Share, Collaborate, Benchmark: Advancing Travel Demand Research through rigorous open-source collaboration
This research foregrounds general practices in travel demand research, emphasizing the need to change our ways. A critical barrier preventing travel demand literature from effectively informing policy is the volume of publications without clear, consolidated benchmarks, making it difficult for resea...
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Zusammenfassung: | This research foregrounds general practices in travel demand research,
emphasizing the need to change our ways. A critical barrier preventing travel
demand literature from effectively informing policy is the volume of
publications without clear, consolidated benchmarks, making it difficult for
researchers and policymakers to gather insights and use models to guide
decision-making. By emphasizing reproducibility and open collaboration, we aim
to enhance the reliability and policy relevance of travel demand research. We
present a collaborative infrastructure for transit demand prediction models,
focusing on their performance during highly dynamic conditions like the
COVID-19 pandemic. Drawing from over 300 published papers, we develop an
open-source infrastructure with five common methodologies and assess their
performance under stable and dynamic conditions. We found that the prediction
error for the LSTM deep learning approach stabilized at a mean arctangent
absolute percentage error (MAAPE) of about 0.12 within 1.5 months, whereas
other models continued to exhibit higher error rates even a year into the
pandemic. If research practices had prioritized reproducibility before the
COVID-19 pandemic, transit agencies would have had clearer guidance on the best
forecasting methods and quickly identified those best suited for pandemic
conditions to inform operations in response to changes in transit demand. The
aim of this open-source codebase is to lower the barrier for other researchers
to replicate, reproduce models and build upon findings. We encourage
researchers to test their own modeling approaches on this benchmarking
platform, challenge the analyses conducted in this paper, and develop model
specifications that can outperform those evaluated here. Further, collaborative
research approaches must be expanded across travel demand modeling if we wish
to impact policy and planning. |
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DOI: | 10.48550/arxiv.2306.06194 |