Year: 2019 | Month: June | Volume 6 | Issue 1

Forecasting Share Prices Using Soft Computing Techniques

For a long time there has been the trend of trading of shares. Brokerage firms and dealers buy/sell stocks for clients and companies. Their work is based on knowing how the share price of the company will react in the market. Market/ share price predicti
DOI:NA

Abstract:

For a long time, there has been the trend of trading of shares. Brokerage firms and dealers buy/sell stocks for clients and companies. Their work is based on knowing how the share price of the company will react in the market. Market/ share price predictions are useful as the investor/broker can attempt to predict the output in order to maximize his dividends or minimize his losses. Using data mining techniques, an attempt is made to estimate a prediction model to help forecast share prices. R and Python will be the tools used to sort, segregate and process the data, and techniques/algorithms such as Genetic Algorithm, ARIMA, Artificial Neural Networks, Linear Regression etc. will be used to forecast results of data. Along with the model data, external factors affecting share prices will also be taken into account. For each of the applied algorithms, their results will be compared and the difference in output with the real time values will be observed and recorded.



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AgroEcoomist-An International Journal In Association with AAEBM