利用反向传播神经网络预测泰国证券交易所指数

P. Sutheebanjard, W. Premchaiswadi
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引用次数: 47

摘要

本文研究了泰国证券交易所指数走势的预测问题。目前,泰国有两个股票市场;泰国证券交易所(SET)和另类投资市场(MAI)。本文主要研究泰国证券交易所指数(SET指数)的走势。采用反向传播神经网络(BPNN)技术对SET指数进行预测。利用2004年7月2日至2004年12月30日124个交易日的数据进行实验。数据分为两组:BPNN训练53天,测试71天。实验结果表明,BPNN能够成功预测SET指数,误差小于2%。与自适应进化策略相比,BPNN的预测误差较小,但与(1+1)进化策略相比,预测误差较大。
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Stock Exchange of Thailand Index Prediction Using Back Propagation Neural Networks
In this paper, we investigate predicting the Stock Exchange of Thailand Index movement. Currently, there are two stock markets in Thailand; the Stock Exchange of Thailand (SET) and the Market for Alternative Investment (MAI). This paper focuses on the movement of the Stock Exchange of Thailand Index (SET Index). The back propagation neural network (BPNN) technology was employed in forecasting the SET index. An experiment was conducted by using data of 124 trading days from 2 July 2004 to 30 December 2004. The data were divided into two groups: 53 days for BPNN training and 71 days for testing. The experimental results show that the BPNN successfully predicts the SET Index with less than 2% error. The BPNN also achieves a lower prediction error when compared with the Adaptive Evolution Strategy, but a higher prediction error when compared with the (1+1) Evolution Strategy.
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