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ID: 4506
Cover Jurnal Keluarga Berencana MACHINE LEARNING FOR CHILD MALNUTRITION PREDICTION IN INDONESIA / Muhammad Firmansyah¹, Lalu Kekah Budi Prasetya², Nurul Adi Prawira³

Jurnal Keluarga Berencana MACHINE LEARNING FOR CHILD MALNUTRITION PREDICTION IN INDONESIA / Muhammad Firmansyah¹, Lalu Kekah Budi Prasetya², Nurul Adi Prawira³

Edisi: Vol. 10 No. 1 Tahun 2025

Pengarang:
Muhammad Firmansyah¹ ; Lalu Kekah Budi Prasetya² ; Nurul Adi Prawira³
Penerbit:
KEMENTERIAN KEPENDUDUKAN DAN PEMBANGUNAN KELUARGA/BKKBN,
Tempat Terbit:
Jakarta :
Tahun Terbit:
2025
Bahasa:
eng
Deskripsi Fisik:
13 hlm : - ; 29 cm
ISBN:
2503-3379
Nomor Panggil:
362.198 92 MUH j
Control Number:
INLIS000000000004498
BIB ID:
0010-0725000309
Catatan
This study utilizes machine learning (ML) methods to predict malnutrition among children in Indonesia. It adopts a family-centered perspective, leveraging large datasets from WHO, UNICEF, and the Global Nutrition Report. A 100,000-strong stratified sample of children aged 0-18 was examined, incorporating a set of anthropometric, socioeconomic, and demographic factors. Preprocessing of data included imputation, normalization, and feature selection. Results revealed a dual burden of malnutrition, with stunning proportion being 25.3% and overweightness proportion being 8.6%, and regional disparities indicating higher proportions in rural areas and provinces such as Aceh and South Kalimantan. Analysis of feature importance identified weight-for-age, parental education, household income, and access to clean water as key predictors of health outcomes. The model had peak performance for children aged 6-10 years. These findings highlight the strength of ML to improve health surveillance, inform targeted nutritional interventions, and enhance evidence-based policymaking. The framework provides actionable insights for enhancing national initiatives, such as BANGGA Kencana, so that family planning efforts are aligned with overall child health targets. Future studies should focus on improving data quality for rural environments, adding environmental and dietary factors into models, and exploring advanced ensemble models for higher generalizability and applicability to policy.
Keywords: Child Malnutrition; Family Planning; Machine Learning; Predictive Modeling.
Status
Tersedia di OPAC Bibliografi Nasional Indonesia Karya Tulis Ilmiah Nasional
Informasi Eksemplar & Metadata
Format MARC21 - Total 17 field
Tag Ind1 Ind2 Nilai Urutan
001 _ _ INLIS000000000004498 1
005 _ _ 20250724104018 2
035 # # $a 0010-0725000309 3
007 _ _ ta 4
008 _ _ 250724###########################0#eng## 5
020 # # $a 2503-3379 6
082 # # $a 362.198 92 7
084 # # $a 362.198 92 MUH j 8
100 _ # $a Muhammad Firmansyah¹ 9
245 1 # $a Jurnal Keluarga Berencana MACHINE LEARNING FOR CHILD MALNUTRITION PREDICTION IN INDONESIA /$c Muhammad Firmansyah¹, Lalu Kekah Budi Prasetya², Nurul Adi Prawira³ 10
250 # # $a Vol. 10 No. 1 Tahun 2025 11
260 # # $a Jakarta :$b KEMENTERIAN KEPENDUDUKAN DAN PEMBANGUNAN KELUARGA/BKKBN,$c 2025 12
300 # # $a 13 hlm : $b - ; $c 29 cm 13
700 _ # $a Lalu Kekah Budi Prasetya² 14
700 _ # $a Nurul Adi Prawira³ 15
520 # # $a This study utilizes machine learning (ML) methods to predict malnutrition among children in Indonesia. It adopts a family-centered perspective, leveraging large datasets from WHO, UNICEF, and the Global Nutrition Report. A 100,000-strong stratified sample of children aged 0-18 was examined, incorporating a set of anthropometric, socioeconomic, and demographic factors. Preprocessing of data included imputation, normalization, and feature selection. Results revealed a dual burden of malnutrition, with stunning proportion being 25.3% and overweightness proportion being 8.6%, and regional disparities indicating higher proportions in rural areas and provinces such as Aceh and South Kalimantan. Analysis of feature importance identified weight-for-age, parental education, household income, and access to clean water as key predictors of health outcomes. The model had peak performance for children aged 6-10 years. These findings highlight the strength of ML to improve health surveillance, inform targeted nutritional interventions, and enhance evidence-based policymaking. The framework provides actionable insights for enhancing national initiatives, such as BANGGA Kencana, so that family planning efforts are aligned with overall child health targets. Future studies should focus on improving data quality for rural environments, adding environmental and dietary factors into models, and exploring advanced ensemble models for higher generalizability and applicability to policy. Keywords: Child Malnutrition; Family Planning; Machine Learning; Predictive Modeling. 16
856 # # $a Perpustakaan KEMENDUKBANGGA/BKKBN 17
Penjelasan Field MARC21:
  • 001: Control Number
  • 005: Date and Time of Latest Transaction
  • 020: ISBN
  • 100: Main Entry - Personal Name
  • 245: Title Statement
  • 250: Edition Statement
  • 260: Publication Information
  • 300: Physical Description
  • 650: Subject
  • 700: Added Entry - Personal Name