Back to Search Start Over

Früherkennung wissenschaftlicher Konvergenz im Hochschulmanagement

Authors :
Melnychuk, T.
Galke, L.
Seidlmayer, E.
Förster, K.
Tochtermann, K.
Schultz, C.
Source :
Hochschulmanagement
Publication Year :
2021

Abstract

It is crucial for universities to recognize early signals of scientific convergence. Scientific convergence describes a dynamic pattern where the distance between different fields of knowledge shrinks over time. This knowledge space is beneficial to radical innovations and new promising research topics. Research in converging areas of knowledge can therefore allow universities to establish a leading position in the science community. The Q-AKTIV project develops a new approach on the basis of machine learning to identify scientific convergence at an early stage. In this work, we briefly present this approach and the first results of empirical validation. We discuss the benefits of an instrument building on our approach for the strategic management of universities and other research institutes.

Details

Language :
German
Database :
OpenAIRE
Journal :
Hochschulmanagement
Accession number :
edsair.od......1874..b5cc62deffcff341c7d45b45620c688a