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Am. J. Biomed. Sci. 2014, 6(3), 166-174; doi: 10.5099/aj140300166 |
Modeling
Depression Data: Feed Forward Neural Network vs. Radial Basis Function Neural
Network
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Subhrangsu Mukherjee1, Kumar Ashish1, Nirmal Baran Hui1, Subhagata
Chattopadhyay2 |
1 Mechanical Engineering, NIT Durgapur, West Bengal
-713209, India |
2 Specialty Business Unit, Nationwide, The Family of Doctors, Bangalore,
India |
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Corresponding author |
Nirmal
Baran Hui |
Associate Professor |
Mechanical Engineering |
NIT Durgapur |
India |
Email: nirmalhui@gmail.com |
Abstract Depression is a serious affliction that affects a large fraction of the global populace. Due to the widely varying symptoms the diagnosis poses a unique problem based on uncertainty. This paper proposes an approach to tackle the aspect of uncertainty using Soft Computing techniques, which are trained using real life medical data. We have developed two forms of intelligent Neural Network models to help in obtaining a reasonably accurate diagnosis. Trials with test data have yielded nominal Mean Squared Error. Hence this could prove to be a useful tool in automated diagnosis of depression. Keywords: Health Informatics, Depression Data, Radial Basis Function Neural Network, Back Propagation Neural Network. Download the full article (PDF)
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