ε-Descending Support Vector Machines for Financial Time Series Forecasting

作者:Francis E. H. Tay, L. J. Cao

摘要

This paper proposes a modified version of support vector machines (SVMs), called ε-descending support vector machines (ε-DSVMs), to model non-stationary financial time series. The ε-DSVMs are obtained by incorporating the problem domain knowledge – non-stationarity of financial time series into SVMs. Unlike the standard SVMs which use a constant tube in all the training data points, the ε-DSVMs use an adaptive tube to deal with the structure changes in the data. The experiment shows that the ε-DSVMs generalize better than the standard SVMs in forecasting non-stationary financial time series. Another advantage of this modification is that the ε-DSVMs converge to fewer support vectors, resulting in a sparser representation of the solution.

论文关键词:non-stationary financial time series, support vector machines, tube size, structural risk minimization principle

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论文官网地址:https://doi.org/10.1023/A:1015249103876