Abstract
A model is a physical, conceptual, or mathematical representation of a real phenomenon. Scientific models are used to explain and predict the behavior of real objects or systems and are applied in a variety of scientific disciplines (Sampieri et al. in Metodologia de la Investigación. McGraw-Hill Inc. 2006, [1]). The objectives of a model include three aspects: (1) to facilitate understanding by eliminating unnecessary components; (2) to aid in decision-making by simulating what-if scenarios; and (3) founded on past observations, to explain, control, and predict events.
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Jiménez, S., Juárez-Ramírez, R., Castillo, V.H., Tapia Armenta, J.J. (2018). A Model for Providing Affective Feedback. In: Affective Feedback in Intelligent Tutoring Systems. Human–Computer Interaction Series(). Springer, Cham. https://doi.org/10.1007/978-3-319-93197-5_3
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