Abstract
Among the various potential applications of neural networks, forecasting is considered to be a major application. Several researchers have reported their experiences with the use of neural networks in forecasting, and the evidence is inconclusive. This paper presents the results of a forecasting competition between a neural network model and a Box-Jenkins automatic forecasting expert system. Seventy-five series, a subset of data series which have been used for comparison of various forecasting techniques, were analysed using the Box-Jenkins approach and a neural network implementation. The results show that the simple neural net model tested on this set of time series could forecast about as well as the Box-Jenkins forecasting system.
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Sharda, R., Patil, R.B. Connectionist approach to time series prediction: an empirical test. J Intell Manuf 3, 317–323 (1992). https://doi.org/10.1007/BF01577272
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DOI: https://doi.org/10.1007/BF01577272