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IDA
2009
Springer

Improving Time Series Forecasting by Discovering Frequent Episodes in Sequences

13 years 11 months ago
Improving Time Series Forecasting by Discovering Frequent Episodes in Sequences
Abstract. This work aims to improve an existing time series forecasting algorithm –LBF– by the application of frequent episodes techniques as a complementary step to the model. When real-world time series are forecasted, there exist many samples whose values may be specially unexpected. By the combination of frequent episodes and the LBF algorithm, the new procedure does not make better predictions over these outliers but, on the contrary, it is able to predict the apparition of such atypical samples with a great accuracy. In short, this work shows how to detect the occurrence of anomalous samples in time series improving, thus, the general forecasting scheme. Moreover, this hybrid approach has been successfully tested on electricity-related time series.
Francisco Martínez-Álvarez, Alicia T
Added 26 May 2010
Updated 26 May 2010
Type Conference
Year 2009
Where IDA
Authors Francisco Martínez-Álvarez, Alicia Troncoso Lora, José C. Riquelme
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