Building composite indicators for the territorial quality of life assessment in European regions: combining data reduction and alternative weighting techniques
Abstract
Development of composite indicators is a challenging task given that sustainability indices
are strongly dependent on how the sub-indicators are weighted. This is because relative
indicator weights may signifcantly difer based on the chosen weighting methods used in
the analysis. There is hardly any study that has paid attention to this issue so far. Therefore, this paper aims to fll this gap in the literature by searching the robustness of selected
weighting methods, i.e. entropy-weight (EW), principal component analysis (PCA),
machine learning approaches (random forest-RF), regression analysis (RA) and beneft-ofthe-doubt (BOD) when constructing a composite indicator. To research the current sustainability performance of European regions, the present study focuses on the Territorial Quality of Life Index—initially proposed by the ESPON Programme—that are aligned with the
specifc targets of the Sustainable Development Goals of the 2030 Agenda. The methods to
construct composite indicators include stages of data preparation (including the estimation
of missing values with random forest method), normalization, statistical transformation of
raw data, reduction of indicators in order to ease public communication (using the PCA
method) and data interpretation, weighting of the sub-indicators using EW, PCA, RF, RA
and BOD methods and their linear weighted aggregation, and checking for robustness and
sensitivity. The results suggest that there are signifcant diferences in the rank and spatial distribution of composite indicators based on the use of diferent weighting methods
considered in the analysis. The results from sensitivity analysis support the robustness of
entropy-weight method among others. The methodology used in the current analysis can be
adapted to other study areas and regions internationally. The fndings showed that Eastern
European countries and some Mediterranean countries have relatively lower index values
compared to other European regions; therefore, policy and planning actions are needed
covering these regions specifcally.