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    • Revista IJIMAI
    • 2026
    • vol. 9, nº 6, march 2026
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    AI Prediction and Teaching Strategies for a Two-Phase Engine in a Smart Learning Platform

    Autor: 
    Real-Fernández, Alberto
    ;
    García-Sigüenza, Javier
    ;
    Llorens-Largo, Faraón
    ;
    Molina-Carmona, Rafael
    Fecha: 
    26/03/2026
    Palabra clave: 
    artificial intelligence; explainable AI; instructional strategies; smart learning
    Revista / editorial: 
    UNIR
    Citación: 
    A. Real-Fernández, J. García-Sigüenza, R. Molina-Carmona, F. Llorens-Largo. AI prediction and Teaching Strategies for a Two-Phase Engine in a Smart Learning Platform, International Journal of Interactive Multimedia and Artificial Intelligence, vol. 9, no. 6, pp. 76-85, 2026, http://doi.org/10.9781/ijimai.2026.6348KeywordsArtificial Intelligence, Explainable AI, Instructional Strategies, Smart Learning.AbstractThe impact and progress of Information Technologies has led to a process of change in most environments of our society, specially education. Even more with the current rise of Artificial Intelligence, what has led to the creation of different new tools aiming to improve the learning experience.This fact has contributed to the creation of systems that aim to adapt the learning process to each individual learner and offer them a personalised experience. The problem of letting automated systems manage the whole learning process is the lack of human factor, but learning objectives and teacher criteria are crucial. That is why this research proposes a solution that combines the potential of AI without neglecting the teacher decision. Concretely, the proposal is an AI model that selects the most suitable activity to each learner. To do so, this proposed model is structured in two phases. The first is the prediction phase, in which the model predicts the score a learner will obtain and the time they will spend to complete an activity. Then, in the second phase, the selection of a single activity is done by means of instructional strategies. These strategies are based on the previously obtained metrics and establish the criteria to follow for selecting activities. The selected strategy is always set by the teacher, who will guide the learners through the process. With this model, this research proposes a combination of AI techniques with human decision-making. Instead of relying the learning process to an automated engine, it includes the teacher as the one to guide the AI by making the last decision.DOI: 10.9781/ijimai.2026.6348AI Prediction and Teaching Strategies for a Two-PhaseEngine in a Smart Learning PlatformAlberto Real-Fernández1, Javier García-Sigüenza1,2, Faraón Llorens-Largo1, Rafael Molina-Carmona1 *1 Smart Learning Research Group, University of Alicante (Spain) 2 ValgrAI - Valencian Graduate School and Research Network for Artificial Intelligence (Spain)* Corresponding author: alberto.real@ua.es (A. Real-Fernández), javierg.siguenza@ua.es (J. García-Sigüenza), rmolina@ua.es (R. Molina-Carmona), faraon.llorens@ua.es (F. Llorens-Largo).Received 5 March 2024 | Accepted 4 March 2025 | Published 29 January 2026I. IntroductionIn recent years, the impact and growing progress of Information Technologies (IT) has led to a process of change in most environments of our society. Even more with the current rise of Artificial Intelligence (AI). Specifically, education is one of the most affected, where many new tools and technologies have emerged. With the aim of improving the learning experience, this technology has turned education into a process to fulfill the new characteristics and needs of our current environment [1]–[3]. It is a digital transformation towards a continuous, dynamic and lifelong learning, different from the one we knew [4], [5].Since in the learning process we can observe that each learner has different styles, needs and preferences, it is important to focus this transformation process on a learning model that can adapt to each individual and offer them a personalised experience [6], [7]. It is a concept known as smart learning, and it has been enhanced by the power of IT, particularly AI, which has contributed to the creation of algorithms and methodologies that aim to adapt the learning process to each student and their own way of learning.In general terms, these are algorithms that are able to assign the most appropriate activity to a learner at any given time. This choice is made according to the learner’s own characteristics and aiming to keep them motivated. But it is crucial to consider the learning objectives set by the teacher when using this type of technology in the learning process.It is for these types of problems that Explainable Artificial Intelligence (XAI) is emerging as a field of research and development of modern AI systems, addressing the transparency, interpretability and trustworthiness of these systems [8]. As artificial intelligence permeates our lives, the ability to understand and trust AI-generated decisions becomes paramount.In addition, the fact that those automated and autonomous learning systems assume all the learning process by themselves can lead to a change in the socialization and interaction of the learners [9]. Thus, educational technology should be developed by those principles that
    Tipo de Ítem: 
    article
    URI: 
    https://reunir.unir.net/handle/123456789/19148
    DOI: 
    https://doi.org/10.9781/ijimai.2026.6348
    Dirección web: 
    https://www.ijimai.org/index.php/ijimai/article/view/6348
    Open Access
    Resumen:
    The impact and progress of Information Technologies has led to a process of change in most environments of our society, specially education. Even more with the current rise of Artificial Intelligence, what has led to the creation of different new tools aiming to improve the learning experience. This fact has contributed to the creation of systems that aim to adapt the learning process to each individual learner and offer them a personalised experience. The problem of letting automated systems manage the whole learning process is the lack of human factor, but learning objectives and teacher criteria are crucial. That is why this research proposes a solution that combines the potential of AI without neglecting the teacher decision. Concretely, the proposal is an AI model that selects the most suitable activity to each learner. To do so, this proposed model is structured in two phases. The first is the prediction phase, in which the model predicts the score a learner will obtain and the time they will spend to complete an activity. Then, in the second phase, the selection of a single activity is done by means of instructional strategies. These strategies are based on the previously obtained metrics and establish the criteria to follow for selecting activities. The selected strategy is always set by the teacher, who will guide the learners through the process. With this model, this research proposes a combination of AI techniques with human decision-making. Instead of relying the learning process to an automated engine, it includes the teacher as the one to guide the AI by making the last decision.
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