4 research outputs found

    eXplainable Modeling (XM): Data Analysis for Intelligent Agents

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    Intelligent agents perform key tasks in several application domains by processing sensor data and taking actions that maximize reward functions based on internal models of the environment and the agent itself. In this paper we present eXplainable Modeling (XM), a Python software which supports data analysis for intelligent agents. XM enables to analyze state-models, namely models of the agent states, discovered from sensor traces by data-driven methods, and to interpret them for improved situation awareness. The main features of the tool are described through the analysis of a real case study concerning aquatic drones for water monitoring

    Law and medical ethics: in defense of reality

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    Gli autori prendono spunto da un editoriale precedente della medesima rivista per fornire spunti critici sull'assolutizzazione bioetica e biogiuridica del criterio dell'autodeterminazione individuale

    Exploiting Time Dynamics for One-Class and Open-Set Anomaly Detection

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    In this paper we describe and compare multiple one-class anomaly detection methods for Cyber-Physical Systems (CPS) that can be trained with data collected only during normal behaviors. We also consider the problem of detecting which group of sensors is most affected by the anomalous situation solving an open-set classification task. The proposed methods are domain independent and are based on a temporal analysis of data collected by the system. More specifically, we use different flavours of deep learning architectures, including recurrent neural networks (RNN), temporal convolutional networks (TCN), and autoencoders. Experimental results are conducted in three different scenarios with publicly available datasets: social robots, autonomous boats and water treatment plants (SWaT dataset). Quantitative results on these datasets show that our approach achieves comparable results with respect to state of the art approaches and promising results for open-set classification
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