Introduction: Stereotypes have traditionally been considered as "mental pictures" of a particular social group. The current research aims to draw the structure of gender stereotypes and metastereotype schemes as complex systems of stereotypical features. Therefore, we analyze gender stereotypes as networks of interconnected characteristics.

Method: Through an online survey ( = 750), participants listed the common female and male features to build the structure of the gender stereotypes. Participants also listed the common features of how members of one gender think they are viewed by people of the other gender to build the structure of gender metastereotypes.

Results: Our results suggest that female stereotypes are characterized by a single community of features consistently associated such as , and . Female metastereotype, however, combines the previous community with another characterized by and . On the contrary, the male stereotype projected by women is characterized by a community of features associated such as , and , but male in-group stereotypes and metastereotypes projected by men are a combination of this community with another one characterized by features associated such as , and .

Discussion: A network approach to studying stereotypes provided insights into the meaning of certain traits when considered in combination with different traits. (e.g., strong-intelligent vs. strong-aggressive). Thus, focusing on central nodes can be critical to understanding and changing the structure of gender stereotypes.

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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10393260PMC
http://dx.doi.org/10.3389/fpsyg.2023.1193866DOI Listing

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