TY - JOUR KW - Content Modeling KW - Learning Analytics KW - Simulated Students KW - Smart Content AU - Alberto Jiménez Macías AU - Pedro J. Muñoz Merino AU - Carlos Delgado Kloos AB - Students’ interactions with exercises can reveal interesting features that can be used to redesign or effectively use the exercises during the learning process. The precise modeling of exercises includes how grades can evolve, depending on the number of attempts and time spent on the exercises. A missing aspect is how a precise relationship among grades, number of attempts, and time spent can be inferred from student interactions with exercises using machine learning methods, and how it differs depending on different factors. In this study, we analyzed the application of different machine-learning methods for modeling different scenarios by varying the probability of answering correctly, dataset sizes, and distributions. The results show that the model converged when the probability of random guessing was low. For exercises with an average of 2 attempts, the model converged to 200 interactions. However, increasing the number of interactions beyond 200 does not affect the accuracy of the model. IS - In press M1 - In press N2 - Students’ interactions with exercises can reveal interesting features that can be used to redesign or effectively use the exercises during the learning process. The precise modeling of exercises includes how grades can evolve, depending on the number of attempts and time spent on the exercises. A missing aspect is how a precise relationship among grades, number of attempts, and time spent can be inferred from student interactions with exercises using machine learning methods, and how it differs depending on different factors. In this study, we analyzed the application of different machine-learning methods for modeling different scenarios by varying the probability of answering correctly, dataset sizes, and distributions. The results show that the model converged when the probability of random guessing was low. For exercises with an average of 2 attempts, the model converged to 200 interactions. However, increasing the number of interactions beyond 200 does not affect the accuracy of the model. PY - 9998 SE - 1 SP - 1 EP - 14 T2 - International Journal of Interactive Multimedia and Artificial Intelligence TI - Simulations for the Precise Modeling of Exercises Including Time, Grades and Number of Attempts UR - https://www.ijimai.org/journal/bibcite/reference/3496 VL - In press SN - 1989-1660 ER -