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Algorithms for seeding social networks can enhance the adoption of a public health intervention in urban India

Marcus Alexander, Laura Forastiere, Swati Gupta, Nicholas A. Christakis

2022Proceedings of the National Academy of Sciences38 citationsDOIOpen Access PDF

Abstract

Targeting structurally influential individuals within social networks can enhance adoption of health interventions within populations. We tested the effectiveness of two algorithms to improve social contagion that do not require knowledge of the whole network structure. We mapped the social interactions of 2,491 women in 50 residential buildings (chawls) in Mumbai, India. The buildings, which are social units, were randomized to (1) targeting 20% of the women at random, (2) targeting friends of such randomly chosen women, (3) targeting pairs of people composed of randomly chosen women and a friend, or (4) no targeting. Both targeting algorithms, friendship nomination and pair targeting, enhanced adoption of a public health intervention related to the use of iron-fortified salt for anemia. In particular, the targeting of pairs of friends, which is relatively easily implementable in field settings, enhanced adoption of novel practices through both social influence and social reinforcement.

Topics & Concepts

FriendshipPsychological interventionIntervention (counseling)NominationSocial network (sociolinguistics)Public healthComputer scienceSocial mediaPsychologyMedicineSocial psychologyPolitical scienceWorld Wide WebNursingPsychiatryLawCOVID-19 epidemiological studiesCOVID-19 and Mental HealthMosquito-borne diseases and control
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