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The Malmquist Productivity Index (MPI) is a major development in data envelopment analysis (DEA), aiming to assess productivity changes over time. The MPI estimates the total factor productivity growth of a decision-making unit (DMU) with multiple inputs and outputs. However, the special case of a single input alongside multiple outputs or multiple inputs with a single output has not been thoroughly studied. These configurations have some unique features, particularly regarding computational costs and the selection of lower bounds—commonly known as non-Archimedean epsilon—for the dual input and output weights in the multiplier DEA model. Moreover, DEA-based MPI often overlooks the role of epsilon in determining efficiency measures. This paper proposes a new approach for measuring DEA-based MPI with epsilon in single-input or single-output data sets. Four scenarios are designed, each based on varying epsilon values, to address settings with a single input and multiple outputs (SIMO) as well as settings with multiple inputs and a single output (MISO), with the aim of determining the optimal epsilon values. The proposed method ensures that no input or output is deemed non-instrumental to the production technology when estimating the MPI. The methodology’s effectiveness is demonstrated through an analysis of productivity growth in 18 OECD countries from 2005 to 2021.
Toloo et al. (Sun,) studied this question.