DocumentCode :
265591
Title :
Theory Identity: A Machine-Learning Approach
Author :
Larsen, Kai R. ; Hovorka, Dirk ; West, Jevin ; Birt, James ; Pfaff, James R. ; Chambers, Trevor W. ; Sampedro, Zebula R. ; Zager, Nick ; Vanstone, Bruce
Author_Institution :
Univ. of Colorado, Boulder, CO, USA
fYear :
2014
fDate :
6-9 Jan. 2014
Firstpage :
4639
Lastpage :
4648
Abstract :
Theory identity is a fundamental problem for researchers seeking to determine theory quality, create theory ontologies and taxonomies, or perform focused theory-specific reviews and meta-analyses. We demonstrate a novel machine-learning approach to theory identification based on citation data and article features. The multi-disciplinary ecosystem of articles which cite a theory´s originating paper is created and refined into the network of papers predicted to contribute to, and thus identify, a specific theory. We provide a ´proof-of-concept´ for a highly-cited theory. Implications for cross-disciplinary theory integration and the identification of theories for a rapidly expanding scientific literature are discussed.
Keywords :
citation analysis; ontologies (artificial intelligence); citation data; cross-disciplinary theory integration; focused theory-specific reviews; fundamental problem; highly-cited theory; machine-learning approach; meta-analyses; multidisciplinary ecosystem; scientific literature; taxonomies; theory identification; theory identity; theory ontologies; theory quality; Abstracts; Ecosystems; Educational institutions; Ontologies; Portals; Subscriptions; Testing;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
System Sciences (HICSS), 2014 47th Hawaii International Conference on
Conference_Location :
Waikoloa, HI
Type :
conf
DOI :
10.1109/HICSS.2014.564
Filename :
6759171
Link To Document :
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