Financial time series forecasting using directed-weighted chunking SVMs

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Abstract

Support vector machines (SVMs) are a promising alternative to traditional regression estimation approaches. But, when dealing with massive-scale data set, there exist many problems, such as the long training time and excessive demand of memory space. So, the SVMs algorithm is not suitable to deal with financial time series data. In order to solve these problems, directed-weighted chunking SVMs algorithm is proposed. In this algorithm, the whole training data set is split into several chunks, and then the support vectors are obtained on each subset. Furthermore, the weighted support vector regressions are calculated to obtain the forecast model on the new working data set. Our directed-weighted chunking algorithm provides a new method of support vectors decomposing and combining according to the importance of chunks, which can improve the operation speed without reducing prediction accuracy. Finally, IBM stock daily close prices data are used to verify the validity of the proposed algorithm. © 2014 Yongming Cai et al.

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APA

Cai, Y., Song, L., Wang, T., & Chang, Q. (2014). Financial time series forecasting using directed-weighted chunking SVMs. Mathematical Problems in Engineering, 2014. https://doi.org/10.1155/2014/170424

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