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ABSTRACT
Title |
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An Analysis of the Performance of Artificial Neural Network Technique for Stock Market Forecasting |
Authors |
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Kunwar Singh Vaisla, Dr. Ashutosh Kumar Bhatt |
Keywords |
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Foreign Investors Inflow, Mean Square
Error, Sum of Square Error, Mean Absolute Error, Root
Mean Squared Error, Wholesale Price Index, Money Supply
Broad Money, Money Supply Narrow Money, Exchange
Rate, Industrial Production. |
Issue Date |
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September 2010 |
Abstract |
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In this paper, we showed a method to
forecast the daily stock price using neural networks and
the result of the Neural Network forecast is compared with
the Statistical forecasting result. Stock price prediction is
one of the emerging field in neural network forecasting
area. This paper also presents the Neural Networks ability
to forecast the daily Stock Market Prices. Stock market
prediction is very difficult since it depends on several
known and unknown factors while the Artificial Neural
Network is a popular technique for the stock market
Forecasting. The Neural Network is based on the concept
of ‘Learn by Example’. In this paper, Neural Networks
and Statistical techniques are employed to model and
forecast the daily stock market prices and then the results
of these two models are compared. The forecasting ability
of these two models is accessed using MAPE, MSE and
RMSE. The results show that Neural Networks, when
trained with sufficient data, proper inputs and with proper
architecture, can predict the stock market prices very well.
Statistical technique though well built but their forecasting
ability is reduced as the series become complex. Therefore,
Neural Networks can be used as an better alternative
technique for forecasting the daily stock market prices.
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Page(s) |
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2104-2109 |
ISSN |
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0975–3397 |
Source |
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Vol. 2, Issue.6 |
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