open access publication

Article, 2024

Counterfactual analysis and target setting in benchmarking

European Journal of Operational Research, ISSN 1872-6860, 0377-2217, Volume 315, 3, Pages 1083-1095, 10.1016/j.ejor.2024.01.005

Contributors

Bogetoft, Peter 0000-0002-2173-2791 [1] Ramírez-Ayerbe, Jasone 0000-0002-7715-3756 (Corresponding author) [2] Morales, Dolores Romero 0000-0001-7945-1469 [1]

Affiliations

  1. [1] Copenhagen Business School
  2. [NORA names: CBS Copenhagen Business School; University; Denmark; Europe, EU; Nordic; OECD];
  3. [2] University of Seville
  4. [NORA names: Spain; Europe, EU; OECD]

Abstract

Data Envelopment Analysis (DEA) allows us to capture the complex relationship between multiple inputs and outputs in firms and organizations. Unfortunately, managers may find it hard to understand a DEA model and this may lead to mistrust in the analyses and to difficulties in deriving actionable information from the model. In this paper, we propose to use the ideas of target setting in DEA and of counterfactual analysis in Machine Learning to overcome these problems. We define DEA counterfactuals or targets as alternative combinations of inputs and outputs that are close to the original inputs and outputs of the firm and lead to desired improvements in its performance. We formulate the problem of finding counterfactuals as a bilevel optimization model. For a rich class of cost functions, reflecting the effort an inefficient firm will need to spend to change to its counterfactual, finding counterfactual explanations boils down to solving Mixed Integer Convex Quadratic Problems with linear constraints. We illustrate our approach using both a small numerical example and a real-world dataset on banking branches.

Keywords

Data Envelopment Analysis, Data Envelopment Analysis model, actionable information, analysis, bank branches, banks, benchmarks, bilevel optimization model, branches, combination, combination of inputs, complex relationship, constraints, convex quadratic problem, cost, cost function, counterfactual analysis, counterfactual explanations, counterfactuals, data, dataset, difficulties, envelopment analysis, examples, explanation, firms, function, improvement, information, input, learning, machine, machine learning, management, mistrust, mixing, model, multiple inputs, numerical examples, optimization model, organization, original input, output, performance, problem, quadratic problem, relationship, sets, target, target setting

Funders

  • European Cooperation in Science and Technology
  • European Commission

Data Provider: Digital Science