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ICAPR
2001
Springer

Pattern Matching and Neural Networks Based Hybrid Forecasting System

14 years 5 months ago
Pattern Matching and Neural Networks Based Hybrid Forecasting System
In this paper we propose a Neural Net-PMRS hybrid for forecasting time-series data. The neural network model uses the traditional MLP architecture and backpropagation method of training. Rather than using the last n lags for prediction, the input to the network is determined by the output of the PMRS (Pattern Modelling and Recognition System). PMRS matches current patterns in the time-series with historic data and generates input for the neural network that consists of both current and historic information. The results of the hybrid model are compared with those of neural networks and PMRS on their own. In general, there is no outright winner on all performance measures, however, the hybrid model is a better choice for certain types of data, or on certain error measures.
Sameer Singh, Jonathan E. Fieldsend
Added 29 Jul 2010
Updated 29 Jul 2010
Type Conference
Year 2001
Where ICAPR
Authors Sameer Singh, Jonathan E. Fieldsend
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