Endogenous Aggregation of Multiple Data Envelopment Analysis Scores for Large Data Sets
This work addresses efficiency evaluation for organizations like hospitals, but it is incremental as it builds on existing DEA methods with regularization and multi-dimensional aggregation.
The authors tackled the problem of dynamic efficiency evaluation across multiple organizational dimensions using data envelopment analysis (DEA), proposing two regularized models (SBM and GP-SBM) that incorporate desirable and undesirable outputs and are suitable for large datasets, with results showing they outperform conventional benchmarking methods by better capturing correlations among variables.
We propose an approach for dynamic efficiency evaluation across multiple organizational dimensions using data envelopment analysis (DEA). The method generates both dimension-specific and aggregate efficiency scores, incorporates desirable and undesirable outputs, and is suitable for large-scale problem settings. Two regularized DEA models are introduced: a slack-based measure (SBM) and a linearized version of a nonlinear goal programming model (GP-SBM). While SBM estimates an aggregate efficiency score and then distributes it across dimensions, GP-SBM first estimates dimension-level efficiencies and then derives an aggregate score. Both models utilize a regularization parameter to enhance discriminatory power while also directly integrating both desirable and undesirable outputs. We demonstrate the computational efficiency and validity of our approach on multiple datasets and apply it to a case study of twelve hospitals in Ontario, Canada, evaluating three theoretically grounded dimensions of organizational effectiveness over a 24-month period from January 2018 to December 2019: technical efficiency, clinical efficiency, and patient experience. Our numerical results show that SBM and GP-SBM better capture correlations among input/output variables and outperform conventional benchmarking methods that separately evaluate dimensions before aggregation.