ETD - UIR

Electronic Thesis and Dissertation

  • Home
  • Information
  • News
  • Help
  • Librarian
  • Member Area
    Member Login Online Registration
  • Select Language :
    Arabic Bengali Brazilian Portuguese English Espanol German Indonesian Japanese Malay Persian Russian Thai Turkish Urdu

Search by :

ALL Author Subject NPM Advanced Search

Last search:

{{tmpObj[k].text}}
Image of Perbandingan Metode Machine Learning dalam Klasifikasi Potensi Keluarga Berisiko Stunting pada Kecamatan Merbau
Bookmark Share

Text

Perbandingan Metode Machine Learning dalam Klasifikasi Potensi Keluarga Berisiko Stunting pada Kecamatan Merbau

Syarifah Kusuma Maharani - Personal Name; Arbi Haza Nasution - Personal Name;

Stunting is a condition where chronic malnutrition is caused by insufficient nutritional intake over a long period of time due to administration eating food that doesn't meet your needs. In Indonesia, according to the results of the Infant Nutrition Survey Indonesia (SSGBI) stunting prevalence will reach 21.6% in 2022. In this case, The family also participates in monitoring, checking the risk status of the family The risk of stunting still takes quite a long time because it is done routinely Manuals are also prone to inaccuracies. Therefore, to classify families with the potential for stunting can be done using a machine algorithm learning, namely K-Nearest Neighbor, Decision Tree, Naïve Bayes, and Random Forest. The dataset used was taken from 3 types of data, namely PK, KB and KPD data. Testing was carried out by applying the K-fold cross validation method for eliminate bias in the data. The highest accuracy results are in K-fold cross validation namely the Decision Tree algorithm gets a score of 99.76% with a precision of 99.73%, recall 99.58%, and f-1score 99.65%. In the Random Forest algorithm we get accuracy value 99.25%. Then the K-NN algorithm gets 92.42% and The lowest accuracy is the Naïve Bayes algorithm with a value of 41.69%. In research This algorithm that has the best performance is the Deep Decision Tree algorithm classifying families at risk of stunting in Merbau District


Availability
#
Teknik Informatika (Fakultas Teknik) Informatika 371.36 Sya p
241135
Available but not for loan - ETD
Detail Information
Call Number
Informatika 371.36 Sya p
Language
Indonesia
NPM
193510512
Publisher
Pekanbaru : Universitas Islam Riau., 2024
Keyword(s)
Metode
Decision Tree
Naive Bayes
machine learning
Classification
K-Nearest Neighbor
Random Forest
Other Information
Petugas
Uthi Kurnia
Other version/related

No other version available

File Attachment
  • Please login to see this attachment
Comments

You must be logged in to post a comment

ETD - UIR
  • Information
  • Services
  • Librarian
  • Member Area

About Us

As a complete Library Management System, SLiMS (Senayan Library Management System) has many features that will help libraries and librarians to do their job easily and quickly. Follow this link to show some features provided by SLiMS.

Search

start it by typing one or more keywords for title, author or subject

Keep SLiMS Alive Want to Contribute?

© 2026 — Senayan Developer Community

Powered by SLiMS
Select the topic you are interested in
  • Computer Science, Information & General Works
  • Philosophy & Psychology
  • Religion
  • Social Sciences
  • Language
  • Pure Science
  • Applied Sciences
  • Art & Recreation
  • Literature
  • History & Geography
Icons made by Freepik from www.flaticon.com
Advanced Search
Where do you want to share?