Evaluation of Enterprise Learning Performance in the Process of Cooperation Innovation Using Heronian Mean Operator

In order to clarify the achievement and efficiency of enterprise learning in the process of cooperative innovation, a comprehensive criteria framework for the evaluation of enterprise learning performance is constructed taking the learning process and learning results as the construction idea based on organizational learning theory. And this paper proposes a novel dynamic evaluation method considering the interaction between attributes of learning performance. In this study, the criterion framework for the evaluation of enterprise learning performance in the process of cooperative innovation includes learning process performance and learning outcomes performance. The original matrices are given by managers and experts using fuzzy set theory, and a dynamic time sequence weight vector is calculated based on information entropy and time degree. The weight of learning performance attributes under different time series is calculated based on entropy measure method. The interactive information of learning performance attributes is integrated through the weight of learning performance attributes and the three-parameter weighted Heronian mean operator considering the interaction between attributes. And then, the dynamic and comprehensive evaluation result of learning performance in the process of cooperative innovation could be computed by integrating the learning performance information under different time series with time sequence weight vector. Finally, a real case is studied to verify the scientificity and validity of the criteria framework for the evaluation of enterprise learning performance and the method proposed in this study. This study not only helps cooperative enterprises get feedback in time and adjust cooperative relationships and learning styles but also enriches the theory of interorganizational management and provides a theoretical basis for the process of enterprise cooperative innovation.

[1]  M. Sarkar,et al.  Role of search for domain knowledge and architectural knowledge in alliance partner selection , 2018 .

[2]  M. Hemmert The relevance of inter-personal ties and inter-organizational tie strength for outcomes of research collaborations in South Korea , 2019 .

[3]  J. Hartley,et al.  Innovation and inter-organizational learning in the context of public service reform , 2018 .

[4]  Fang Wei,et al.  The Cooperative Stability Evolutionary Game Analysis of the Military-Civilian Collaborative Innovation for China’s Satellite Industry , 2019, Mathematical Problems in Engineering.

[5]  Emmanuel Raufflet,et al.  Value Creation in Inter-Organizational Collaboration: An Empirical Study , 2018 .

[6]  J. Kratzer,et al.  Open innovation and company culture: Internal openness makes the difference , 2017 .

[7]  Ayse Eli-super-˙f Sengun Which Type of Trust for Inter-firm Learning? , 2010 .

[8]  Michael Jay Polonsky,et al.  Inter-firm learning and knowledge-sharing in multinational networks: An outsourced organization's perspective , 2014 .

[9]  D. Vrontis,et al.  The Internet of Things: Building a knowledge management system for open innovation and knowledge management capacity , 2017, Technological Forecasting and Social Change.

[10]  Jizhen Li,et al.  Reconciling the Dilemma of Knowledge Sharing: A Network Pluralism Framework of Firms’ R&D Alliance Network and Innovation Performance , 2019 .

[11]  J. Kwak,et al.  The role of distance in inter-firm learning for global R&D alliances , 2016 .

[12]  Sascha Albers,et al.  Network learning: episodes of interorganizational learning towards a collective performance goal , 2017 .

[13]  Shi Yin,et al.  A novel dynamic multi-attribute decision-making method based on the improved weights function and score function, and its application , 2018, J. Intell. Fuzzy Syst..

[14]  Lucila Maria de Souza Campos,et al.  Performance evaluation of green suppliers using entropy-TOPSIS-F , 2019, Journal of Cleaner Production.

[15]  Muhittin Sagnak,et al.  Fuzzy DEMATEL-based green supply chain management performance: Application in cement industry , 2018, Ind. Manag. Data Syst..

[16]  A. Sudolska,et al.  Inter- and Intra-Firm Learning Synergy through Integrating Absorptive Capacity and Employee Suggestion Processes: The Case Study of Frauenthal Automotive Toruń Company , 2017 .

[17]  Peide Liu,et al.  Group Decision Making Based on Power Heronian Aggregation Operators Under Linguistic Neutrosophic Environment , 2018, Int. J. Fuzzy Syst..

[18]  A. E. Sengün,et al.  The Conditional Impact of Competence Trust on Inter-Firm Learning in a Collectivist SME Context , 2011 .

[19]  J. Sarkis,et al.  A supply chain sustainability innovation framework and evaluation methodology , 2018, Int. J. Prod. Res..

[20]  Carl Malings,et al.  Development of a general calibration model and long-term performance evaluation of low-cost sensors for air pollutant gas monitoring , 2018, Atmospheric Measurement Techniques.

[21]  P. Nalivata,et al.  Innovation capacity-building and inclusive development in informal settings: a comparative analysis of two interactive learning spaces in South Africa and Malawi , 2018 .

[22]  Antonella Basso,et al.  How well is the museum performing? A joint use of DEA and BSC to measure the performance of museums , 2017, Omega.

[23]  Shyi-Ming Chen,et al.  Some intuitionistic fuzzy Dombi Bonferroni mean operators and their application to multi-attribute group decision making , 2018, J. Oper. Res. Soc..

[24]  Nguyen Thi Kim Son A foundation on semigroups of operators defined on the set of triangular fuzzy numbers and its application to fuzzy fractional evolution equations , 2018, Fuzzy Sets Syst..

[25]  Jin-Han Park,et al.  Extension of the VIKOR method to dynamic intuitionistic fuzzy multiple attribute decision making , 2010, Third International Workshop on Advanced Computational Intelligence.

[26]  Mousumi Modak,et al.  Performance evaluation of outsourcing decision using a BSC and Fuzzy AHP approach: A case of the Indian coal mining organization , 2017 .

[27]  D. Larcker,et al.  Innovations in Performance Measurement: Trends and Research Implications , 1998 .

[28]  Baizhou Li,et al.  Matching management of supply and demand of green building technologies based on a novel matching method with intuitionistic fuzzy sets , 2018, Journal of Cleaner Production.

[29]  Ryan Kellogg,et al.  Learning by Drilling: Inter-Firm Learning and Relationship Persistence in the Texas Oilpatch , 2007 .

[30]  Joe Zhu,et al.  DEA-based benchmarking for performance evaluation in pay-for-performance incentive plans , 2018, Omega.

[31]  Lu Jun,et al.  Approach to the Performance Evaluation of Bank EmployeesBased on the C-POWA Operator , 2016 .

[32]  Yongrok Choi,et al.  Environmental Performance Evaluation of the Korean Manufacturing Industry Based on Sequential DEA , 2019, Sustainability.

[33]  Peter J. Lane,et al.  Relative absorptive capacity and interorganizational learning , 1998 .

[34]  Olivier Serrat Learning in Strategic Alliances , 2017 .

[35]  Marjolein C. J. Caniëls,et al.  Supply chain integration: value creation through managing inter-organizational learning , 2018 .

[36]  Waheed Akbar Bhatti Relationship learning through inter-firm conduits in Finnish small and medium enterprises , 2019 .

[37]  Qian Huang,et al.  A Multilevel Analysis of the Relationship between Shared Leadership and Creativity in Inter‐organizational Teams , 2018 .

[38]  Yuan Liu,et al.  A New Model for Deriving the Priority Weights from Hesitant Triangular Fuzzy Preference Relations , 2019, Mathematical Problems in Engineering.

[39]  Zhenhua Luo,et al.  Research on Performance Evaluation System of Shale Gas PPP Project Based on Matter Element Analysis , 2018, Mathematical Problems in Engineering.

[40]  Lianbiao Cui,et al.  Environmental performance evaluation with big data: theories and methods , 2016, Annals of Operations Research.

[41]  A. Simba,et al.  Fostering micro-entrepreneurs’ structural and relational social capital through microfinance , 2019 .

[42]  Tan Yigitcanlar,et al.  Towards a sustainable industrial ecology: Implementation of a novel approach in the performance evaluation of Italian regions , 2018 .

[43]  Ming-yuan Chen,et al.  An interactive method for dynamic intuitionistic fuzzy multi-attribute group decision making , 2011, Expert Syst. Appl..

[44]  Torgeir Welo,et al.  A Holistic approach to corporate sustainability assessment: Incorporating sustainable development goals into sustainable manufacturing performance evaluation , 2019, Journal of Manufacturing Systems.

[45]  S. Yin,et al.  A stochastic differential game of low carbon technology sharing in collaborative innovation system of superior enterprises and inferior enterprises under uncertain environment , 2018 .