Mining Meta-indicators of University Ranking: A Machine Learning Approach Based on SHAP
This addresses the challenge for major universities struggling with complex ranking systems, though it appears incremental in applying existing methods to this domain.
The research tackled the complexity of university ranking indicator systems by identifying three meta-indicators—time, space, and relationships—using interpretable machine learning, specifically SHAP, to simplify evaluation.
University evaluation and ranking is an extremely complex activity. Major universities are struggling because of increasingly complex indicator systems of world university rankings. So can we find the meta-indicators of the index system by simplifying the complexity? This research discovered three meta-indicators based on interpretable machine learning. The first one is time, to be friends with time, and believe in the power of time, and accumulate historical deposits; the second one is space, to be friends with city, and grow together by co-develop; the third one is relationships, to be friends with alumni, and strive for more alumni donations without ceiling.