A Recurrent Neural Network based Clustering Method for Binary Data Sets in Education
Machine Learning
2025-08-20 v1 Computers and Society
Abstract
This paper studies an application of a recurrent neural network to clustering method for the S-P chart: a binary data set used widely in education. As the number of students increases, the S-P chart becomes hard to handle. In order to classify the large chart into smaller charts, we present a simple clustering method based on the network dynamics. In the method, the network has multiple fixed points and basins of attraction give clusters corresponding to small S-P charts. In order to evaluate the clustering performance, we present an important feature quantity: average caution index that characterizes singularity of students answer oatterns. Performing fundamental experiments, effectiveness of the method is confirmed.
Cite
@article{arxiv.2508.13224,
title = {A Recurrent Neural Network based Clustering Method for Binary Data Sets in Education},
author = {Mizuki Ohira and Toshimichi Saito},
journal= {arXiv preprint arXiv:2508.13224},
year = {2025}
}