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Original Articles

Comparing the Bank Failure Prediction Performance of Neural Networks and Support Vector Machines: The Turkish Case

Usporedba Performansi Neuronskih Mreža Pri Predviðanju Propasti Banaka I Strojeva S Potpornim Vektorima: Slučaj Turske

Pages 81-98 | Received 28 Feb 2012, Accepted 26 Sep 2012, Published online: 09 Nov 2015

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