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Kernel principal component analysis and support vector machines for stock price prediction
31
Citations
18
References
2005
Year
Unknown Venue
EngineeringSupport Vector MachineAsset PricingData SciencePattern RecognitionFinancial Time Series AnalysisSvr TechniqueSupport Vector MachinesPrincipal Component AnalysisStatisticsNonlinear Time SeriesStock Price PredictionPredictive AnalyticsQuantitative FinanceForecasting ModelForecastingFinanceIntelligent ForecastingReproducing Kernel MethodBusinessStock Market PredictionFinancial ForecastKernel Method
Financial time series are complex, non-stationary and deterministically chaotic. Technical indicators are used with principal component analysis (PCA) in order to identify the most influential inputs in the context of the forecasting model. Neural networks (NN) and support vector regression (SVR) are used with different inputs. Our assumption is that the future value of a stock price depends on the financial indicators although there is no parametric model to explain this relationship. This relationship comes from technical analysis. Comparison shows that SVR and MLP networks require different inputs. The MLP networks outperform the SVR technique.
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