Raharjo Raharjo
Universitas Islam Negri walisongo Semarang

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Enhancing Students' Scientific Argumentation Skills in Islamic Religious Education Through AI-Powered Differentiated Learning Siti Nurjanah; Raharjo Raharjo; Nanang Qosim; Rr Kusuma Dwi Nur Ma'rifati
AL-ISHLAH: Jurnal Pendidikan Vol 17, No 2 (2025): JUNE 2025
Publisher : STAI Hubbulwathan Duri

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.35445/alishlah.v17i2.6424

Abstract

This study investigates the effectiveness of AI-assisted learning in enhancing students’ scientific argumentation skills within Islamic Religious Education (PAI) at SMKN Widang. As digital tools become more integrated into education, understanding their impact on higher-order thinking skills is increasingly relevant. A quasi-experimental design was employed, involving two groups: an experimental class (XI-A) that used AI tools such as ChatGPT for constructing arguments and receiving instant feedback, and a control class (XI-B) that received conventional instruction. Data were collected through argumentation tests, classroom observations, and interviews. Statistical analysis was conducted using an independent sample t-test in SPSS 26. The experimental group showed a significantly higher improvement in argumentation skills (Mean = 76.34, SD = 15.53) compared to the control group (Mean = 55.34, SD = 17.99), with a large effect size (Cohen’s d = 1.25, p 0.05). AI tools facilitated student engagement by enabling real-time feedback, personalized content, and multiple perspectives, particularly in discussing contemporary issues like brawls and substance abuse from an Islamic viewpoint. These findings suggest that AI-based learning can effectively support scientific argumentation in religious education contexts by fostering deeper analysis and critical thinking. Despite limitations—such as being restricted to one institution and a single AI tool—the results highlight the potential of AI integration for contextual and individualized learning. Future studies could explore broader applications across disciplines and educational levels.