Treffer: Deep Learning for the Detection of Acquired and Non-Acquired Skills in Students' Algorithmic Assessments

Title:
Deep Learning for the Detection of Acquired and Non-Acquired Skills in Students' Algorithmic Assessments
Language:
English
Authors:
Carvalho, Floran (ORCID 0000-0001-8671-9830), Henriet, Julien (ORCID 0000-0002-7671-4574), Greffier, Francoise (ORCID 0000-0003-1285-5842), Betbeder, Marie-Laure (ORCID 0000-0002-8103-4098), Leon-Henri, Dana (ORCID 0000-0001-6196-6173)
Source:
Journal of Education and e-Learning Research. 2023 10(2):111-118.
Availability:
Asian Online Journal Publishing Group. 244 Fifth Avenue Suite D42, New York, NY 10001. Fax: 212-591-6094; e-mail: info@asianonlinejournals.com; Web site: http://www.asianonlinejournals.com
Peer Reviewed:
Y
Page Count:
8
Publication Date:
2023
Document Type:
Fachzeitschrift Journal Articles<br />Reports - Research
ISSN:
2518-0169
2410-9991
Entry Date:
2023
Accession Number:
EJ1396253
Database:
ERIC

Weitere Informationen

This research is part of the Artificial Intelligence Virtual Trainer (AI-VT) project which aims to create a system that can identify the user's skills from a text by means of machine learning. AI-VT is a case-based reasoning learning support system can generate customized exercise lists that are specially adapted to user needs. To attain this outcome, the relevance of the first proposed exercise must be optimized to assist the system in creating personalized user profiles. To solve this problem, this project was designed to include a preliminary testing phase. As a generic tool, AI-VT was designed to be adapted to any field of learning. The most recent application of AI-VT was in the field of computer science specifically in the context of the fundamentals of algorithmic learning. AI-VT can and will also be useful in other disciplines. Developed in Python with the Keras API and the Tensorflow framework, this artificial intelligence-based tool encompasses a supervised learning environment, multi-label text classification techniques and deep neural networks. This paper presents and compares the performance levels of the different models tested on two different data sets in the context of computer programming and algorithms.

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