Effective Decision Making: Data Envelopment Analysis for Efficiency Evaluation in the Cloud Computing Marketplaces

Assessing business performance is a critical issue for practicing managers, and business performance has always been of interest to managers and researchers. In recent years, the world has experienced a rapid growth in the cloud computing service sector thanks to its benefits to business organizations and economic development. Therefore, the performance efficiency of this sector has been concerned as one of the keys in today’s economic environment. This study aimed to assess the performance efficiency of cloud computing service providers in the United States of America, one of the biggest global markets in terms of cloud computing, by applying the data envelopment analysis models. The efficiency of cloud computing providers was evaluated based on the assumption of the non-cooperative game among cloud computing providers in which providers selfishly choose the best strategy to maximize their payoff with three stages. In the first stage, the performance of these providers over the past period was measured by a super slack-based measure. In the second stage, the performance in the future period was predicted by the new data envelopment analysis model: the past–present–future model based on resampling. In the last stage, the efficiency improvement was investigated by adopting the Malmquist productivity index. The findings of this study indicated that the percentage of inefficient providers would increase from 10% in the period from 2017 to 2020 to 20% for 2021 and 2024. Moreover, 30% of providers showed a regress in performance efficiency over the research period of 2017 to 2024. The results of this study provide an insight picture to the decision-makers, and this research will fill the gap in the literature as the first study that measures and predicts the performance efficiency of cloud computing service providers, which will provide a helpful reference for future studies.

[1]  Joydev Ghosh,et al.  Energy Efficiency Analysis by Game-Theoretic Approach in the Next Generation Network , 2019, IETE Technical Review.

[2]  Abdulaziz Aljabre Cloud Computing for Increased Business Value , 2012 .

[3]  R. Fisher FREQUENCY DISTRIBUTION OF THE VALUES OF THE CORRELATION COEFFIENTS IN SAMPLES FROM AN INDEFINITELY LARGE POPU;ATION , 1915 .

[4]  Chia-Nan Wang,et al.  Performance Evaluation of Major Asian Airline Companies Using DEA Window Model and Grey Theory , 2019, Sustainability.

[5]  D. Štreimikienė,et al.  Non-Parametric Approach to Measuring the Efficiency of Banking Sectors in European Union Countries , 2018 .

[6]  Jan Schoenfelder,et al.  The use of Data Envelopment Analysis (DEA) in healthcare with a focus on hospitals , 2019, Health care management science.

[7]  Lai-Wang Wang,et al.  Assessment of the Energy Efficiency Improvement of Twenty-Five Countries: A DEA Approach , 2019, Energies.

[8]  Kaoru Tone,et al.  Dealing with Undesirable Outputs in DEA: A Slacks-based Measure (SBM) Approach , 2003 .

[9]  R. Farzipoor Saen,et al.  Assessing the sustainability of cloud computing service providers for Industry 4.0: a state-of-the-art analytical approach , 2021, International Journal of Production Research.

[10]  Bo-Wen Yi,et al.  Assessing the technological innovation efficiency of China's high-tech industries with a two-stage network DEA approach , 2020 .

[11]  K. Tone,et al.  DEA Scores’ Confidence Intervals with Past-Present and Past-Present-Future Based Resampling , 2016 .

[12]  Gi-Tae Yeo,et al.  The Impact of Ferry Disasters on Operational Efficiency of the South Korean Coastal Ferry Industry: A DEA-Window Analysis , 2018, The Asian Journal of Shipping and Logistics.

[13]  R. Färe,et al.  Productivity Growth, Technical Progress, and Efficiency Change in Industrialized Countries , 1994 .

[14]  Yumei Hou,et al.  A DEA Approach for Assessing the Energy, Environmental and Economic Performance of Top 20 Industrial Countries , 2019, Processes.

[15]  Yang-Hoon Kim,et al.  Benefits of cloud computing adoption for smart grid security from security perspective , 2015, The Journal of Supercomputing.

[16]  Jamal A. Farooquie,et al.  Productivity change of coal-fired thermal power plants in India: a Malmquist index approach , 2011 .

[17]  L. R. Christensen,et al.  THE ECONOMIC THEORY OF INDEX NUMBERS AND THE MEASUREMENT OF INPUT, OUTPUT, AND PRODUCTIVITY , 1982 .

[18]  Yung‐ho Chiu,et al.  Prevaluating efficiency gains from potential mergers and acquisitions in the financial industry with the Resample Past–Present–Future data envelopment analysis approach , 2020 .

[19]  Haiyan He,et al.  Innovation efficiency of semiconductor industry in China: A new framework based on generalized three-stage DEA analysis , 2019, Socio-Economic Planning Sciences.

[20]  Yung‐ho Chiu,et al.  Efficiency evaluation of China's high-tech industry with a multi-activity network data envelopment analysis approach , 2019, Socio-Economic Planning Sciences.

[21]  Ali Emrouznejad,et al.  A survey and analysis of the first 40 years of scholarly literature in DEA: 1978–2016 , 2018 .

[22]  Kyungwan Ko,et al.  Efficiency Analysis of Retail Chain Stores in Korea , 2017 .

[23]  Hongqin Peng,et al.  Tourism Flows Prediction based on an Improved Grey GM(1,1) Model , 2014 .

[24]  Chia-Nan Wang,et al.  A Decision Support Model for Measuring Technological Progress and Productivity Growth: The Case of Commercial Banks in Vietnam , 2021, Axioms.

[25]  Mohamed Erradi,et al.  Using cloud computing services in e-learning process: Benefits and challenges , 2017, Education and Information Technologies.

[26]  Kaoru Tone,et al.  Past-present-future Intertemporal DEA models , 2015, J. Oper. Res. Soc..

[27]  Saudi Arabia,et al.  Cloud Based E-Government: Benefits and Challenges , 2013 .

[28]  Jordi Guitart,et al.  Assessing and forecasting energy efficiency on Cloud computing platforms , 2015, Future Gener. Comput. Syst..

[29]  Albert Y. Zomaya,et al.  Energy efficient utilization of resources in cloud computing systems , 2010, The Journal of Supercomputing.

[30]  Lai-Wang Wang,et al.  Applying SFA and DEA in Measuring Banks Cost Efficiency in Relation to Lending Activities: The Case of Vietnamese Commercial Banks , 2019, International Journal of Scientific and Research Publications (IJSRP).

[31]  Tzu-Li Tien,et al.  A research on the grey prediction model GM(1, n) , 2012, Appl. Math. Comput..

[32]  Syed Mithun Ali,et al.  A novel particle swarm optimization-based grey model for the prediction of warehouse performance , 2021, J. Comput. Des. Eng..

[33]  Wenqing Wu,et al.  Application of the novel fractional grey model FAGMO(1,1,k) to predict China's nuclear energy consumption , 2018, Energy.

[34]  Erkie Asmare,et al.  Review on Parametric and NonparametricMethods of Efficiency Analysis , 2018 .

[35]  Chia-Nan Wang,et al.  Measuring the Macroeconomic Performance among Developed Countries and Asian Developing Countries: Past, Present, and Future , 2018, Sustainability.

[36]  Hong Yan,et al.  Scale, congestion, efficiency and effectiveness in e-commerce firms , 2016, Electron. Commer. Res. Appl..

[37]  O. Dluhopolskyi,et al.  MODELLING THE EFFICIENCY OF THE CLOUD COMPUTING IMPLEMENTATION AT ENTERPRISES , 2019, Marketing and Management of Innovations.

[38]  Wen-Min Lu,et al.  Exploring the efficiency and effectiveness in global e-retailing companies , 2011, Comput. Oper. Res..

[39]  Yu-Shan Chen,et al.  Applying DEA, MPI, and grey model to explore the operation performance of the Taiwanese wafer fabrication industry , 2011 .

[40]  D. Wu,et al.  Are Sustainable Banks Efficient and Productive? A Data Envelopment Analysis and the Malmquist Productivity Index Analysis , 2019, Sustainability.

[41]  Yung-Ho Chiu,et al.  Performance evaluation of China's Hi-tech zones in the post financial crisis era — Analysis based on the dynamic network SBM model , 2015 .

[42]  Abraham Charnes,et al.  Measuring the efficiency of decision making units , 1978 .

[43]  Madjid Tavana,et al.  A hybrid data envelopment analysis and game theory model for performance measurement in healthcare , 2018, Health care management science.

[44]  Hong-xing Fang,et al.  Environmental Efficiency Analysis of Listed Cement Enterprises in China , 2016 .

[45]  António Almeida,et al.  A Multi-Perspective Performance Approach for Complex Manufacturing Environments , 2016 .

[46]  Giovanni Zurlini,et al.  A non-parametric bootstrap-data envelopment analysis approach for environmental policy planning and management of agricultural efficiency in EU countries , 2017 .

[47]  Hsu-Hao Yang,et al.  Using DEA window analysis to measure efficiencies of Taiwan's integrated telecommunication firms , 2009 .

[48]  Chia-Nan Wang,et al.  Supporting Better Decision-Making: A Combined Grey Model and Data Envelopment Analysis for Efficiency Evaluation in E-Commerce Marketplaces , 2020, Sustainability.

[49]  Joe Zhu,et al.  Data envelopment analysis: Prior to choosing a model , 2014 .