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Who left riding transit? Examining socioeconomic disparities in the impact of COVID-19 on ridership

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Songhua Hu, Peng Chen

The COVID-19 pandemic has led to a globally unprecedented decline in transit ridership. This paper leveraged the 20-years daily transit ridership data in Chicago to infer the impact of COVID-19 on ridership using the Bayesian structural time series model, controlling confounding effects of trend, seasonality, holiday, and weather. A partial least square regression was then employed to examine the relationships between the impact of ridership and various explanatory factors.

Data

  • Daily_Lstaion_Final.csv: Ridership+Weather, the input to build BSTS.
  • finalCoeff_Transit_0810.csv: Coeff from BSTS
  • finalImpact_Transit_0810_old.csv: Causal Impact from BSTS [Describe p-value of impact based on this file]
  • Impact_Sta.csv: impact of each station
  • All_final_Transit_R_0812.csv: features to build PLS
  • Other data are available at: https://drive.google.com/drive/folders/1OxtPze9qI-tNz3VLw5-7hvPf4y-M3J_g?usp=sharing

Code

  • 1-L_Station_Ridership_Prepare.py: Finish the time-series preprocessing.
  • 2-BSTS_Causal_Impact.R: Build the BSTS and infer the causal impact.
  • 3-EDA_BSTS_Result.py: Visualize the results from BSTS.
  • 4-Feature_Build.py: Build the features matrix for PLS models.
  • 5-PLS_Build.R: Finish the PLS model fit.

Results

Decomposition of one transit station ridership time series in the BSTS model.

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Spatial distribution of the relative impact during the COVID-19 pandemic.

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