Citation:Chandrasekara,N.V.,Tilakaratne,C.D. and Mammadov,M.A. (2018).An Ensemble Technique For Multi Class Imbalanced Problem Using Probabilistic Neural Networks.Advances and Applications in Statistics, 2018, Volume 53, Number 6, 2018, Pages 647-658,ISSN: 0972-3617.http://dx.doi.org/10.17654/AS053060647
Date:2018
Abstract:
The class imbalanced problem is one of the major difficulties
encountered by many researchers when using classification tools.
Multi class problems are especially severe in this regard. The main
objective of this study is to propose a suitable technique to handle
multi class imbalanced problem. Probabilistic neural network (PNN) is
used as the classification tool and the directional prediction of
Australian, United States and Srilankan stock market indices is
considered as the application.
We propose an ensemble technique to handle multi class imbalanced
problem that is called multi class undersampling based bagging (MCUB) technique. This is a new initiative that has not been
considered in the literature to handle multi class imbalanced problem
by employing PNN.
The results obtained demonstrate that the proposed MCUB technique
is capable of handling multi class imbalanced problem. Therefore, the
PNN with the proposed ensemble technique can be used effectively in
data classification. As a further study, other classification tools can be
used to investigate the performance of the proposed MCUB technique
in solving class imbalanced problems.