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  1.  21
    Beta-Hebbian Learning to enhance unsupervised exploratory visualizations of Android malware families.Nuño Basurto, Diego García-Prieto, Héctor Quintián, Daniel Urda, José Luis Calvo-Rolle & Emilio Corchado - 2024 - Logic Journal of the IGPL 32 (2):306-320.
    As it is well known, mobile phones have become a basic gadget for any individual that usually stores sensitive information. This mainly motivates the increase in the number of attacks aimed at jeopardizing smartphones, being an extreme concern above all on Android OS, which is the most popular platform in the market. Consequently, a strong effort has been devoted for mitigating mentioned incidents in recent years, even though few researchers have addressed the application of visualization techniques for the analysis of (...)
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    A hybrid machine learning system to impute and classify a component-based robot.Nuño Basurto, Ángel Arroyo, Carlos Cambra & Álvaro Herrero - 2023 - Logic Journal of the IGPL 31 (2):338-351.
    In the field of cybernetic systems and more specifically in robotics, one of the fundamental objectives is the detection of anomalies in order to minimize loss of time. Following this idea, this paper proposes the implementation of a Hybrid Intelligent System in four steps to impute the missing values, by combining clustering and regression techniques, followed by balancing and classification tasks. This system applies regression models to each one of the clusters built on the instances of data set. Subsequently, a (...)
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  3.  19
    Delving into Android Malware Families with a Novel Neural Projection Method.Rafael Vega Vega, Héctor Quintián, Carlos Cambra, Nuño Basurto, Álvaro Herrero & José Luis Calvo-Rolle - 2019 - Complexity 2019:1-10.
    Present research proposes the application of unsupervised and supervised machine-learning techniques to characterize Android malware families. More precisely, a novel unsupervised neural-projection method for dimensionality-reduction, namely, Beta Hebbian Learning, is applied to visually analyze such malware. Additionally, well-known supervised Decision Trees are also applied for the first time in order to improve characterization of such families and compare the original features that are identified as the most important ones. The proposed techniques are validated when facing real-life Android malware data by (...)
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