Open Access
Regularized Learning Algorithm for Neural Network based Time Series Dynamic Predictors
Pan Wei
- 01 Jan 1999
1
TL;DR: A new Regularized Learning algorithm is proposed for Neural Network based time series Predictors (RLNNP) and it is proposed that after sufficient training, neural network based timeseries predictor with RLNNP algorithm will give a valid prediction for time series.
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Abstract: Time series prediction can be applied to a lot of fields such as financial analysis etc.Recently,there are growing interests in neural network based time series predictors.However,neural network based time series predictor often gives invalid predictions.In this paper,the probability of invalid prediction given by neural network based is analyzed firstly.And then a new Regularized Learning algorithm is proposed for Neural Network based time series Predictors (RLNNP).After sufficient training,neural network based time series predictor with RLNNP algorithm will give a valid prediction for time series.
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Citations
An Approach for Short-Term Prediction on Time Series from Parameter-Varying Systems
Xiao Fen,Gao Xie-ping +1 more
TL;DR: The novel prediction techniques for parameter-varying systems reconstruction, which are based on wavelet neural network (WNN) and multiwavelets Neural network (MWNN) are proposed, which absorb the advantages of high resolution of wavelet and learning of neural networks.
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