Stunting Early Warning Application Using KNN Machine Learning Method

Stunting in toddlers is defined as a condition of failure to thrive due to chronic malnutrition in the long term. The problem of stunting in Indonesia is an issue that is still a concern for the Indonesian government. The prevalence of stunting in Indonesia is still quite high, coupled with the COVI...

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Main Authors: Nani Purwati, Gunawan Budi Sulistyo
Format: Article
Language:English
Published: Kresnamedia Publisher 2023-06-01
Series:Jurnal Riset Informatika
Subjects:
Online Access:https://ejournal.kresnamediapublisher.com/index.php/jri/article/view/550
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author Nani Purwati
Gunawan Budi Sulistyo
author_facet Nani Purwati
Gunawan Budi Sulistyo
author_sort Nani Purwati
collection DOAJ
description Stunting in toddlers is defined as a condition of failure to thrive due to chronic malnutrition in the long term. The problem of stunting in Indonesia is an issue that is still a concern for the Indonesian government. The prevalence of stunting in Indonesia is still quite high, coupled with the COVID-19 pandemic which has had quite an impact on the economic sector. For this reason, research on stunting is still a very important topic. This study aims to classify toddler stunting using the k-Nearest Neighbor classification algorithm, as well as build a website-based early detection application for stunting toddler cases using the CodeIgniter framework with the PHP programming language. The results of the research using the k-Nearest Neighbor Algorithm trial obtained a fairly high accuracy of 92.45%. The implementation of an early detection system for stunting cases has proven to help and facilitate health workers in classifying toddlers as stunted or not. This application is also useful as an archive and facilitates data reporting. In the application there are 8 main menus, namely the Puskesmas data menu, Posyandu data, toddler data, weighing, weighing results, development menu, stunting early warning menu which contains malnourished toddlers, stunted toddlers.
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spelling doaj.art-54b17cc0fc5d40b19de00d93a33f10072023-09-11T04:17:56ZengKresnamedia PublisherJurnal Riset Informatika2656-17432656-17352023-06-015337337810.34288/jri.v5i3.550550Stunting Early Warning Application Using KNN Machine Learning MethodNani Purwati0Gunawan Budi Sulistyo1Universitas Bina Sarana InformatikaUniversitas Bina Sarana InformatikaStunting in toddlers is defined as a condition of failure to thrive due to chronic malnutrition in the long term. The problem of stunting in Indonesia is an issue that is still a concern for the Indonesian government. The prevalence of stunting in Indonesia is still quite high, coupled with the COVID-19 pandemic which has had quite an impact on the economic sector. For this reason, research on stunting is still a very important topic. This study aims to classify toddler stunting using the k-Nearest Neighbor classification algorithm, as well as build a website-based early detection application for stunting toddler cases using the CodeIgniter framework with the PHP programming language. The results of the research using the k-Nearest Neighbor Algorithm trial obtained a fairly high accuracy of 92.45%. The implementation of an early detection system for stunting cases has proven to help and facilitate health workers in classifying toddlers as stunted or not. This application is also useful as an archive and facilitates data reporting. In the application there are 8 main menus, namely the Puskesmas data menu, Posyandu data, toddler data, weighing, weighing results, development menu, stunting early warning menu which contains malnourished toddlers, stunted toddlers.https://ejournal.kresnamediapublisher.com/index.php/jri/article/view/550early warning applicationk-nn methodclassificationstunting
spellingShingle Nani Purwati
Gunawan Budi Sulistyo
Stunting Early Warning Application Using KNN Machine Learning Method
Jurnal Riset Informatika
early warning application
k-nn method
classification
stunting
title Stunting Early Warning Application Using KNN Machine Learning Method
title_full Stunting Early Warning Application Using KNN Machine Learning Method
title_fullStr Stunting Early Warning Application Using KNN Machine Learning Method
title_full_unstemmed Stunting Early Warning Application Using KNN Machine Learning Method
title_short Stunting Early Warning Application Using KNN Machine Learning Method
title_sort stunting early warning application using knn machine learning method
topic early warning application
k-nn method
classification
stunting
url https://ejournal.kresnamediapublisher.com/index.php/jri/article/view/550
work_keys_str_mv AT nanipurwati stuntingearlywarningapplicationusingknnmachinelearningmethod
AT gunawanbudisulistyo stuntingearlywarningapplicationusingknnmachinelearningmethod