ICA-DEODA: An independent feature extraction model for stock index forecasting

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Author listWijitcharoen A., Watanapa B., Padungweang P., Anantasabkit W.

PublisherHindawi

Publication year2017

ISBN9781509044207

ISSN0146-9428

eISSN1745-4557

URLhttps://www.scopus.com/inward/record.uri?eid=2-s2.0-85016189922&doi=10.1109%2fICSEC.2016.7859924&partnerID=40&md5=5b53244ae7a9be81a66f18c513c5b658

LanguagesEnglish-Great Britain (EN-GB)


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Abstract

In this paper, an integration of the independent component analysis (ICA) and an unsupervised feature selection scheme is proposed as a data engineering approach, called ICADEODA. The proposed feature extraction model enables beyond second order analysis which can powerfully underlie knowledge discovery methods. When applying the model for stock forecasting, firstly, independent components (ICs) are extracted from a set of influential factors of Security Exchange of Thailand (SET) using ICA. DEODA is then applied to select a number of highly informative independent components for being inputs of the forecasting model. Experimentally, the support vector regression (SVR) was taken for predicting movement of the Stock Exchange of Thailand (SET) using quarterly data. The results demonstrated that the proposed model outperforms the traditional PCA-SVR, SVR and also PCA-DEODA-SVR model. ฉ 2016 IEEE.


Keywords

Set indexStock movement forecastingSupport vector regressio


Last updated on 2023-04-10 at 07:37