Title :
Prophet -- A Link-Predictor to Learn New Rules on NELL
Author :
Appel, Ana Paula ; Hruschka, Estevam Rafael, Jr.
Author_Institution :
CEUNES, Fed. Univ. of Espirito Santo, Sao Mateus, Brazil
Abstract :
Link prediction is a task that in graph-based data models, as well as, in complex networks not only to predict edges that will appear in a near future but also to find missing edges. NELL is a never ending language learner system that has the ability to continuously learn to extract structured information from unstructured text (fetched from web pages) and map this information to a continuously growing knowledge base. NELL´s knowledge base can be seen as a complex network, allowing us to apply graph mining techniques to extract new knowledge and enhance the system performance. In this paper we present Prophet, a link prediction component that can be connected to NELL allowing the it to infer new rules and misplaced connections among nodes, thus, helping the never-ending system to learn more and better each day. We also show that Prophet can extract new knowledge that cannot be obtained using traditional first order rule extraction procedures.
Keywords :
data mining; data models; graph theory; knowledge acquisition; NELL knowledge base; Prophet; edge prediction; first order rule extraction procedures; graph mining techniques; graph-based data models; knowledge extraction; language learner system; link prediction component; never-ending system; structured information extraction; unstructured text; Complex networks; Data mining; Joining processes; Knowledge based systems; Ontologies; Prediction algorithms; common neighbors; graph mining; link prediction; never-ending-learning;
Conference_Titel :
Data Mining Workshops (ICDMW), 2011 IEEE 11th International Conference on
Conference_Location :
Vancouver, BC
Print_ISBN :
978-1-4673-0005-6
DOI :
10.1109/ICDMW.2011.142