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EMAC 2022 Annual

Analyzing Purchase Decisions Using Dynamic Location Data

Published: May 24, 2022


Tal Shoshani, University of Southern California; Peter Pal Zubcsek, Tel Aviv University; Shachar Reichman, Tel Aviv University


We present a novel method to use low-granularity urban mobility data in consumer choice models, and analyze gas station choice during a six-month period in Staten Island, NY. Our data, also used to infer gas station visits, contain 11.7 million location records on 273 thousand devices observed near selected retailers including gas stations. We pool consumers’ mobility trajectories from several days to dynamically derive the distance of stores from consumers’ “anticipated trajectories.” We supplement our data with station-level daily fuel prices and estimate a conditional logit model to assess how consumers trade off gas prices and store distance. Further to a generally high station loyalty, we find that consumers strongly prefer not to deviate far off their common trajectories for fueling trips. Combining these results suggests a pattern of increased price competition even between relatively distant gas stations situated along the same traffic pathways.