SEM–ANN based research of factors’ impact on extended use of ERP systems
暂无分享,去创建一个
Simona Sternad Zabukovsek | Samo Bobek | Polona Tominc | Zoran Kalinic | Simona Sternad Zabukovšek | Zoran Kalinić | S. Bobek | P. Tominc
[1] Zoran Kalinic,et al. Predicting the determinants of mobile payment acceptance: A hybrid SEM-neural network approach , 2017 .
[2] Yujong Hwang,et al. Investigating enterprise systems adoption: uncertainty avoidance, intrinsic motivation, and the technology acceptance model , 2005, Eur. J. Inf. Syst..
[3] David L. Olson,et al. The effect of organizational support on ERP implementation , 2010, Ind. Manag. Data Syst..
[4] Stephan Trenn,et al. Multilayer Perceptrons: Approximation Order and Necessary Number of Hidden Units , 2008, IEEE Transactions on Neural Networks.
[5] Zoran Kalinic,et al. International Journal of Information Management , 2016 .
[6] Katsunari Shibata,et al. Effect of number of hidden neurons on learning in large-scale layered neural networks , 2009, 2009 ICCAS-SICE.
[7] A. F. Salam,et al. An extension of the technology acceptance model in an ERP implementation environment , 2004, Inf. Manag..
[8] Samo Bobek,et al. TAM-based external factors related to ERP solutions acceptance in organizations , 2022, International Journal of Information Systems and Project Management.
[9] Michael Negnevitsky,et al. Artificial Intelligence: A Guide to Intelligent Systems , 2001 .
[10] B. Tabachnick,et al. Using Multivariate Statistics , 1983 .
[11] I. Ajzen,et al. Belief, Attitude, Intention, and Behavior: An Introduction to Theory and Research , 1977 .
[12] S. Roy,et al. Predicting Internet banking adoption in India: a perceived risk perspective , 2017 .
[13] Keng-Boon Ooi,et al. The effects of convenience and speed in m-payment , 2015, Ind. Manag. Data Syst..
[14] A. C. Charles,et al. Ready, set, go: examining student readiness to use ERP technology , 2006 .
[15] Garry Wei-Han Tan,et al. Understanding and predicting the motivators of mobile music acceptance - A multi-stage MRA-artificial neural network approach , 2014, Telematics Informatics.
[16] Himanshu Sharma,et al. A multi-analytical approach to predict the Facebook usage in higher education , 2016, Comput. Hum. Behav..
[17] Soner Yıldırım,et al. Understanding the perception towards using mHealth applications in practice , 2018 .
[18] Viswanath Venkatesh,et al. Technology Acceptance Model 3 and a Research Agenda on Interventions , 2008, Decis. Sci..
[19] K. Gnana Sheela,et al. Review on Methods to Fix Number of Hidden Neurons in Neural Networks , 2013 .
[20] C. Fornell,et al. Evaluating structural equation models with unobservable variables and measurement error. , 1981 .
[21] Geoffrey S. Hubona,et al. Using PLS path modeling in new technology research: updated guidelines , 2016, Ind. Manag. Data Syst..
[22] Ya-Yueh Shih,et al. The Actual Usage of ERP Systems: An Extended Technology Acceptance Perspective , 2009, J. Res. Pract. Inf. Technol..
[23] Alain Yee-Loong Chong,et al. Predicting Drivers of Mobile Entertainment Adoption: A Two-Stage SEM-Artificial-Neural-Network Analysis , 2016, J. Comput. Inf. Syst..
[24] Garry Wei-Han Tan,et al. Predicting the determinants of the NFC-enabled mobile credit card acceptance: A neural networks approach , 2013, Expert Syst. Appl..
[25] Elisabeth J. Umble,et al. Enterprise resource planning: Implementation procedures and critical success factors , 2003, Eur. J. Oper. Res..
[26] Fethi Calisir,et al. Predicting the behavioral intention to use enterprise resource planning systems , 2009 .
[27] Yuan Sun,et al. Extending technology usage to work settings: The role of perceived work compatibility in ERP implementation , 2009, Inf. Manag..
[28] Keng-Boon Ooi,et al. An SEM-artificial-neural-network analysis of the relationships between SERVPERF, customer satisfaction and loyalty among low-cost and full-service airline , 2015, Expert Syst. Appl..
[29] Simona Sternad Zabukovšek,et al. ERP Business Solutions Acceptance in Companies , 2015 .
[30] M. Krishna Moorthy,et al. Crafting a smartphone repurchase decision making process: Do brand attachment and gender matter? , 2017, Telematics Informatics.
[31] Jose L. Salmeron,et al. TAM-based success modeling in ERP , 2008, Interact. Comput..
[32] Mehrbakhsh Nilashi,et al. Forecasting social CRM adoption in SMEs: A combined SEM-neural network method , 2017, Comput. Hum. Behav..
[33] Fred D. Davis. Perceived Usefulness, Perceived Ease of Use, and User Acceptance of Information Technology , 1989, MIS Q..
[34] Ludo Waltman,et al. Text mining and visualization using VOSviewer , 2011, ArXiv.
[35] Fred D. Davis,et al. A Theoretical Extension of the Technology Acceptance Model: Four Longitudinal Field Studies , 2000, Management Science.
[36] Timothy Teo,et al. Toward an Understanding of Preservice English as a Foreign Language Teachers’ Acceptance of Computer-Assisted Language Learning 2.0 in the People’s Republic of China , 2018 .
[37] Sheng-Hsun Hsu,et al. Robustness testing of PLS, LISREL, EQS and ANN-based SEM for measuring customer satisfaction , 2006 .
[38] Garry Wei-Han Tan,et al. Mobile social tourism shopping: A dual-stage analysis of a multi-mediation model , 2018, Tourism Management.
[39] Peter Hackl,et al. On structural equation modelling for customer satisfaction measurement , 2000 .
[40] Joseph Bradley,et al. ERP Training and User Satisfaction: A Case Study , 2007, Int. J. Enterp. Inf. Syst..
[41] Wei Wang,et al. ScholarWorks @ Georgia State University , 2022 .
[42] Sujeet Kumar Sharma,et al. Integrating cognitive antecedents into TAM to explain mobile banking behavioral intention: A SEM-neural network modeling , 2017, Information Systems Frontiers.
[43] Fred D. Davis,et al. User Acceptance of Computer Technology: A Comparison of Two Theoretical Models , 1989 .
[44] Alain Yee-Loong Chong,et al. A two-staged SEM-neural network approach for understanding and predicting the determinants of m-commerce adoption , 2013, Expert Syst. Appl..
[45] M. Sarstedt,et al. A new criterion for assessing discriminant validity in variance-based structural equation modeling , 2015 .
[46] Jacob Cohen. Statistical Power Analysis for the Behavioral Sciences , 1969, The SAGE Encyclopedia of Research Design.
[47] Jae-Nam Lee,et al. The role of readiness for change in ERP implementation: Theoretical bases and empirical validation , 2008, Inf. Manag..
[48] J. Aldás-Manzano,et al. Teachers’ intention to use educational video games: The moderating role of gender and age , 2019 .
[49] Chang Liu,et al. Technology acceptance model for wireless Internet , 2003, Internet Res..
[50] Wynne W. Chin,et al. A Partial Least Squares Latent Variable Modeling Approach for Measuring Interaction Effects: Results from a Monte Carlo Simulation Study and an Electronic - Mail Emotion/Adoption Study , 2003, Inf. Syst. Res..
[51] I. Ajzen. The theory of planned behavior , 1991 .
[52] Sujeet Kumar Sharma,et al. A multi-analytical approach to understand and predict the mobile commerce adoption , 2016, J. Enterp. Inf. Manag..
[53] Rudolf R. Sinkovics,et al. The Use of Partial Least Squares Path Modeling in International Marketing , 2009 .
[54] Garry Wei-Han Tan,et al. Mobile technology acceptance model: An investigation using mobile users to explore smartphone credit card , 2016, Expert Syst. Appl..
[55] Alain Yee-Loong Chong,et al. Predicting m-commerce adoption determinants: A neural network approach , 2013, Expert Syst. Appl..
[56] Faith-Michael E. Uzoka,et al. Influence of Product and Organizational Constructs on ERP Acquisition Using an Extended Technology Acceptance Model , 2008, Int. J. Enterp. Inf. Syst..
[57] Alain Yee-Loong Chong,et al. Predicting open IOS adoption in SMEs: An integrated SEM-neural network approach , 2014, Expert Syst. Appl..
[58] L. F. Jimoh,et al. Bibliometric Analysis of International Journal of Research in Education, 2004 – 2012 , 2014 .
[59] David H. Olsen,et al. Determinants of professionally autonomous end user acceptance in an enterprise resource planning system environment , 2009, Int. J. Inf. Manag..
[60] Ronny Scherer,et al. The importance of attitudes toward technology for pre-service teachers' technological, pedagogical, and content knowledge: Comparing structural equation modeling approaches , 2018, Comput. Hum. Behav..
[61] Rakesh D. Raut,et al. Understanding and predicting the determinants of cloud computing adoption: A two staged hybrid SEM - Neural networks approach , 2017, Comput. Hum. Behav..
[62] Garry Wei-Han Tan,et al. Predicting the drivers of behavioral intention to use mobile learning: A hybrid SEM-Neural Networks approach , 2014, Comput. Hum. Behav..
[63] Thomas F. Wallace,et al. ERP: Making It Happen: The Implementers' Guide to Success with Enterprise Resource Planning , 2001 .
[64] Samo Bobek,et al. The influence of external factors on routine ERP usage , 2011, Ind. Manag. Data Syst..
[65] Fiona Fui-Hoon Nah,et al. An Empirical Investigation on End-Users' Acceptance of Enterprise Systems , 2004, Inf. Resour. Manag. J..
[66] Ya-Zheng Li,et al. Factors impacting donors’ intention to donate to charitable crowd-funding projects in China: a UTAUT-based model , 2018 .
[67] Alain Yee-Loong Chong,et al. A SEM-neural network approach for understanding determinants of interorganizational system standard adoption and performances , 2012, Decis. Support Syst..
[68] Wynne W. Chin. Issues and Opinion on Structural Equation Modeling by , 2009 .
[69] Qingxiong Ma,et al. Perceived system performance: a test of an extended technology acceptance model , 2006, DATB.
[70] Alain Yee-Loong Chong,et al. Development of a Unified Open E-Logistics Standards diffusion Model for manufacturing supply Chain integrations , 2016, PACIS.