2019 20th IEEE International Conference on Mobile Data Management (MDM) 2019
DOI: 10.1109/mdm.2019.00-43
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Trajectory Prediction from a Mass of Sparse and Missing External Sensor Data

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Cited by 3 publications
(3 citation statements)
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“…It is also worth noting that the uninformative RU-IRL method achieved good performance despite being much less flexible, with only two estimated parameters (𝛽 1 and 𝛽 2 ), while the number of estimated parameters of the Markov method corresponds to the number of transition probabilities (272 × 271 possible transitions). This is also in accordance with results obtained by [4], in which a recurrent neural network with both location and timestamp inputs achieved only a slightly better performance than a first-order Markov model in the next location prediction task.…”
Section: Case Studysupporting
confidence: 92%
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“…It is also worth noting that the uninformative RU-IRL method achieved good performance despite being much less flexible, with only two estimated parameters (𝛽 1 and 𝛽 2 ), while the number of estimated parameters of the Markov method corresponds to the number of transition probabilities (272 × 271 possible transitions). This is also in accordance with results obtained by [4], in which a recurrent neural network with both location and timestamp inputs achieved only a slightly better performance than a first-order Markov model in the next location prediction task.…”
Section: Case Studysupporting
confidence: 92%
“…In [4], the authors propose a recurrent neural network model to predict the next location from moving object trajectories captured by external sensors (e.g., traffic surveillance cameras) placed on the roadside. They also cope with the incompleteness and sparsity problems that are inherent to trajectories captured by sensors, and propose a scheme to integrate the solutions to such problems into the prediction model.…”
Section: Related Workmentioning
confidence: 99%
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