TL;DR
This paper constructs a semantic-structural atlas of transportation research from 1967 to 2025, revealing insights into author communities, collaboration patterns, and introducing the concept of phantom collaborators.
Contribution
It introduces a novel methodology for analyzing semantic and collaboration structures in transportation research, including the concept of phantom collaborators and a live web atlas.
Findings
Semantic author communities only weakly align with coauthor communities.
Combining collaboration and topic edges reveals more communities and decouples collaboration from topics.
Phantom collaborators often become real coauthors within a few years, at a rate much higher than random chance.
Abstract
We present a semantic-structural atlas of transportation research built from 120{,}323 papers across 34 peer-reviewed journals published between 1967 and 2025, roughly an order of magnitude larger than and a decade beyond Sun and Rahwan's~(2017) coauthorship study. We use OpenAlex and Crossref as open, CC0-licensed data sources, resolve author identity through OpenAlex author IDs, ORCID records, and manual alias resolution, and embed every paper with SPECTER2 with Arora-style whitening concatenated with concept TF--IDF and venue linear-discriminant projections. On this substrate we report three findings. First, Leiden on the author-level semantic k-nearest-neighbor graph yields 23 topic communities that agree only weakly with the 172 coauthor communities (normalized mutual information ), opening room for a predictive layer that neither source encodes alone. Second, a multiplex…
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