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22                               Ramazan Ünlü

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                                                  AUTHOR BIOGRAPHY

                          Dr.  Ramazan  Unlu  has  a  Ph.D.  in  Industrial  Engineering  from  the  University  of
                       Central  Florida  with  particular  interest  in  data  mining  including  classification  and
                       clustering  methods.  His  dissertation  was  titled  “Weighting  Policies  for  Robust
                       Unsupervised  Ensemble  Learning”.  Besides  doing  his  research,  he  has  served  as
                       Graduate  Teaching  Assistant  in  several  courses  during  his  Ph.D.  Prior  to  enrolling  at
                       UCF, he holds a master degree in Industrial engineering from University of Pittsburgh
                       and B.A. in Industrial Engineering from Istanbul University. For his master and doctoral
                       education, he won the fellowship that was given 26 Industrial Engineers by the Republic
                       of Turkey Ministry of National Education in 2010.
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