Difference between revisions of "Modeling demand for passenger and freight transportation"

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Designing efficient transportation systems requires to know well the transportation demand in order to be well adapted to it. ML can improve standard demand modelling tools such as discrete choice models.
 
Designing efficient transportation systems requires to know well the transportation demand in order to be well adapted to it. ML can improve standard demand modelling tools such as discrete choice models.

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Designing efficient transportation systems requires to know well the transportation demand in order to be well adapted to it. ML can improve standard demand modelling tools such as discrete choice models.

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