Inverse DEA with frontier changes for new product target setting

•A managerial use of inverse DEA for new product target setting is discussed.•The necessity of considering frontier changes in inverse DEA is addressed.•An inverse DEA problem considering frontier changes is developed.•The new method enables a non-radial output estimation based on decision weights.•...

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Veröffentlicht in:European journal of operational research 2016-10, Vol.254 (2), p.510-516
1. Verfasser: Lim, Dong-Joon
Format: Artikel
Sprache:eng
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Zusammenfassung:•A managerial use of inverse DEA for new product target setting is discussed.•The necessity of considering frontier changes in inverse DEA is addressed.•An inverse DEA problem considering frontier changes is developed.•The new method enables a non-radial output estimation based on decision weights.•The proposed approach is demonstrated using the case of vehicle engine development. Inverse data envelopment analysis (DEA) is a reversed optimization problem that can serve as a useful planning tool for managerial decisions by providing information such as how much resources (or outcomes) should be invested (or produced) to achieve a desired level of competitiveness whereas the conventional DEA focuses mainly on a post-hoc assessment of the organizational performance. Inverse DEA studies however are based on an assumption that the efficiency level of observed decision making units (DMUs) will not change within the period of interest, which in fact confines the use of inverse DEA to a sensitivity analysis by simply addressing what alternative levels of input and/or output would have been possible to result in the same efficiency score obtained. In this paper, we discuss an inverse DEA problem considering expected changes of the production frontier in the future by integrating the inverse optimization problem with a time series application of DEA so that it can be an ex-ante decision support tool for the new product target setting practices. We use an example of the vehicle engine development case to demonstrate the proposed method.
ISSN:0377-2217
1872-6860
DOI:10.1016/j.ejor.2016.03.059