Transforming Data into Information: Overcoming Challenges in Educational Data Analysis

da Silva, Natalia

Resumen:

The use of different Learning Management Systems (LMS) for various objectives has become a key tool in education. A huge volume of student and teacher data is generated by LMS on a daily basis. Transforming this data into relevant information for decision-making is a major challenge due to the complexity of the data structure and the difficulty of summarizing the learning process with registered information. This talk focuses on statistical tools for the evaluation and monitoring of LMS use by students and teachers. First, a web application was developed as a tool that allows monitoring the use of educational platforms in a user-friendly manner. Additionally, statistical learning methods were used to predict students' performance in tests using LMS information as predictors. Challenges such as data structure and size present many hurdles in this project. Most of these challenges are addressed using efficient computational tools at each stage of data analysis. Postgres serves as the SQL engine, data.table is used for data wrangling, and shiny, plotly, and ggplot2 are employed for communication and visualization. Finally, tidymodels and dbart are utilized for predictive models.


Detalles Bibliográficos
2024
ANII
Fundación Ceibal
Learning management Systems, monitor use in LMS, statistical learning methods to predict students' performance
Ciencias Naturales y Exactas
Matemáticas
Estadística y Probabilidad
Inglés
Fundación Ceibal
Ceibal en REDI
https://hdl.handle.net/20.500.12381/3551
Acceso abierto
Reconocimiento-NoComercial 4.0 Internacional. (CC BY-NC)
Resumen:
Sumario:The use of different Learning Management Systems (LMS) for various objectives has become a key tool in education. A huge volume of student and teacher data is generated by LMS on a daily basis. Transforming this data into relevant information for decision-making is a major challenge due to the complexity of the data structure and the difficulty of summarizing the learning process with registered information. This talk focuses on statistical tools for the evaluation and monitoring of LMS use by students and teachers. First, a web application was developed as a tool that allows monitoring the use of educational platforms in a user-friendly manner. Additionally, statistical learning methods were used to predict students' performance in tests using LMS information as predictors. Challenges such as data structure and size present many hurdles in this project. Most of these challenges are addressed using efficient computational tools at each stage of data analysis. Postgres serves as the SQL engine, data.table is used for data wrangling, and shiny, plotly, and ggplot2 are employed for communication and visualization. Finally, tidymodels and dbart are utilized for predictive models.