SciELO - Scientific Electronic Library Online

 
vol.13 número1Perspectives of teachers on causes of children's maladaptive behaviour in the upper primary school level: A case of Hhohho Region, EswatiniA snapshot of early childhood care and education in South Africa: Institutional offerings, challenges and recommendations índice de autoresíndice de materiabúsqueda de artículos
Home Pagelista alfabética de revistas  

Servicios Personalizados

Revista

Articulo

Indicadores

    Links relacionados

    • En proceso de indezaciónCitado por Google
    • En proceso de indezaciónSimilares en Google

    Compartir


    South African Journal of Childhood Education

    versión On-line ISSN 2223-7682versión impresa ISSN 2223-7674

    Resumen

    SELVAKUMAR, V.; VENKATA, Tilak Pakki; VENKATA, Teja Pakki  y  SINGH, Shubham. Predicting primary and middle-school students' preferences for online learning with machine learning. SAJCE [online]. 2023, vol.13, n.1, pp.1-6. ISSN 2223-7682.  https://doi.org/10.4102/sajce.v13i1.1324.

    BACKGROUND: The COVID-19 pandemic has brought attention to student psychological wellness. Because of isolation, lack of socialisation and intellectual and physical development from excessive media use, primary and secondary school students are at high risk for health problems AIM: This study aimed to identify the most effective machine learning model for predicting the offline and online instructional strategies students would choose during a pandemic SETTING: The study was carried out at a number of primary and middle schools in Hyderabad, India METHODS: We evaluated the data using machine learning methods such as logistic regression, K-nearest neighbour (KNN), decision trees, bagging and boosting using the Python programming language RESULTS: In this study, 414 instances were collected from different schools. Exploratory data analysis showed that few students chose online courses. According to the research, very few students choose online classes, and the majority of students favoured offline classes over online because of physical and mental health difficulties; online education effects include a lack of social and peer relationships that affects young children psychologically, and they may not be disciplined enough to resist internet diversions. Smartphones, laptops, etc., affect their vision, causing headaches and impaired eyesight CONCLUSION: The KNN was the most accurate machine learning algorithm, with 92.13% accuracy to fits the data to identify the preferences of online education CONTRIBUTION: This article examined the perspectives of primary and middle-school children on online education. Most students in this survey also reported experiencing mental or physical health issues that made online education difficult for them. Machine learning algorithms were applied to identify the most effective model for predicting students' online and offline study preferences. This machine learning method will help schools improve their course delivery methods, allowing students to continue their studies without interruption

    Palabras clave : online education; classification; logistics regression; bagging and boosting; K-nearest neighbours classifier.

            · texto en Inglés     · Inglés ( pdf )