Visualizing the "Heartbeat" of a City with Tweets
Urbano Fran\c{c}a, Hiroki Sayama, Colin McSwiggen, Roozbeh Daneshvar, Yaneer Bar-Yam

TL;DR
This paper analyzes over 6 million geolocated tweets to visualize and quantify the daily and weekly urban activity patterns of New York City, revealing the city's social and behavioral dynamics through Twitter data.
Contribution
It introduces a novel method of using geolocated Twitter data to visualize and analyze urban human activity patterns and social dynamics in NYC.
Findings
Identified the city's diurnal heartbeat and commuting patterns.
Quantified differences between weekday and weekend social behaviors.
Detected specific activity hotspots linked to events and locations.
Abstract
Describing the dynamics of a city is a crucial step to both understanding the human activity in urban environments and to planning and designing cities accordingly. Here we describe the collective dynamics of New York City and surrounding areas as seen through the lens of Twitter usage. In particular, we observe and quantify the patterns that emerge naturally from the hourly activities in different areas of New York City, and discuss how they can be used to understand the urban areas. Using a dataset that includes more than 6 million geolocated Twitter messages we construct a movie of the geographic density of tweets. We observe the diurnal "heartbeat" of the NYC area. The largest scale dynamics are the waking and sleeping cycle and commuting from residential communities to office areas in Manhattan. Hourly dynamics reflect the interplay of commuting, work and leisure, including whether…
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