Klasifikasi Pengalaman Pengguna pada Platform Digital Menggunakan Algoritma Random Forest

Authors

  • Andin Sabilla Janna Universitas Sriwijaya
  • M. Syaikh Azka Universita Sriwijaya
  • Zakirah Sabrina Putri Pasha Universita Sriwijaya
  • M. Putra Willy Nailis Universita Sriwijaya
  • Allsela Meiriza Universita Sriwijaya
  • Ken Ditha Tania Universita Sriwijaya
  • Ahmad Rifai Universita Sriwijaya

DOI:

https://doi.org/10.26905/jasiek.v8i1.16915

Keywords:

Classification, UI/UX, Machine Learning, Digital Platform, Random Forest, User Experience

Abstract

User experience on digital platforms was an important factor in determining service quality and platform success. This study classified user experience orientation based on User Interface (UI) and User Experience (UX) attributes using the Random Forest algorithm. The dataset was obtained from the Mendeley Data repository and contained 2,271 user evaluation records related to visual and functional elements across various digital platforms. The research stages included data normalization, label generation based on composite visual and functional scores, and model evaluation using 10-fold cross-validation. The results showed that Random Forest classified user experience orientation accurately and consistently, with an accuracy of 86.79%. Feature importance analysis indicated that Visual Hierarchy, Images and Multimedia, and Layout were the most influential attributes. These findings demonstrated that Random Forest was effective for analyzing user experience data and supporting digital platform improvement.

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Published

2026-06-18

How to Cite

[1]
A. S. Janna, “Klasifikasi Pengalaman Pengguna pada Platform Digital Menggunakan Algoritma Random Forest”, JASIEK, vol. 8, no. 1, pp. 59–67, Jun. 2026.

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