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Real‐time road traffic forecasting using regime‐switching space‐time models and adaptive LASSO
Authors:Yiannis Kamarianakis  Wei Shen  Laura Wynter
Affiliation:1. IBM Research, Yorktown Heights, , NY, 10598 USA;2. Walmart eCommerce, , San Bruno, CA, 94066 USA
Abstract:
Smart transportation technologies require real‐time traffic prediction to be both fast and scalable to full urban networks. We discuss a method that is able to meet this challenge while accounting for nonlinear traffic dynamics and space‐time dependencies of traffic variables. Nonlinearity is taken into account by a union of non‐overlapping linear regimes characterized by a sequence of temporal thresholds. In each regime, for each measurement location, a penalized estimation scheme, namely the adaptive absolute shrinkage and selection operator (LASSO), is implemented to perform model selection and coefficient estimation simultaneously. Both the robust to outliers least absolute deviation estimates and conventional LASSO estimates are considered. The methodology is illustrated on 5‐minute average speed data from three highway networks. Copyright © 2012 John Wiley & Sons, Ltd.
Keywords:traffic forecasting  real‐time predictions  threshold regressions  adaptive LASSO
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