"Predicting ERP User Satisfaction―an Adaptive Neuro Fuzzy Inference System (ANFIS) Approach"
written by Chengaleth Venugopal, Siva Prasanna Devi, Kavuri Suryaprakasa Rao,
published by Intelligent Information Management, Vol.2 No.7, 2010
has been cited by the following article(s):
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[10] 信息系统用户满意度研究文献综述——以ERP 系统为例
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[11] Measuring e-learning systems success
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[15] Assessing Morningness of a Group of People by Using Fuzzy Expert System and Adaptive Neuro Fuzzy Inference Model
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[16] RESEARCH METHOD
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[17] DATA-DRIVEN MODELING FOR WATER QUALITY PARAMETERS PREDICTION OF THE DRAINAGE SYSTEM ASSOCIATED WITH LAKE MANZALA, EGYPT
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