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Augmented Out-of-Sample Comparison Method for Time...
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Augmented Out-of-Sample Comparison Method for Time Series Forecasting Techniques

Abstract

Abstract Time series data consists of high dimensional sets of observations with strong spatio-temporal relations. Accordingly, conventional methods for comparing different regression methods, such as random train-test splits, do not sufficiently evaluate time series forecasting tasks. In this work, we introduce a robust technique for out-of-sample forecasting that takes the spatio-temporal nature of time series into account. We compare well-known auto-regressive integrated moving average (ARIMA) models with recurrent neural network (RNN) based models using Turkish electricity data. We observe that RNN-based models outperform ARIMA models. Moreover, as the length of forecast interval increases, the performance gap widens between these two approaches.

Authors

Ilic I; Gorgulu B; Cevik M

Book title

Advances in Artificial Intelligence

Series

Lecture Notes in Computer Science

Volume

12109

Pagination

pp. 302-308

Publisher

Springer Nature

Publication Date

January 1, 2020

DOI

10.1007/978-3-030-47358-7_30

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