Kevin Munger, Ishita Gopal, Jonathan Nagler, Joshua A. Tucker
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Accessibility and generalizability: Are social media effects moderated by age or digital literacy?
An emerging empirical regularity suggests that older people use and respond to social media very differently than younger people. Older people are the fastest-growing population of Internet and social media users in the US, and this heterogeneity will soon become central to online politics. However, many important experiments in this field have been conducted on online samples that do not contain enough older people to be useful to generalize to the current population of Internet users; this issue is more pronounced for studies that are even a few years old. In this paper, we report the results of replicating two experiments involving social media (specifically, Facebook) conducted on one such sample lacking older users (Amazon’s Mechanical Turk) using a source of online subjects which does contain sufficient variation in subject age. We add a standard battery of questions designed to explicitly measure digital literacy. We find evidence of significant treatment effect heterogeneity in subject age and digital literacy in the replication of one of the two experiments. This result is an example of limitations to generalizability of research conducted on samples where selection is related to treatment effect heterogeneity; specifically, this result indicates that Mechanical Turk should not be used to recruit subjects when researchers suspect treatment effect heterogeneity in age or digital literacy, as we argue should be the case for research on digital media effects.
期刊介绍:
Research & Politics aims to advance systematic peer-reviewed research in political science and related fields through the open access publication of the very best cutting-edge research and policy analysis. The journal provides a venue for scholars to communicate rapidly and succinctly important new insights to the broadest possible audience while maintaining the highest standards of quality control.