A Discrete Choice Framework for Modeling and Forecasting The Adoption and Diffusion of New Transportation Services
Feras El Zarwi, Akshay Vij, Joan Walker

TL;DR
This paper introduces a discrete choice and technology adoption integrated model to predict long-term transportation mode adoption, specifically applied to carsharing, capturing heterogeneity and social influences.
Contribution
It develops a dynamic Latent Class Choice Model with network effects to forecast adoption of new transportation services using real-world data.
Findings
Identifies three distinct adopter classes with significant preferences.
Accurately predicts adoption probabilities based on social and demographic factors.
Provides a framework for forecasting transportation technology diffusion.
Abstract
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…
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