DEMAND FORECASTING FOR TRANSPORTATION SERVICES
Embodiments described herein are related to systems and methods for forecasting demands for a transportation service. In one aspect, a set of neural network models may be implemented, where each neural network model can be configured to predict a booking status of a category of carriers on a corresp...
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Main Authors | , , , , , |
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Format | Patent |
Language | English French German |
Published |
19.07.2023
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Subjects | |
Online Access | Get full text |
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Summary: | Embodiments described herein are related to systems and methods for forecasting demands for a transportation service. In one aspect, a set of neural network models may be implemented, where each neural network model can be configured to predict a booking status of a category of carriers on a corresponding date from a range of dates before a departure date. In one aspect, for each neural network model, a corresponding set of configuration values can be determined. Examples of the corresponding set of configuration values includes at least one of a number of layers, a number of neurons, and an activation function of the each neural network model. The set of neural network models can be constructed, according to corresponding sets of configuration values, and the constructed neural network models can be trained. |
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Bibliography: | Application Number: EP20230152210 |