6 research outputs found
Authoring with Retudisauth adaptive dialogues for text comprehension
AbstractIn this work is presented the process of authoring adaptive dialogues for informatics text comprehension using the authoring tool of ReTuDiS (Reflective Tutorial Dialogue System), which is based on text comprehension theories. Previous study resulted in student's profiles depending on their prior knowledge and students were given the appropriate text with text activities according to their profiles. Students organized text representations with different structure: relational, transformational and teleological. The purpose of this study is to design and test educational material of personalized dialogue activities for text comprehension appropriate for each student, depending on student's text representation. Dialogues are tested by groups of participating students before the authoring tool is used to incorporate the material in ReTuDiS. Feedback provided by the system, in the form of personalized dialogues, promotes reflection and is expected to help students improve their text comprehension skills. The system is accessible throughout the web and can be tested in real classroom conditions
An open learning environment for the diagnosis, assistance and evaluation of students based on artificial intelligence
The personalized diagnosis, assistance and evaluation of students in open learning environments can be a challenging task, especially in cases that the processes need to be taking place in real-time, classroom conditions. This paper describes the design of an open learning environment under development, designed to monitor the comprehension of students, assess their prior knowledge, build individual learner profiles, provide personalized assistance and, finally, evaluate their performance by using artificial intelligence. A trial test has been performed, with the participation of 20 students, which displayed promising results
Evaluation of an intelligent open learning system for engineering education
In computer-assisted education, the continuous monitoring and assessment of the learner is crucial for the delivery of personalized education to be effective. In this paper, we present a pilot application of the Student Diagnosis, Assistance, Evaluation System based on Artificial Intelligence (StuDiAsE), an open learning system for unattended student diagnosis, assistance and evaluation based on artificial intelligence. The system demonstrated in this paper has been designed with engineering students in mind and is capable of monitoring their comprehension, assessing their prior knowledge, building individual learner profiles, providing personalized assistance and, finally, evaluating a learner's performance both quantitatively and qualitatively by means of artificial intelligence techniques. The architecture and user interface of the system are being exhibited, the results and feedback received from a pilot application of the system within a theoretical engineering course are being demonstrated and the outcomes are being discussed
An Advanced eLearning Environment Developed for Engineering Learners
Monitoring and evaluating engineering learners through computer-based laboratory exercises is a difficult task, especially under classroom conditions. A complete diagnosis requires the capability to assess both the competence of the learner to use the scientific software and the understanding of the theoretical principles. This monitoring and evaluation needs to be continuous, unobtrusive and personalized in order to be effective. This study presents the results of the pilot application of an eLearning environment developed specifically with engineering learners in mind. As its name suggests, the Learner Diagnosis, Assistance, and Evaluation System based on Artificial Intelligence (StuDiAsE) is an Open Learning Environment that can perform unattended diagnostic, evaluation and feedback tasks based on both quantitative and qualitative parameters. The base architecture of the system, the user interface and its effect on the performance of postgraduate engineering learners are being presented