Please use this identifier to cite or link to this item: http://hdl.handle.net/10397/89138
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Title: An innovative use of historical data for neural network based stock prediction
Authors: Fu, TC 
Cheung, TL 
Chung, FL 
Ng, CM 
Issue Date: Oct-2006
Source: In Proceedings of the 9th Joint International Conference on Information Sciences (JCIS-06), p. 685-688
Abstract: Using artificial neural network Is a common approach for the stock time series prediction problem. Unlike variety of researches that focus on selecting different indicators, network training, network architecture, etc., we are focusing on the selection of appropriate time points from the time sequence to serve as the input of the neural network prediction system for dimensionality reduction. We propose to select the time points based on data point importance using perceptually important point identification process. The empirical result shows that the proposed method generally outperformed the traditional method using uniform time delay.
Publisher: Atlantis Press BV
ISBN: 978-90-78677-01-7
DOI: 10.2991/jcis.2006.153
Description: 9th Joint Conference on Information Sciences, JCIS 2006, 8-11 October 2006, Taiwan, ROC
Rights: This is an open access article distributed under the CC BY-NC license (https://creativecommons.org/licenses/by-nc/4.0/).
The following publication Fu, T. -., Cheung, T. -., Chung, F. -., & Ng, C. -. (2006). An innovative use of historical data for neural network based stock prediction. Paper presented at the Advances in intelligent systems research, 2006, 685-688 is available at https://dx.doi.org/10.2991/jcis.2006.153
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