Dealing with weighting scheme in composite indicators: An unsupervised distance-machine learning proposal for quantitative data
Metadata
Show full item recordEditorial
Elsevier
Materia
Composite indicator P2 distance Unsupervised machine learning Benchmarking Weighting scheme MARS PACS C02 C15 C44 C43
Date
2022-05-21Referencia bibliográfica
Eduardo Jiménez-Fernández, Angeles Sánchez, Mario Ortega-Pérez, Dealing with weighting scheme in composite indicators: An unsupervised distance-machine learning proposal for quantitative data, Socio-Economic Planning Sciences, Volume 83, 2022, 101339, ISSN 0038-0121, [https://doi.org/10.1016/j.seps.2022.101339]
Sponsorship
European Commission European Commission Joint Research Centre 813234; ERDF-Universidad de Granada B-SEJ-242-UGR20; Ministry of Science and Innovation, Spain (MICINN) Spanish Government PID2019-105708RB; Universidad de Granada/CBUAAbstract
There is increasing interest in the construction of composite indicators to benchmark units. However, the
mathematical approach on which the most commonly used techniques are based does not allow benchmarking in
a reliable way. Additionally, the determination of the weighting scheme in the composite indicators remains one
of the most troubling issues. Using the vector space formed by all the observations, we propose a new method for
building composite indicators: a distance or metric that considers the concept of proximity among units. This
approach enables comparisons between the units being studied, which are always quantitative. To this end, we
take the P2 Distance method of Pena Trapero as a starting point and improve its limitations. The proposed
methodology eliminates the linear dependence on the model and seeks functional relationships that enable
constructing the most efficient model. This approach reduces researcher subjectivity by assigning the weighting
scheme with unsupervised machine learning techniques. Monte Carlo simulations confirm that the proposed
methodology is robust.