Reveal the hidden layer via entity embedding in traffic prediction

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The neural network-based models have been widely used in traffic prediction. They have improved accuracy and efficiency in traffic flow, speed, passenger flow, and delay. Many variables are considered to predict traffic indicators and good techniques for choosing the most influenced variables to results have been developed. Since the neural network models treat independent variables as continuous variables, there are few studies on the use of categorical variables. In addition, the neural network has been criticized as the internal relationships of hidden layers are generally unknown. This paper investigates neural networks to predict the use of bike-sharing systems in Suzhou, China considering a large amount of categorical data. Two methods here, Entity embedding and one-hot encoding are applied. The comparison experiments verify that the entity embedding method is more efficient than one-hot encoding. Furthermore, the hidden layers are visually analyzed by t-SNE, and the relationships with time, weather, surroundings and other variables for the traffic volume at shared bike sites are discussed. The research results show that: 1. Entity embedding can effectively increase the continuity of categorical variables and therefore, improve the prediction efficiency for the neural network models. 2. The relationship between variables can be identified through visual analysis, and the trained embedding vectors can also be used to supervise clustering.
Publisher
International Conference on Ambient Systems, Networks and Technologies
Issue Date
2019-04
Language
English
Citation

10th International Conference on Ambient Systems, Networks and Technologies, ANT 2019 and The 2nd International Conference on Emerging Data and Industry 4.0, EDI40 2019, Affiliated Workshops, pp.163 - 170

ISSN
1877-0509
DOI
10.1016/j.procs.2019.04.025
URI
http://hdl.handle.net/10203/321220
Appears in Collection
GT-Conference Papers(학술회의논문)
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