Implementationof KNNAlgorithm for Occupancy Classification of Rehabilitation Houses

Dublin Core

Title

Implementationof KNNAlgorithm for Occupancy Classification of Rehabilitation Houses

Subject

Data Mining, KNN, Classification, Rehabilitation, Occupancy Status, Merapi

Description

The 2010 eruption of Mount Merapi and the resulting rain lava in Central Java's Kab. Sleman DIY and Magelang Regency damaged homes and infrastructure. According to the Head of BNPB Regulation No. 5, the Community Rehabilitation and Reconstruction and Community-Based Settlement program plan is utilized to repair and rebuild properties damaged by the 2011 Merapi eruption. Two thousand five hundred sixteen residences that will stay in the area have been built permanently due tothis initiative. Occupancy rates (permanent occupancy) are used by the World Bank's Key Performance Indicators (KPI) to gauge a program's effectiveness. The database has information on how the software was used and proved successful. Databases, essential tools for introducing new data patterns and revealing previously hidden information, are used in data mining. This study applies the KNN algorithm to classify the house's occupancy status data after Mount Merapi's eruption. The accuracy results obtained from the classification of 82.03%, and the performance of the results through the AUC obtained a value of 0.935

Creator

Nurhadi Wijaya1,Joko Aryanto2, Kasmawaru Kasmawaru3, Anang Faktchur Rachman

Source

https://ijicom.respati.ac.id/index.php/ijicom/article/view/36/39

Date

December 2022

Contributor

Fajar bagus W

Format

PDF

Language

English

Type

Text

Files

Collection

Citation

Nurhadi Wijaya1,Joko Aryanto2, Kasmawaru Kasmawaru3, Anang Faktchur Rachman, “Implementationof KNNAlgorithm for Occupancy Classification of Rehabilitation Houses,” Repository Horizon University Indonesia, accessed April 4, 2025, https://repository.horizon.ac.id/items/show/8379.