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Link prediction and feature relevance in knowledge networks: A machine learning approach

Academic Article
Publication Date:
2023
abstract:
We propose a supervised machine learning approach to predict partnership formation between universities. We focus on successful joint R&D projects funded by the Horizon 2020 programme in three research domains: Social Sciences and Humanities, Physical and Engineering Sciences, and Life Sciences. We perform two related analyses: link formation prediction, and feature importance detection. In predicting link formation, we consider two settings: one including all features, both exogenous (pertaining to the node) and endogenous (pertaining to the network); and one including only exogenous features (thus removing the network attributes of the nodes). Using out-of-sample cross-validated accuracy, we obtain 91% prediction accuracy when both types of attributes are used, and around 67% when using only the exogenous ones. This proves that partnership predictive power is on average 24% larger for universities already incumbent in the programme than for newcomers (for which network attributes are clearly unknown). As for feature importance, by computing super-learner average partial effects and elasticities, we find that the endogenous attributes are the most relevant in affecting the probability to generate a link, and observe a largely negative elasticity of the link probability to feature changes, fairly uniform across attributes and domains.
Iris type:
01.01 Articolo in rivista
Keywords:
Link prediction; Machine Learning; Knowledge Networks; Horizon 2020
List of contributors:
Cerulli, Giovanni; Zinilli, Antonio
Authors of the University:
CERULLI GIOVANNI
ZINILLI ANTONIO
Handle:
https://iris.cnr.it/handle/20.500.14243/451122
Published in:
PLOS ONE
Journal
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URL

https://journals.plos.org/plosone/article?id=10.1371/journal.pone.0290018
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