Data driven approach for weight restricted data envelopment analysis models with single output

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Date

2023

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Business
(2002)
We are a department that has been active for 22 years with the goal to determine the structural changes in economy and the problems of general business administration, to develop problem solving skills and to devise modelling techniques that fit our aims. Among our cornerstones are to graduate more students into administrative positions of our institutions, to help them realize their inner potential to be go-getters, to prepare them for the entrance exams for high-tier, well-respected public positions, and to help them participate graduate and doctorate degree programs at ease, nationally or internationally. In this regard, our course curriculum is constantly subject to updates. In addition, we do all in our power to graduate students that stand out, with double-major program opportunities. We make an effort to aid our students in kick-starting their professional life after completing a period of one semester at Private - Public institutions within the framework of our Cooperative Education Program.
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Department of Business
In parallel to our vision and mission statements, we offer graduate programs in Business Administration, Finance, Healthcare Management fields, either in Turkish or English as medium of instruction. Programs in English appeal to foreign students as well as Turkish ones for that we offer education through the latest that science has reached. We also offer online Master’s programs to students who cannot attend to our full-time programs.

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Abstract

This study aims to explore whether a machine learning algorithm can be used to make improvements in assessing unit efficiencies via a data envelopment analysis (DEA) model. In this study, a DEA model is used to calculate the efficiency scores of Desicion Making Units (DMUs). Then, an ML algorithm is trained that aims to predict the single output using inputs. Ranking of input features based on relative feature importance values obtained from the trained ML model is fed to the DEA model as weight restrictions. As a result, the two DEA models are compared with each other. ML-based insights (feature importance ranking) improve the DEA model in the direction of fewer zero weights. The additional weight restrictions are data depdendent, and hence realistic. As a novel approach, this study proposes the use of machine learning-based feature importance values to overcome a limitation of a DEA model.

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Source

Journal of the Turkish Operations Management (JTOM)

Volume

7

Issue

2

Start Page

1768

End Page

1779

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