‘An Artificial Neural Networks Primer with Financial Applications Examples in Financial Distress Predictions and Foreign Exchange Hybrid Trading System ’ by Dr
نویسنده
چکیده
Bachelor of Science in Electrical Engineering Computers (1986), University of Southern California, Los Angeles, California, USA Master of Science in Industrial and Systems Engineering (1989), University of Southern California Los Angeles, California, USA Masters of Business Administration (1989) University of Southern California Los Angeles, California, USA Graduate Diploma in Applied Finance and Investment (1996) Securities Institute of Australia Diploma in Technical Analysis (1996) Australian Technical Analysts Association Doctor of Philosophy Bond University (1997)
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