14

Dec

Teaser image to In Search of Alignment between Social Media Posts and Survey Responses

In Search of Alignment between Social Media Posts and Survey Responses

Frederick Conrad, Michigan Program in Survey and Data Science

   14.12.2023

   4:15 pm - 5:45 pm

   LMU Department of Statistics and via zoom

Social media's potential for research hinges on alignment with survey data. This presentation explores alignment's elusive nature, assessing likelihood under varied conditions. It investigates whether selecting tweets expressing opinions corresponding to survey responses reveals hidden alignment.


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