Asian Journal of Information Technology
Year:
2020
Volume:
19
Issue:
4
Page No.
82 - 87
Effort Estimation using Hybridized Machine Learning Techniques for Evaluating Students
Academic Performance
Authors :
Mukesh Kumar
and
A.J. Singh
References
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Malhotra, R. and A. Jain, 2011. Software effort prediction using statistical and machine learning methods. Int. J. Adv. Comput. Sci. Appl., 2: 145-152.
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CrossRef | Direct Link | Seref, B. and N. Barisci, 2014. Software effort estimation using multilayer perceptron and adaptive neuro fuzzy inference system. Int. J. Innovation Manage. Technol., 5: 374-377.
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