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arxiv: 1803.06249 · v1 · pith:4RFLG6QEnew · submitted 2018-03-16 · 💻 cs.DL · physics.soc-ph· stat.AP

Link prediction for interdisciplinary collaboration via co-authorship network

classification 💻 cs.DL physics.soc-phstat.AP
keywords collaborationnetworkco-authorshipinterdisciplinarylinkpredictionacademicanalyse
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We analyse the Publication and Research (PURE) data set of University of Bristol collected between $2008$ and $2013$. Using the existing co-authorship network and academic information thereof, we propose a new link prediction methodology, with the specific aim of identifying potential interdisciplinary collaboration in a university-wide collaboration network.

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