Optimizing the certainty factor on k-nearest neighbor to determine the learning model during the pandemic

In the pandemic era, the lecture must use an online class, not an offline class. The online course has a significant problem in learning because students must adapt to model learning their lesson, students have their education, and teachers have their style. So it will happen throughout the pandemic...

Full description

Saved in:
Bibliographic Details
Main Authors: S. Sunarti, S. Sunarti, Wahyono, Irawan Dwi, Putranto, Hari, Saryono, Djoko, Bukhori, Herri Akhmad, Widyatmoko, Tiksno, Rosli, Mohd. Shafie, A. Shukor, Nurbiha, Abdul Halim, Noor Dayana
Format: Conference or Workshop Item
Published: 2022
Subjects:
Online Access:http://eprints.utm.my/id/eprint/98774/
http://dx.doi.org/10.1109/ICVEE57061.2022.9930420
Tags: Add Tag
No Tags, Be the first to tag this record!
Institution: Universiti Teknologi Malaysia
id my.utm.98774
record_format eprints
spelling my.utm.987742023-02-02T08:39:23Z http://eprints.utm.my/id/eprint/98774/ Optimizing the certainty factor on k-nearest neighbor to determine the learning model during the pandemic S. Sunarti, S. Sunarti Wahyono, Irawan Dwi Putranto, Hari Saryono, Djoko Bukhori, Herri Akhmad Widyatmoko, Tiksno Rosli, Mohd. Shafie A. Shukor, Nurbiha Abdul Halim, Noor Dayana LB Theory and practice of education In the pandemic era, the lecture must use an online class, not an offline class. The online course has a significant problem in learning because students must adapt to model learning their lesson, students have their education, and teachers have their style. So it will happen throughout the pandemic era. It is a big problem in learning. At the end of the semester, the student usually gives feedback for their lecture on what kind of model they want. The data of feedback is put in a database online learning. The data can be used to know what students need and what course must choose a model for online learning. This research is applied to determine the kind of model learning suitable for students in the pandemic era. The determination process uses a k-nn algorithm that classifies all parameters and data and makes decisions based on all parameters and data. The data in this research is from database learning Universitas Negeri Malang and data feedback from students. All data is processed and calculated by k-nn. This application has a maximum accuracy of 88.37% in testing the variation of the k value, with \mathrmk=3,\ \mathrmk=5, and \mathrmk=8. 2022 Conference or Workshop Item PeerReviewed S. Sunarti, S. Sunarti and Wahyono, Irawan Dwi and Putranto, Hari and Saryono, Djoko and Bukhori, Herri Akhmad and Widyatmoko, Tiksno and Rosli, Mohd. Shafie and A. Shukor, Nurbiha and Abdul Halim, Noor Dayana (2022) Optimizing the certainty factor on k-nearest neighbor to determine the learning model during the pandemic. In: 5th International Conference on Vocational Education and Electrical Engineering, ICVEE 2022, 10 - 11 September 2022, Virtual, Surabaya. http://dx.doi.org/10.1109/ICVEE57061.2022.9930420
institution Universiti Teknologi Malaysia
building UTM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Malaysia
content_source UTM Institutional Repository
url_provider http://eprints.utm.my/
topic LB Theory and practice of education
spellingShingle LB Theory and practice of education
S. Sunarti, S. Sunarti
Wahyono, Irawan Dwi
Putranto, Hari
Saryono, Djoko
Bukhori, Herri Akhmad
Widyatmoko, Tiksno
Rosli, Mohd. Shafie
A. Shukor, Nurbiha
Abdul Halim, Noor Dayana
Optimizing the certainty factor on k-nearest neighbor to determine the learning model during the pandemic
description In the pandemic era, the lecture must use an online class, not an offline class. The online course has a significant problem in learning because students must adapt to model learning their lesson, students have their education, and teachers have their style. So it will happen throughout the pandemic era. It is a big problem in learning. At the end of the semester, the student usually gives feedback for their lecture on what kind of model they want. The data of feedback is put in a database online learning. The data can be used to know what students need and what course must choose a model for online learning. This research is applied to determine the kind of model learning suitable for students in the pandemic era. The determination process uses a k-nn algorithm that classifies all parameters and data and makes decisions based on all parameters and data. The data in this research is from database learning Universitas Negeri Malang and data feedback from students. All data is processed and calculated by k-nn. This application has a maximum accuracy of 88.37% in testing the variation of the k value, with \mathrmk=3,\ \mathrmk=5, and \mathrmk=8.
format Conference or Workshop Item
author S. Sunarti, S. Sunarti
Wahyono, Irawan Dwi
Putranto, Hari
Saryono, Djoko
Bukhori, Herri Akhmad
Widyatmoko, Tiksno
Rosli, Mohd. Shafie
A. Shukor, Nurbiha
Abdul Halim, Noor Dayana
author_facet S. Sunarti, S. Sunarti
Wahyono, Irawan Dwi
Putranto, Hari
Saryono, Djoko
Bukhori, Herri Akhmad
Widyatmoko, Tiksno
Rosli, Mohd. Shafie
A. Shukor, Nurbiha
Abdul Halim, Noor Dayana
author_sort S. Sunarti, S. Sunarti
title Optimizing the certainty factor on k-nearest neighbor to determine the learning model during the pandemic
title_short Optimizing the certainty factor on k-nearest neighbor to determine the learning model during the pandemic
title_full Optimizing the certainty factor on k-nearest neighbor to determine the learning model during the pandemic
title_fullStr Optimizing the certainty factor on k-nearest neighbor to determine the learning model during the pandemic
title_full_unstemmed Optimizing the certainty factor on k-nearest neighbor to determine the learning model during the pandemic
title_sort optimizing the certainty factor on k-nearest neighbor to determine the learning model during the pandemic
publishDate 2022
url http://eprints.utm.my/id/eprint/98774/
http://dx.doi.org/10.1109/ICVEE57061.2022.9930420
_version_ 1758578017703034880