The stock index forecast based on dynamic recurrent neural network trained with GA
نویسندگان
چکیده
In order to forecast the stock market more accurately, according to the dynamic property for the stock market, propose the real time modeling forecast via dynamic recurrent neural network and use GA to study online, then it improves the network performance and better describes the dynamic characteristic of stock market. By forecasting Shanghai negotiable securities index, it shows better validity. Keyword: Dynamic property Neural network Stock index Genetic algorithm
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