A discrete choice framework for modeling and forecasting the adoption and diffusion of new transportation services
Authored by Zarwi Feras El, Akshay Vij, Joan L Walker
Date Published: 2017
DOI: 10.1016/j.trc.2017.03.004
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Abstract
Major technological and infrastructural changes over the next decades,
such as the introduction of autonomous vehicles, implementation of
mileage-based fees, carsharing and ridesharing are expected to have a
profound impact on lifestyles and travel behavior. Current travel demand
models are unable to predict long-range trends in travel behavior as
they do not entail a mechanism that projects membership and market share
of new modes of transport (Uber, Lyft, etc.). We propose integrating
discrete choice and technology adoption models to address the
aforementioned issue. In order to do so, we build on the formulation of
discrete mixture models and specifically Latent Class Choice Models
(LCCMs), which were integrated with a network effect model. The network
effect model quantifies the impact of the spatial/network effect of the
new technology on the utility of adoption. We adopted a confirmatory
approach to estimating our dynamic LCCM based on findings from the
technology diffusion literature that focus on defining two distinct
types of adopters: innovator/early adopters and imitators. LCCMs allow
for heterogeneity in the utility of adoption for the various market
segments i.e. innovators/early adopters, imitators and non-adopters. We
make use of revealed preference (RP) time series data from a one-way
carsharing system in a major city in the United States to estimate model
parameters. The data entails a complete set of member enrollment for the
carsharing service for a time period of 2.5 years after being launched.
Consistent with the technology diffusion literature, our model
identifies three latent classes whose utility of adoption have a
well-defined set of preferences that are significant and behaviorally
consistent. The technology adoption model predicts the probability that
a certain individual will adopt the service at a certain time period,
and is explained by social influences, network effect, sociodemographics
and level-of-service attributes. Finally, the model was calibrated and
then used to forecast adoption of the carsharing system for potential
investment strategy scenarios. A couple of takeaways from the adoption
forecasts were: (1) placing a new station/pod for the carsharing system
outside a major technology firm induces the highest expected increase in
the monthly number of adopters; and (2) no significant difference in the
expected number of monthly adopters for the downtown region will exist
between having a station or on-street parking. (C) 2017 Elsevier Ltd.
All rights reserved.
Tags
Agent-based model
Dynamics
Technology diffusion
demand forecasting
electric vehicles
accessibility
Takeoff
Products
Alternative-fuel vehicles
Consumer
Latent class choice models
Social
influences
Spatial effect