Irsan Hardi

Verba volant, scripta manent.



Economic Modeling and Data Analytics Unit

Graha Primera Saintifika



Agrochemicals, GHG Emissions, and GDP in Southeast Asia: A Machine Learning Approach with Hierarchical Clustering


Journal article


Qalbin Salim Fazli, Ghalieb Mutig Idroes, Iin Shabrina Hilal, Iffah Hafizah, Irsan Hardi, T. R. Noviandy
Grimsa Journal of Business and Economics Studies, 2025

Semantic Scholar DOI
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APA   Click to copy
Fazli, Q. S., Idroes, G. M., Hilal, I. S., Hafizah, I., Hardi, I., & Noviandy, T. R. (2025). Agrochemicals, GHG Emissions, and GDP in Southeast Asia: A Machine Learning Approach with Hierarchical Clustering. Grimsa Journal of Business and Economics Studies.


Chicago/Turabian   Click to copy
Fazli, Qalbin Salim, Ghalieb Mutig Idroes, Iin Shabrina Hilal, Iffah Hafizah, Irsan Hardi, and T. R. Noviandy. “Agrochemicals, GHG Emissions, and GDP in Southeast Asia: A Machine Learning Approach with Hierarchical Clustering.” Grimsa Journal of Business and Economics Studies (2025).


MLA   Click to copy
Fazli, Qalbin Salim, et al. “Agrochemicals, GHG Emissions, and GDP in Southeast Asia: A Machine Learning Approach with Hierarchical Clustering.” Grimsa Journal of Business and Economics Studies, 2025.


BibTeX   Click to copy

@article{qalbin2025a,
  title = {Agrochemicals, GHG Emissions, and GDP in Southeast Asia: A Machine Learning Approach with Hierarchical Clustering},
  year = {2025},
  journal = {Grimsa Journal of Business and Economics Studies},
  author = {Fazli, Qalbin Salim and Idroes, Ghalieb Mutig and Hilal, Iin Shabrina and Hafizah, Iffah and Hardi, Irsan and Noviandy, T. R.}
}

Abstract

Agrochemical use, GHG emissions, and gross domestic product (GDP) vary widely across Southeast Asia, making the region suitable for cluster-based sustainability analysis. This study applies hierarchical clustering analysis (HCA) to classify nine Southeast Asian countries using four standardized indicators: pesticide use, nitrogen fertilizer use, GHG emissions, and GDP. Exploratory data analysis reveals significant disparities, with Brunei and Indonesia emerging as outliers due to exceptionally high input intensity and emissions, respectively. HCA identifies four distinct clusters: (1) low-input, low-emission economies (Cambodia, Laos, Myanmar); (2) moderately intensive systems (Malaysia, Thailand, the Philippines, Vietnam); (3) a high-pesticide profile (Brunei); and (4) a high-emission, high-output outlier (Indonesia). Principal Component Analysis confirms the cluster structure and highlights variation in emission efficiency. The findings show that similar agroecological contexts can yield divergent environmental outcomes, emphasizing the role of policy and technology. This study provides the first region-wide, data-driven typology of agricultural sustainability in Southeast Asia using HCA.


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