An analysis of the characteristics and behavior of individual bus stops can
reveal clusters of similar stops, which can be of use in making routing and
scheduling decisions, as well as determining what facilities to provide at each
stop. This paper provides an exploratory analysis, including several possible
clustering results, of a dataset provided by the Regional Transit Service of
Rochester, NY. The dataset describes ridership on public buses, recording the
time, location, and number of entering and exiting passengers each time a bus
stops. A description of the overall behavior of bus ridership is followed by a
stop-level analysis. We compare multiple measures of stop similarity, based on
location, route information, and ridership volume over time