| Literature DB >> 28077914 |
Hasti Ziaimatin1, Tudor Groza1, Tania Tudorache2, Jane Hunter1.
Abstract
Collaboration platforms provide a dynamic environment where the content is subject to ongoing evolution through expert contributions. The knowledge embedded in such platforms is not static as it evolves through incremental refinements - or micro-contributions. Such refinements provide vast resources of tacit knowledge and experience. In our previous work, we proposed and evaluated a Semantic and Time-dependent Expertise Profiling (STEP) approach for capturing expertise from micro-contributions. In this paper we extend our investigation to structured micro-contributions that emerge from an ontology engineering environment, such as the one built for developing the International Classification of Diseases (ICD) revision 11. We take advantage of the semantically related nature of these structured micro-contributions to showcase two major aspects: (i) a novel semantic similarity metric, in addition to an approach for creating bottom-up baseline expertise profiles using expertise centroids; and (ii) the application of STEP in this new environment combined with the use of the same semantic similarity measure to both compare STEP against baseline profiles, as well as to investigate the coverage of these baseline profiles by STEP.Entities:
Keywords: Expertise profiling; Knowledge-curation platforms; Ontologies; Semantic similarities
Year: 2015 PMID: 28077914 PMCID: PMC5222614 DOI: 10.1007/s10844-015-0376-1
Source DB: PubMed Journal: J Intell Inf Syst ISSN: 0925-9902 Impact factor: 1.888