Knowledge Extraction and Application for Metal Materials Based on DBpedia

SKG(2014)

Cited 3|Views8
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Abstract
Linked data is developing very fast and becomingmore and more important in different domains. As a relativelycomprehensive linked data set, DBpedia contains billions oftriples, which involves knowledge from diverse domains. This paper aims to utilize the metal materials knowledge in DBpeida to provide more useful services for materials experts. A knowledge extraction algorithm is designed to extract metal materials knowledge from DBpedia into a local knowledge base. Then, we develop an experimental prototype for metal materials information recommendation based on semantic distance calculation. The experimental results show that the system can help users retrieve metal knowledge originated from DBpedia rapidly and conveniently.
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Key words
web sites,local knowledge base,knowledge based systems,dbpedia,recommender systems,materials science computing,semantic distance calculation,knowledge acquisition,semantic web,comprehensive linked data set,metal material information recommendation,metal knowledge retrieval,metal material knowledge extraction,materials,encyclopedias,data mining,internet,metals,electronic publishing
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