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Publicações

Publicações por Catarina Félix Oliveira

2020

Predicting students' performance using survey data

Autores
Félix, C; Sobral, SR;

Publicação
2020 IEEE Global Engineering Education Conference, EDUCON 2020, Porto, Portugal, April 27-30, 2020

Abstract

2020

Predicting students' performance using survey data

Autores
Felix, C; Sobral, SR;

Publicação
PROCEEDINGS OF THE 2020 IEEE GLOBAL ENGINEERING EDUCATION CONFERENCE (EDUCON 2020)

Abstract
The acquisition of competences for the development of computer programs is one of the main challenges faced by computer science students. As a result of not being able to develop the abilities needed (for example, abstraction), students drop out the subjects and sometimes even the course. There is a need to study the causes of student success (or failure) in introductory curricular units to check for behaviours or characteristics that may be determinant and thus try to prevent and change said causes. The students of one programming curricular unit were invited to answer four surveys. We use machine learning techniques to try to predict the students' grades based on the answers obtained on the surveys. The results obtained enable us to plan the semester accordingly, by anticipating how many students might need extra support. We hope to increase the students' motivation and, with this, increase their interest on the subject. This way we aim to accomplish our ultimate goal: reducing the drop out and increasing the overall average student performance.

2021

PREDICTING STUDENTS’ PERFORMANCE IN INTRODUCTORY PROGRAMMING COURSES: A LITERATURE REVIEW

Autores
Sobral, S; Oliveira, C;

Publicação
INTED2021 Proceedings

Abstract

2021

How Does Learning Analytics Contribute to Prevent Students' Dropout in Higher Education: A Systematic Literature Review

Autores
de Oliveira, CF; Sobral, SR; Ferreira, MJ; Moreira, F;

Publicação
BIG DATA AND COGNITIVE COMPUTING

Abstract
Retention and dropout of higher education students is a subject that must be analysed carefully. Learning analytics can be used to help prevent failure cases. The purpose of this paper is to analyse the scientific production in this area in higher education in journals indexed in Clarivate Analytics' Web of Science and Elsevier's Scopus. We use a bibliometric and systematic study to obtain deep knowledge of the referred scientific production. The information gathered allows us to perceive where, how, and in what ways learning analytics has been used in the latest years. By analysing studies performed all over the world, we identify what kinds of data and techniques are used to approach the subject. We propose a feature classification into several categories and subcategories, regarding student and external features. Student features can be seen as personal or academic data, while external factors include information about the university, environment, and support offered to the students. To approach the problems, authors successfully use data mining applied to the identified educational data. We also identify some other concerns, such as privacy issues, that need to be considered in the studies.

2019

Metalearning for multiple-domain Transfer Learning

Autores
de Oliveira, CF;

Publicação

Abstract

2010

An integrated system for submission, assessment, feedback and publication of online digital portfolios

Autores
Figueira, A; Felix, C; Ferreira, C;

Publicação
Proceedings of the 8th IASTED International Conference on Web-Based Education, WBE 2010

Abstract
Digital portfolios have recently assumed an increasing importance in e-learning. In this article we report an integrated system that can be used to publish online projects undertaken by students during their courses. The system was then integrated with the Moodle learning management system featuring the possibility to create, evaluate, publish and maintain digital portfolios assigned and corrected by the institution faculty. This integrated process ensures a high quality level of the projects registered. The system uses information imported from Moodle's database to fill in its own database for users, courses and propagates the existing session between the two systems. It also maintains the projects in specific development phases, thus, allowing asynchronous editing, assessing or commenting on projects by different students or teachers. The creation of a new project is boosted by the use of a set of pre-defined templates which in turn give a standard layout and design quality to the final view of the project.

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