Volume 5, Issue 6 (Shenakht Journal of Psychology and Psychiatry 2019)                   Shenakht Journal of Psychology and Psychiatry 2019, 5(6): 71-84 | Back to browse issues page


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PhD Student of Psychology, Faculty of Literature and Humanities, Lorestan University, Khoramabad, Iran.
Abstract:   (2488 Views)
Introduction: Considering that divorced women are exposed to a variety of psychological injuries because of the suffering of loneliness and lack of solid support.
Aim: This study aimed to assess the effectiveness of Self-Compassion Training on the Loneliness and resilience Destitute women.
Method: The statistical population consisted of all divorced women protected by the Welfare Organization of Khorramabad in 2017. The 30 of patients were selected by random sampling method and randomly divided into experimental and control groups. At first, loneliness and resiliency questionnaires were implemented as a pretest, and the training focused on compassion for the experimental group was performed in 8 sessions, but the control group did not receive any training. In the final stage, all subjects responded to the questionnaires as a post-test.
Results: The results of covariance analysis showed that after moderating the pre-test scores, the mean scores of loneliness and its sub-components of loneliness and family loneliness were significantly lower in the burnout-focused group than the control group (p <0.05), And in the training group focused on compassion, the mean score of resiliency was significantly higher than the control group (p <0.05).
Conclusion: Concentrated compassion-based education can reduce the negative thoughts that lead to individual differentiation from others and increase the mechanism of positive compromise in divorced women under protection of well-being.
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Type of Study: Research | Subject: General
Received: 2018/08/9 | Accepted: 2018/12/17 | Published: 2019/01/15

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