Self-Compassion in an Academic Setting: A Big Data-Driven Systematic Literature Review

Penulis

DOI:

https://doi.org/10.31316/g-couns.v10i01.7070

Abstrak

Psychological pressure can hinder students from performing optimally in academic settings. In response, self-compassion (SC) emerges as a crucial skill to help students manage stress and maintain mental health. While previous research has predominantly examined SC in clinical contexts, this study offers a novel perspective by investigating its application within an academic setting. The aim is to develop a theoretical model that explains the role of SC in addressing psychological academic challenges. A systematic literature review was conducted using the PRISMA model, supported by big data and visualized through VOS viewer. Using the Publish or Perish application, 505 articles were identified from Scopus- and Sinta-indexed journals (Elsevier, PubMed, Crossref, Google Scholar) published between 2019 and 2023. Nineteen articles were selected for in-depth analysis. The results reveal two academic categories: positive and negative. Self-compassion enhances variables in positive settings and moderates the effects of negative academic stressors. This research contributes to the design of psychological intervention strategies for students.

Keywords: psychological academic challenges, big data, self-compassion, students

Unduhan

Data unduhan belum tersedia.

Diterbitkan

2025-10-16

Cara Mengutip

Apsari, D. A., Atmoko, A., & Setyowati, N. (2025). Self-Compassion in an Academic Setting: A Big Data-Driven Systematic Literature Review. G-Couns: Jurnal Bimbingan Dan Konseling, 10(01), 583–599. https://doi.org/10.31316/g-couns.v10i01.7070

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