Annual Conference of KIPS (한국정보처리학회:학술대회논문집)
- 2001.10a
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- Pages.535-538
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- 2001
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- 2005-0011(pISSN)
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- 2671-7298(eISSN)
The Effect of Deterministic and Stochastic VTG Schemes on the Application of Backpropagation of Multivariate Time Series Prediction
시계열예측에 대한 역전파 적용에 대한 결정적, 추계적 가상항 기법의 효과
Abstract
Since 1990s, many literatures have shown that connectionist models, such as back propagation, recurrent network, and RBF (Radial Basis Function) outperform the traditional models, MA (Moving Average), AR (Auto Regressive), and ARIMA (Auto Regressive Integrated Moving Average) in time series prediction. Neural based approaches to time series prediction require the enough length of historical measurements to generate the enough number of training patterns. The more training patterns, the better the generalization of MLP is. The researches about the schemes of generating artificial training patterns and adding to the original ones have been progressed and gave me the motivation of developing VTG schemes in 1996. Virtual term is an estimated measurement, X(t+0.5) between X(t) and X(t+1), while the given measurements in the series are called actual terms. VTG (Virtual Tern Generation) is the process of estimating of X(t+0.5), and VTG schemes are the techniques for the estimation of virtual terms. In this paper, the alternative VTG schemes to the VTG schemes proposed in 1996 will be proposed and applied to multivariate time series prediction. The VTG schemes proposed in 1996 are called deterministic VTG schemes, while the alternative ones are called stochastic VTG schemes in this paper.
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