Predicting Attitudes toward Marital Infidelity Based on Attachment and Perfectionism Styles
Publish place: Journal of Modern Psychology، Vol: 1، Issue: 1
Publish Year: 1400
Type: Journal paper
Language: English
View: 349
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Document National Code:
JR_JMPSY-1-1_005
Index date: 24 November 2021
Predicting Attitudes toward Marital Infidelity Based on Attachment and Perfectionism Styles abstract
The present study aims to predict the attitude towards marital infidelity based on attachment and perfectionism styles. The research method was correlational-descriptive and the statistical population was all married students of Islamic Azad University, Lahijan Branch. A sample of 369 students was selected by convenience sampling method. Adult Attachment Questionnaire, The Perfectionism Questionnaire and Attitude to Marital Infidelity Questionnaire were used to collect data. The research hypotheses were examined through Pearson correlation test and multiple regression and found that a significant correlation exists between marital infidelity with ambivalent attachment style (0.450), avoidant attachment style (0.348), safe style (-0.519), positive perfectionism (-0.403) and negative perfectionism (0.433). In addition, the multiple regression model indicated that attachment and perfectionism styles could accurately predict 34% and 25% of the variance of marital infidelity, respectively. The results indicated that creating a secure attachment style and positive perfectionism in individuals is related to reducing marital infidelity and consequently increasing family stability
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Predicting Attitudes toward Marital Infidelity Based on Attachment and Perfectionism Styles authors
مریم سلطان زاده رضامحله
M.A. in Genaral Psychology, Rahman Institute of Higher Education
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