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An e–E-insensitive support vector regression machine

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  • Amir Safari

Abstract

According to the Statistical Learning Theory, the support vectors represent the most informative data points and compress the information contained in training set. However, a basic problem in the standard support vector machine is that when the data is noisy, there exists no guaranteed scheme in support vector machines’ formulation to dissuade the machine from learning noise. Therefore, the noise which is typically presents in financial time series data may be taken into account as support vectors. In turn, noisy support vectors are modeled into the estimated function. As such, the inclusion of noise in support vectors may lead to an over-fitting and in turn to a poor generalization. The standard support vector regression (SVR) is reformulated in this article in such a way that the large errors which correspond to noise are restricted by a new parameter $$E$$ E . The simulation and real world experiments indicate that the novel SVR machine meaningfully performs better than the standard SVR in terms of accuracy and precision especially where the data is noisy, but in expense of a longer computation time. Copyright Springer-Verlag Berlin Heidelberg 2014

Suggested Citation

  • Amir Safari, 2014. "An e–E-insensitive support vector regression machine," Computational Statistics, Springer, vol. 29(6), pages 1447-1468, December.
  • Handle: RePEc:spr:compst:v:29:y:2014:i:6:p:1447-1468
    DOI: 10.1007/s00180-014-0500-7
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    1. repec:cup:cbooks:9780521547871 is not listed on IDEAS
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    3. Tay, Francis E. H. & Cao, Lijuan, 2001. "Application of support vector machines in financial time series forecasting," Omega, Elsevier, vol. 29(4), pages 309-317, August.
    4. Sun, Wei & Rachev, Svetlozar & Fabozzi, Frank J., 2007. "Fractals or I.I.D.: Evidence of long-range dependence and heavy tailedness from modeling German equity market returns," Journal of Economics and Business, Elsevier, vol. 59(6), pages 575-595.
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    1. Xian Shan & Zheshuo Zhang & Xiaoying Li & Yu Xie & Jinyu You, 2023. "Robust Online Support Vector Regression with Truncated ε -Insensitive Pinball Loss," Mathematics, MDPI, vol. 11(3), pages 1-22, January.

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