadEx Architecture

HeadExArchitecture.jpg