Communities of academic authors are usually identified by means of standard community detection algorithms, which exploit 'static' relations, such as co-authorship or citation networks. In contrast with these approaches, here we focus on diachronic topic-based communities -i.e., communities of people who appear to work on semantically related topics at the same time. These communities are interesting because their analysis allows us to make sense of the dynamics of the research world -e.g., migration of researchers from one topic to another, new communities being spawn by older ones, communities splitting, merging, ceasing to exist, etc. To this purpose, we are interested in developing clustering methods that are able to handle correctly the dynamic aspects of topic-based community formation, prioritizing the relationship between researchers who appear to follow the same research trajectories. We thus present a novel approach called Temporal Semantic Topic-Based Clustering (TST), which exploits a novel metric for clustering researchers according to their research trajectories, defined as distributions of semantic topics over time. The approach has been evaluated through an empirical study involving 25 experts from the Semantic Web and Human-Computer Interaction areas. The evaluation shows that TST exhibits a performance comparable to the one achieved by human experts. © 2014 Springer International Publishing.

Osborne, F., Scavo, G., Motta, E. (2014). Identifying diachronic topic-based research communities by clustering shared research trajectories. In The Semantic Web: Trends and Challenges. ESWC 2014 (pp.114-129). Springer Verlag [10.1007/978-3-319-07443-6_9].

Identifying diachronic topic-based research communities by clustering shared research trajectories

Osborne F;
2014

Abstract

Communities of academic authors are usually identified by means of standard community detection algorithms, which exploit 'static' relations, such as co-authorship or citation networks. In contrast with these approaches, here we focus on diachronic topic-based communities -i.e., communities of people who appear to work on semantically related topics at the same time. These communities are interesting because their analysis allows us to make sense of the dynamics of the research world -e.g., migration of researchers from one topic to another, new communities being spawn by older ones, communities splitting, merging, ceasing to exist, etc. To this purpose, we are interested in developing clustering methods that are able to handle correctly the dynamic aspects of topic-based community formation, prioritizing the relationship between researchers who appear to follow the same research trajectories. We thus present a novel approach called Temporal Semantic Topic-Based Clustering (TST), which exploits a novel metric for clustering researchers according to their research trajectories, defined as distributions of semantic topics over time. The approach has been evaluated through an empirical study involving 25 experts from the Semantic Web and Human-Computer Interaction areas. The evaluation shows that TST exhibits a performance comparable to the one achieved by human experts. © 2014 Springer International Publishing.
paper
Clustering; Community Detection; Fuzzy C-Means; Scholarly Data; Scholarly Ontologies; Semantic Technologies; Similarity Metrics;
English
11th International Conference on Semantic Web: Trends and Challenges, ESWC 2014 - 25 May 2014 through 29 May 2014
2014
The Semantic Web: Trends and Challenges. ESWC 2014
9783319074429
2014
8465
114
129
https://link.springer.com/chapter/10.1007/978-3-319-07443-6_9
none
Osborne, F., Scavo, G., Motta, E. (2014). Identifying diachronic topic-based research communities by clustering shared research trajectories. In The Semantic Web: Trends and Challenges. ESWC 2014 (pp.114-129). Springer Verlag [10.1007/978-3-319-07443-6_9].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/381573
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