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ESTIMATION OF DRIVERS ROUTE CHOICE USING MULTI-PERIOD MULTINOMIAL CHOICE MODELS. Stephen Clark and Dr Richard Batley Institute for Transport Studies University of Leeds , U.K.
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ESTIMATION OF DRIVERS ROUTE CHOICE USING MULTI-PERIOD MULTINOMIAL CHOICE MODELS Stephen Clark and Dr Richard Batley Institute for Transport Studies University of Leeds, U.K.
Where ‘panel’ data is available on choices made by individuals, it is reasonable to assume that previous experiences somehow condition these choices Introduction
Number plate matching exercise conducted in the City of York, U.K. 100% survey 08:00 to 09:00 27, 28 June; 7, 8, 9, 11, 13, 27 September; 18 October, 2000 Data set 1
Of the vehicles observed on 2 ‘adjacent’ survey days, over 50% used the same route on both days As the period between 2 survey days increased, this percentage dropped e.g. for 2 survey days 14 working days apart, the percentage was 35%-40% Repetition and contiguity
For a particular O-D movement on 4 ‘consecutive’ days: 3 vehicles travelled O-D on all 4 days 8 vehicles travelled O-D on any 3 ‘consecutive’ days 28 vehicles travelled O-D on any 2 ‘consecutive’ days Of these 39 repeat vehicles, only on 3 occasions out of the 53 possibilities did they follow a different route on a ‘consecutive’ day Repetition and O-D pairs
Suggests route choice data contains a high degree of habitual information If habitual behaviour is explicitly modelled, then its strength can be estimated Failure to account for repetition and route experience may undermine the validity of any models Habit
LIMDEP failed to estimate a parameter in the range 1 GAUSS code applying Chamberlain’s conditional maximum likelihood estimation detected lack of variability in explanatory variables unable to estimate model Modelling problems
Autoregressive structure, correlations between alternatives and time periods, unobserved heterogeneity across individuals, differential variances across alternatives Multinomial multi-period probit
Multinomial multi-period probit AR(1) errors for each choice Individual-specific random effects for each choice Two estimation methods Method of Simulated Moments Simulated Maximum Likelihood Geweke’s GAUSS code
Both methods failed to estimate a model Presence of singular matrix Again, suspected artefact of lack of variability in explanatory variables Modelling problems
Stated preference study of route and departure time choice in City of York, U.K. How do people respond to an increase in travel time and/or travel time variability? 2-stage study, involving customisation 5 cards Data set 2
‘get off earlier’ time (G) journey time (Q) journey time variability (S) late time (L) Derived time variables
Members of staff at the York Health Services Trust Prize draw incentive 165 usable first stage questionnaires 56 usable second stage questionnaires 34% response rate for second stage Ranked data ‘exploded’ into binary choice data 840 binary choice observations Field study
Where ‘panel’ data is available on choices made by individuals, it is reasonable to assume that previous experiences somehow condition these choices Data set 1: RP route choice data Random effects probit Multi-period multinomial probit Data set 2: SP route and departure time choice Pseudo-panel Random parameters logit Evidence of repeated observations effects Summary