Abstract:
Financial market prediction exhibits immense interest among researchers nowadays due
to rapid increase in the investments of financial markets in last few decades. The profitability
of investing in financial markets is directly proportional to its predictability.
Stock market is one of the leading market in this regard due to importance and interest
of many stakeholders. Literature reveals that the directional prediction is more effective
and leads to higher profits than the value prediction.
With the development of the machine learning techniques, the financial industry thrived
with the enhancement of the forecasting ability. Probabilistic Neural Network (PNN) is
a promising machine leaning technique which can be used to forecast financial markets
with a higher accuracy. However, standard PNN calculates the probabilities based on
Gaussian distribution. Therefore, there is a limitation to apply this model to financial
data which deviates from the normal distribution. Hence, the main objective of this
study is to improve the standard PNN model. This is done by identifying the exact
multivariate distribution as the joint distribution of input variables and addressing the
multi class imbalanced problem persist in the directional prediction of the stock market
(i.e. up, down and no change). This model building process is illustrated and tested with
daily close prices of three stock market indices: AORD, GSPC and ASPI and related
financial market indices from 21/09/2012 - 20/09/2017.
Results proved that Scaled t distribution with location, scale and shape parameters can
be used as more suitable distribution for financial return series. Global optimization
methods are essential to estimate better parameters of multivariate distributions. The
global optimization technique used in the study is capable of estimating parameters of n
dimensional multivariate distributions. The proposed PNN model which consider multivariate
Scaled t distribution as the joint distribution of input variables exhibits better
performance than the standard PNN model. The ensemble technique: multi class under-
^sampling based bagging (MCUB) was introduced to handle class imbalanced problem
in PNNs is capable enough to resolve multi class imbalanced problem persist in both
standard and proposed PNNs.
Final dynamic model proposed in the study with proposed PNN and proposed MCUB
technique is competent in forecasting direction of a given stock market index with higher
accuracy which helps stakeholders of stock markets for accurate decision making.