民族
心理学
切罗基人
身份(音乐)
社会心理的
性别研究
社会心理学
社会学
精神科
地理
人类学
声学
物理
考古
作者
Adam J. Hoffman,Beth Kurtz‐Costes,Janae Shaheed
出处
期刊:Cultural Diversity & Ethnic Minority Psychology
[American Psychological Association]
日期:2020-04-30
卷期号:27 (1): 60-71
被引量:20
摘要
Objectives We examined ethnic-racial and gender identities and their relations to self-esteem and well-being among Cherokee early adolescents. We also explored gender differences in the significance to boys and girls of ethnic-racial and gender identities. Method The sample consisted of 212 Cherokee 6th, 7th, and 8th grade girls and boys (Mage = 12.7 years). Adolescents completed survey measures of gender and ethnic-racial centrality, gender private regard, ethnic-racial private regard, ethnic-racial public regard, self-esteem, and three measures of well-being. Results Both genders reported high levels of the importance of being Cherokee to their identity (i.e., centrality), and strong positive attitudes toward being Cherokee (i.e., ethnic-racial private regard). Boys perceived gender as more important and more positive than girls. Among girls, ethnic-racial identity was more central and was viewed more positively than their gender identity. Mean levels of ethnic-racial and gender centrality did not differ for boys, nor did their reports of ethnic-racial and gender private regard. Youth's perceptions that others hold Cherokees in high regard (public regard) decreased across the grade levels. For both boys and girls, gender identity dimensions had stronger relations than ethnic-racial identity to psychosocial outcomes. Conclusions For this sample of Cherokee adolescents, ethnic-racial identity held more prominence for girls than for boys, although aspects of gender identity were more strongly related to well-being for both genders. Results of the study indicate the significance of considering multiple identities in understanding identity development in American Indian adolescents. (PsycInfo Database Record (c) 2021 APA, all rights reserved).
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