Penerapan Principal Component Analysis (PCA) untuk Reduksi Dimensi dan Pemetaan Karakteristik Nutrisi pada Produk Makanan Kemasan di Indonesia

Authors

  • Rizky Saputra Tobing Universitas Negeri Medan
  • Ocha Hosea Sigalingging Universitas Negeri Medan
  • Roberto Karlos Sinaga Universitas Negeri Medan
  • Rhamanda Ardiansyah Lubis Universitas Negeri Medan

DOI:

https://doi.org/10.62383/algoritma.v4i1.891

Keywords:

Data Analysis, Main Components, Nutrition Profile, Nutritional Value, Packaged Food

Abstract

The increasing consumption of packaged food products in Indonesia reflects modern lifestyle changes but simultaneously raises public health concerns related to high calorie, sugar, and fat intake. Nutritional information presented on food labels consists of multiple interrelated variables, making it difficult to identify dominant nutritional factors that characterize packaged food products. This study aims to apply Principal Component Analysis (PCA) to reduce the dimensionality of nutritional data and to map the nutritional characteristics of packaged food products in Indonesia. The research employs a quantitative exploratory approach using secondary data obtained from nutrition facts labels of 1,651 packaged food products. Seven nutritional variables were initially analyzed, namely total energy, protein, total fat, total carbohydrates, sugar, sodium, and dietary fiber. Data preprocessing included data cleaning, Z-score standardization, and iterative variable selection based on the Kaiser-Meyer-Olkin (KMO) measure and Bartlett’s Test of Sphericity to ensure sampling adequacy and sufficient correlation among variables. Variables with low sampling adequacy and perfect multicollinearity were eliminated, resulting in five variables retained for the final PCA model. Principal components were extracted using the eigenvalue greater than one criterion and confirmed through a scree plot, followed by Varimax rotation to enhance interpretability. The results indicate the formation of two principal components explaining approximately 69.7% of the total variance. The first component represents energy density and macronutrient richness, while the second component reflects carbohydrate-related characteristics, particularly the contrasting pattern between sugar and dietary fiber. Biplot visualization further illustrates product distribution based on these components. The findings demonstrate that PCA effectively simplifies complex nutritional information and provides a clear nutritional mapping of packaged food products, offering practical insights for consumers, producers, and policymakers in supporting healthier food choices in Indonesia.

Downloads

Download data is not yet available.

References

Akhfa, A. N. (2021). The relationship of nutrition knowledge, nutrition status, and level of understanding with the behavior of reading nutrition labels. ARGIPA (Arsip Gizi Dan Pangan), 6(1), 52–62. https://doi.org/10.22236/argipa.v6i1.6196.

Hidayat, R., & Kurniawan, A. (2021). Analisis komponen utama untuk reduksi dimensi data multivariat pada bidang pangan. Jurnal Statistika Industri dan Komputasi, 6(2), 85–94.

Hidayat, R., Santoso, B., & Wijayanti, L. (2022). Penerapan principal component analysis dalam pemetaan karakteristik mutu pangan olahan. Jurnal Teknologi dan Industri Pangan, 33(1), 45–54. https://doi.org/10.6066/jtip.2022.33.1.45.

Lestari, D., Rahmawati, A., & Nugroho, S. (2023). Pemahaman label gizi dan pengaruhnya terhadap pemilihan makanan kemasan pada masyarakat perkotaan. Jurnal Gizi Indonesia, 11(2), 97–106. https://doi.org/10.14710/jgi.11.2.97-106.

Mahmuudah, L. N., Mardiah, W., & Lumbantobing, V. B. (2020). Student knowledge in reading nutrient label information and types of packaging food consumed by nursing students. Media Keperawatan Indonesia, 3(2), 45–53. https://doi.org/10.26714/mki.3.2.2020.45-53.

Nugraha, F., & Laksmiwati, H. (2023). Uji kelayakan analisis faktor menggunakan KMO dan Bartlett pada data kesehatan masyarakat. Jurnal Biostatistika dan Kependudukan, 12(1), 33–42.

Pramesti, D. A., & Wibowo, A. (2024). Reduksi kompleksitas informasi nilai gizi menggunakan principal component analysis pada produk pangan kemasan. Jurnal Informatika dan Analisis Data, 5(1), 1–11. https://doi.org/10.30865/jiad.v5i1.2024.

Pratama, R. Y., & Nugroho, B. A. (2022). Pemanfaatan data label gizi sebagai basis analisis kuantitatif produk makanan kemasan. Jurnal Pangan dan Agroindustri, 10(3), 161–170.

Rema, F. X. (2021). Penerapan metode principal component analysis (PCA) terhadap faktor-faktor yang mempengaruhi lamanya penyelesaian skripsi mahasiswa Program Studi Pendidikan Matematika FKIP UNDANA. Jurnal Cendekia: Jurnal Pendidikan Matematika, 5(2), 1234–1245.

Santoso, S., Wulandari, R., & Prasetyo, E. (2020). Analisis multivariat dalam kajian gizi dan kesehatan masyarakat. Jurnal Statistika Terapan, 4(1), 15–26.

Widyaningsih, E., Sari, M., & Putra, D. (2021). Konsumsi makanan ultra-proses dan implikasinya terhadap kesehatan masyarakat Indonesia. Jurnal Kesehatan Masyarakat Nasional, 16(2), 89–98. https://doi.org/10.21109/kesmas.v16i2.4567.

Downloads

Published

2026-01-22

How to Cite

Rizky Saputra Tobing, Sigalingging, O. H., Sinaga, R. K., & Lubis, R. A. (2026). Penerapan Principal Component Analysis (PCA) untuk Reduksi Dimensi dan Pemetaan Karakteristik Nutrisi pada Produk Makanan Kemasan di Indonesia. Algoritma : Jurnal Matematika, Ilmu Pengetahuan Alam, Kebumian Dan Angkasa, 4(1), 20–30. https://doi.org/10.62383/algoritma.v4i1.891

Similar Articles

1 2 3 4 5 6 7 8 9 10 > >> 

You may also start an advanced similarity search for this article.