The culture is truly the issue: A preliminary exploration of active duty female spouses' acculturation to military life

Abstract: Acculturating to the Active Duty military lifestyle can be challenging yet rewarding. Using acculturation theory as a lens, this qualitative study explored experiences of women who transitioned into Active Duty culture through marrying a male service member. Quantitative and qualitative data were collected via online survey from women married to men currently or recently serving on Active Duty. In total, 202 survey responses were received, with 194 providing qualitative data. Data were analyzed using thematic analysis. Three themes were identified: descriptions of military culture, acculturation strategies, and processes involved with acculturation. Limitations include the cross-sectional and preliminary nature of the data. Findings can inform culturally responsive practice at all levels and indicate this is a fruitful area for further study.

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