The main objective of this work is to show the potentialities of recently developed
approaches for automatic knowledge extraction directly from the universities’ websites. The
information automatically extracted can be potentially updated with a frequency higher than
once per year, and be safe from manipulations or misinterpretations. Moreover, this approach
allows us flexibility in collecting indicators about the efficiency of universities’ websites and
their effectiveness in disseminating key contents. These new indicators can complement
traditional indicators of scientific research (e.g. number of articles and number of citations)
and teaching (e.g. number of students and graduates) by introducing further dimensions to
allow new insights for “profiling” the analyzed universities.
The main findings of this study concern the evaluation of the potential in
digitalization of universities, in particular by presenting techniques for the automatic extraction
of information from the web to build indicators of quality and impact of universities’ websites.
These indicators can complement traditional indicators and can be used to identify groups
of universities with common features using clustering techniques working with the above indicators.
Dettaglio pubblicazione
2020, JOURNAL OF DATA AND INFORMATION SCIENCE, Pages 43-55 (volume: 5)
Exploring the Potentialities of Automatic Extraction of University Webometric Information (01a Articolo in rivista)
Bianchi Gianpiero, Bruni Renato, Daraio Cinzia, Laureti Palma Antonio, Perani Giulio, Scalfati Francesco
Gruppo di ricerca: Combinatorial Optimization
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