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Developing an integrated model for evaluating R&D organizations’ performance: combination of DEA-ANP

    Seyed Amirali Hoseini   Affiliation
    ; Alireza Fallahpour Affiliation
    ; Kuan Yew Wong   Affiliation
    ; Jurgita Antuchevičienė   Affiliation

Abstract

Assessing the performance of the Research and development (R&D) organizations to achieve higher productivity, growth, and development is always a critical necessity. Therefore, developing a more accurate model to evaluate the performance is always required. For this purpose, this study is aimed at developing a decision-making model for evaluating R&D performance. The model comes up with determining the most proper evaluative criteria for assessing R&D organizations. Then, it integrates Data Envelopment Analysis (DEA) with Analytical Network Process (ANP) to assess R&D performance. This paper is aimed to develop an integrated model for evaluating R&D performance. The findings of the study show that the DEA-ANP model is an accurate and acceptable model for evaluating R&D organizations’ performance.

Keyword : R&D organizations, efficiency, Data Envelopment Analysis (DEA), Analytical Network Process (ANP), evaluation, decision-making

How to Cite
Hoseini, S. A., Fallahpour, A., Wong, K. Y., & Antuchevičienė, J. (2021). Developing an integrated model for evaluating R&D organizations’ performance: combination of DEA-ANP . Technological and Economic Development of Economy, 27(4), 970-991. https://doi.org/10.3846/tede.2021.15144
Published in Issue
Jul 1, 2021
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This work is licensed under a Creative Commons Attribution 4.0 International License.

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