Author: Porcher, Simon; Renault, Thomas
Title: Social distancing beliefs and human mobility: Evidence from Twitter Cord-id: pvx8otwt Document date: 2021_3_3
ID: pvx8otwt
Snippet: We construct a novel database containing hundreds of thousands geotagged messages related to the COVID-19 pandemic sent on Twitter. We create a daily index of social distancing—at the state level—to capture social distancing beliefs by analyzing the number of tweets containing keywords such as “stay homeâ€, “stay safeâ€, “wear maskâ€, “wash hands†and “social distancingâ€. We find that an increase in the Twitter index of social distancing on day t-1 is associated with a decre
Document: We construct a novel database containing hundreds of thousands geotagged messages related to the COVID-19 pandemic sent on Twitter. We create a daily index of social distancing—at the state level—to capture social distancing beliefs by analyzing the number of tweets containing keywords such as “stay homeâ€, “stay safeâ€, “wear maskâ€, “wash hands†and “social distancingâ€. We find that an increase in the Twitter index of social distancing on day t-1 is associated with a decrease in mobility on day t. We also find that state orders, an increase in the number of COVID-19 cases, precipitation and temperature contribute to reducing human mobility. Republican states are also less likely to enforce social distancing. Beliefs shared on social networks could both reveal the behavior of individuals and influence the behavior of others. Our findings suggest that policy makers can use geotagged Twitter data—in conjunction with mobility data—to better understand individual voluntary social distancing actions.
Search related documents:
Co phrase search for related documents- Try single phrases listed below for: 1
Co phrase search for related documents, hyperlinks ordered by date