Adaptive Rival Penalized Competitive Learning and Combined Linear Predictor Model for Financial Forecast and Investment

نویسندگان

  • Yiu-ming Cheung
  • Wai-Man Leung
  • Lei Xu
چکیده

We propose a prediction model called Rival Penalized Competitive Learning (RPCL) and Combined Linear Predictor method (CLP), which involves a set of local linear predictors such that a prediction is made by the combination of some activated predictors through a gating network (Xu et al., 1994). Furthermore, we present its improved variant named Adaptive RPCL-CLP that includes an adaptive learning mechanism as well as a data pre-and-post processing scheme. We compare them with some existing models by demonstrating their performance on two real-world financial time series--a China stock price and an exchange-rate series of US Dollar (USD) versus Deutschmark (DEM). Experiments have shown that Adaptive RPCL-CLP not only outperforms the other approaches with the smallest prediction error and training costs, but also brings in considerable high profits in the trading simulation of foreign exchange market.

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عنوان ژورنال:
  • International journal of neural systems

دوره 8 5-6  شماره 

صفحات  -

تاریخ انتشار 1997