Article ID Journal Published Year Pages File Type
10330413 Future Generation Computer Systems 2005 12 Pages PDF
Abstract
Nonlinear time-series prediction offers potential performance increases compared to linear models. Nevertheless, the enhanced complexity and computation time often prohibits an efficient use of nonlinear tools. In this paper, we present a simple nonlinear procedure for time-series forecasting, based on the use of vector quantization techniques; the values to predict are considered as missing data, and the vector quantization methods are shown to be compatible with such missing data. This method offers an alternative to more complex prediction tools, while maintaining reasonable complexity and computation time.
Related Topics
Physical Sciences and Engineering Computer Science Computational Theory and Mathematics
Authors
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