The dataverse will be used as a repository for the survey data collected through the TOMNET University Transportation Center.

Driven by a wide variety of technologies, major societal shifts in demographics and values, and evolving policy instruments and planning practices, unprecedented changes are underway in transportation. It has never been more vital to understand and predict the behavioral impacts of these changes. However, our ability to do so is severely hampered by the absence from our models of a major class of variables that has been repeatedly demonstrated to be vital to nearly every decision individuals make — specifically, attitudes (including opinions, feelings, preferences, perceptions, and personality). Several factors have historically prevented the incorporation of attitudes into large-scale travel-demand forecasting models, including the challenges associated with measuring them in traditional travel behavior surveys, and a current inability to forecast them in the way that socioeconomic variables are forecast.

The TOMNET research team is engaged in creating and testing a variety of innovative and practical approaches to overcoming these barriers. These approaches have in common that they use attitudinal data collected from one sample to inform models built on a different sample. The Center will conduct extensive, coordinated, and systematic exploration of various machine learning and statistical data fusion approaches, involving applications to a diverse array of important topics (such as equity, vehicle ownership, the adoption of autonomous vehicles and ride-hailing apps, safety, resilience, active transportation, and land use impacts on travel) in multiple geographic regions (e.g., Phoenix, Seattle, San Francisco, Los Angeles, Tampa, and Atlanta). Through its work, the Center will identify the most promising approaches for integrating attitudinal variables and latent constructs in regional travel demand forecasting models, and quantifying the effects of these traditionally unobserved traits on behavioral choices and transport outcomes.

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SPSS Syntax - 153.1 KB - MD5: 91c2d60f0c37389a0f3a49ee35189805
Code
This file explains how the original data is processed, including the assignment of appropriate labels and categories. It is included in the Dataverse repository solely to offer additional insights into the data processing procedures. It is NOT required to be rerun for the analysis of the T4 dataset provided in the repository.
Adobe PDF - 124.4 KB - MD5: 6c95b8fd9a3992c3a7dd043d3098f0ce
Documentation
Adobe PDF - 9.9 MB - MD5: c21843d464c52c59d4eaa7a8e837e51a
Documentation
Codebook describing variables available on the dataset.
SPSS Binary - 25.2 MB - MD5: 6ea30b1694173143eb786eabba903219
Code
Survey Dataset as SPSS file
Tabular Data - 38.4 MB - 730 Variables, 3465 Observations - UNF:6:ifzmkzanOczt6tgLAwhZ2g==
Data
Survey dataset as Comma Separated Values file, with String values.
Tabular Data - 64.5 KB - 2 Variables, 730 Observations - UNF:6:sNGG8Aja0K6jNEQMz5i1OQ==
Documentation
List of variable labels.
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