4.4 Article

Ensemble of ARIMA: combining parametric and bootstrapping technique for traffic flow prediction

Journal

TRANSPORTMETRICA A-TRANSPORT SCIENCE
Volume 16, Issue 3, Pages 1552-1573

Publisher

TAYLOR & FRANCIS LTD
DOI: 10.1080/23249935.2020.1764662

Keywords

Traffic volume prediction; ARIMA; LSTM; ensemble

Funding

  1. Australian Research Council [LP150101267]
  2. Australian Research Council DECRA [DE170101346]

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There are numerous studies on traffic volume prediction, using either non-parametric or parametric methods. The main shortcoming of parametric methods is low prediction accuracy. Non-parametric methods show higher prediction accuracy, but they are criticised due to lack of support from theory. The innovation of this paper is to combine bootstrap with the conventional parametric ARIMA model with the aim of improving prediction accuracy while maintaining theory adherence. The outcome of this process is an ensemble of ARIMA models (E-ARIMA) where each model is developed using a random subsample of data. The validity of the proposed model is examined by comparing E-ARIMA with ARIMA and Long Short-Term Memory (LSTM) as representatives for parametric and non-parametric methods respectively. One year of traffic count data on four main arterial roads in Sydney, Australia is used for calibration and validation purposes. The results suggest that creating an ensemble of models improves prediction accuracy.

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