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Intersectional social identities and loneliness: Evidence from a municipality in Switzerland

Intersectional social identities and loneliness: Evidence from a municipality in Switzerland
Intersectional social identities and loneliness: Evidence from a municipality in Switzerland
We examined the extent to which intersectional social identities combine to shape risks of loneliness and identified the specific social clusters that are most at risk of loneliness for more precise and targeted interventions to reduce loneliness in a Swiss municipality. Based on data collected using participatory action research, we used the novel multilevel analysis of individual heterogeneity and discriminatory accuracy (MAIHDA) to estimate the predictive power of intersectional social attributes on risk of loneliness. We found that 56% of the between-strata variance was captured by intersectional interaction but was not explained by the additive effect of social identities. We also found that nationality and education had the strongest predictive power for loneliness. Interventions to reduce loneliness may benefit from understanding the resident population's intersectional identities given that individuals with the same combinations of social identities face a common set of social exposures relating to loneliness.
community intervention, intersectionality, multilevel modeling, participatory action research, social and emotional isolation, social identity, stratification
1520-6629
3560-3573
Li, Yang
4789a098-30e5-4197-8082-e467601b7a52
Spini, Dario
c4532baa-23f5-4953-a82b-d1dfba228b98
Li, Yang
4789a098-30e5-4197-8082-e467601b7a52
Spini, Dario
c4532baa-23f5-4953-a82b-d1dfba228b98

Li, Yang and Spini, Dario (2022) Intersectional social identities and loneliness: Evidence from a municipality in Switzerland. Journal of Community Psychology, 50 (8), 3560-3573. (doi:10.1002/jcop.22855).

Record type: Article

Abstract

We examined the extent to which intersectional social identities combine to shape risks of loneliness and identified the specific social clusters that are most at risk of loneliness for more precise and targeted interventions to reduce loneliness in a Swiss municipality. Based on data collected using participatory action research, we used the novel multilevel analysis of individual heterogeneity and discriminatory accuracy (MAIHDA) to estimate the predictive power of intersectional social attributes on risk of loneliness. We found that 56% of the between-strata variance was captured by intersectional interaction but was not explained by the additive effect of social identities. We also found that nationality and education had the strongest predictive power for loneliness. Interventions to reduce loneliness may benefit from understanding the resident population's intersectional identities given that individuals with the same combinations of social identities face a common set of social exposures relating to loneliness.

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Accepted/In Press date: 16 March 2022
e-pub ahead of print date: 31 March 2022
Additional Information: © 2022 The Authors. Journal of Community Psychology published by Wiley Periodicals LLC.
Keywords: community intervention, intersectionality, multilevel modeling, participatory action research, social and emotional isolation, social identity, stratification

Identifiers

Local EPrints ID: 471709
URI: http://eprints.soton.ac.uk/id/eprint/471709
ISSN: 1520-6629
PURE UUID: 00bd0272-6a35-4074-b794-3b37e0f247e9
ORCID for Yang Li: ORCID iD orcid.org/0000-0003-1051-4788

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Date deposited: 16 Nov 2022 18:30
Last modified: 16 Mar 2024 22:50

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Contributors

Author: Yang Li ORCID iD
Author: Dario Spini

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