The teacher needs to know the learner's progress so that he/she can improve her/his teaching strategy. The initial challenges faced by the teachers are including the need to monitor each learner's progress so that their needs and difficulties can be recognized as a guide for enhancing learning strategies. One way to solve these problems is to predict student's progress. Mathematics in elementary school is one of the subjects with a high failure rate of learners. In this study, the progress of learners was predicted using Random Forest based on classification using similarity characteristics of learners obtained from the results of previous formative assessment. The random forest algorithm was used because it can classify data that has incomplete attributes, which are usually contained in learner characteristics. Prediction models are built based on data of assessment results from 2 math classes with 46 students in elementary school. The resulting model performance will be measured using accuracy and recall because False Positive is better than False Negative so learning progress will always be improved. The results show that the Random Forest algorithm can create a learning progress prediction model with an accuracy of 90% in training data and 93% in testing data.
Skip Nav Destination
,
,
Article navigation
2 April 2021
THE 2ND SCIENCE AND MATHEMATICS INTERNATIONAL CONFERENCE (SMIC 2020): Transforming Research and Education of Science and Mathematics in the Digital Age
8–9 August 2020
Jakarta, Indonesia
Research Article|
April 02 2021
Monitoring online learners’ performance based on learning progress prediction Available to Purchase
Ria Arafiyah;
Ria Arafiyah
a)
1
Faculty of Computer Science, University of Indonesia
, Indonesia
2
Computer Science Department, Universitas Negeri Jakarta
, Rawamangun, Indonesia
a)Corresponding Author: [email protected]
Search for other works by this author on:
Zainal A. Hasibuan;
Zainal A. Hasibuan
1
Faculty of Computer Science, University of Indonesia
, Indonesia
Search for other works by this author on:
Harry Budi Santoso
Harry Budi Santoso
b)
1
Faculty of Computer Science, University of Indonesia
, Indonesia
Search for other works by this author on:
Ria Arafiyah
1,2,a)
Zainal A. Hasibuan
1
Harry Budi Santoso
1,b)
1
Faculty of Computer Science, University of Indonesia
, Indonesia
2
Computer Science Department, Universitas Negeri Jakarta
, Rawamangun, Indonesia
a)Corresponding Author: [email protected]
AIP Conf. Proc. 2331, 060012 (2021)
Citation
Ria Arafiyah, Zainal A. Hasibuan, Harry Budi Santoso; Monitoring online learners’ performance based on learning progress prediction. AIP Conf. Proc. 2 April 2021; 2331 (1): 060012. https://doi.org/10.1063/5.0042841
Download citation file:
Pay-Per-View Access
$40.00
Sign In
You could not be signed in. Please check your credentials and make sure you have an active account and try again.
220
Views
Citing articles via
The implementation of reflective assessment using Gibbs’ reflective cycle in assessing students’ writing skill
Lala Nurlatifah, Pupung Purnawarman, et al.
Effect of coupling agent type on the self-cleaning and anti-reflective behaviour of advance nanocoating for PV panels application
Taha Tareq Mohammed, Hadia Kadhim Judran, et al.
Classification data mining with Laplacian Smoothing on Naïve Bayes method
Ananda P. Noto, Dewi R. S. Saputro
Related Content
The influence of interest in learning mathematics on mathematics learning achievement of junior high school students in Papua
AIP Conf. Proc. (August 2023)
Identifying factors that influence students’ performance through multiple linear model
AIP Conf. Proc. (March 2024)
Product development of mechanical practice: Augmented reality (AR) approach
AIP Conf. Proc. (July 2019)
Parametric control in macroeconomic policy
AIP Conf. Proc. (October 2018)