Neural network multitask learning for traffic flow forecasting | IEEE Conference Publication | IEEE Xplore

Neural network multitask learning for traffic flow forecasting


Abstract:

Traditional neural network approaches for traffic flow forecasting are usually single task learning (STL) models, which do not take advantage of the information provided ...Show More

Abstract:

Traditional neural network approaches for traffic flow forecasting are usually single task learning (STL) models, which do not take advantage of the information provided by related tasks. In contrast to STL, multitask learning (MTL) has the potential to improve generalization by transferring information in training signals of extra tasks. In this paper, MTL based neural networks are used for traffic flow forecasting. For neural network MTL, a backpropagation (BP) network is constructed by incorporating traffic flows at several contiguous time instants into an output layer. Nodes in the output layer can be seen as outputs of different but closely related STL tasks. Comprehensive experiments on urban vehicular traffic flow data and comparisons with STL show that MTL in BP neural networks is a promising and effective approach for traffic flow forecasting.
Date of Conference: 01-08 June 2008
Date Added to IEEE Xplore: 26 September 2008
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Conference Location: Hong Kong

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