insipid 发表于 2025-3-28 17:34:26
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Transparent Clustering with Cyclic Probabilistic Causal Modelsrototypes of clusters, formed by causal models, in accordance with the prototype theory of concepts, explored in cognitive science. In this work we describe the system of transparent analysis of such clasterization that bring the light to the interconnection between (1) set of objects with there chaMalleable 发表于 2025-3-29 06:57:51
Visualization and Self-Organising Maps for the Characterisation of Bank Clientssk. We propose a visualization tool—VaBank—to ease the analysis of banking transactions over time and enhance the detection of the transactions’ topology and suspicious behaviours. To reduce the visualization space, we apply a time matrix that aggregates the transactions by time and amount values. AIndigence 发表于 2025-3-29 08:00:19
Augmented Classical Self-organizing Map for Visualization of Discrete Data with Density Scalingan unsupervised analogue of the artificial neural network which preserves the topology of its input space. It efficiently summaries multidimensional data, but is difficult to visualize in a manner that is accessible to those trying to interpret it. The hSOM method improves upon the classical visuali异教徒 发表于 2025-3-29 14:19:13
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VisIRML: Visualization with an Interactive Information Retrieval and Machine Learning Classifierlearning (ML) classifier by labeling of sample articles facilitated via information retrieval (IR) query expansion—i.e. semi-supervised machine learning. The resulting classifier produces high quality labels better than comparable semi-supervised learning techniques. While multiple visualization app一夫一妻制 发表于 2025-3-29 19:48:38
Visual Analytics of Hierarchical and Network Timeseries Modelsnput, predicted, intermediate factors), model structure, model behavior, model sensitivity and model quality in one holistic application. We show examples ranging from simplistic prototypes of financial ratios, to nowcasting and economic forecasting, and massive transaction analysis. The approach isoverweight 发表于 2025-3-30 01:41:55
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Context-Aware Diagnosis in Smart Manufacturing: TAOISM, An Industry 4.0-Ready Visual Analytics Models, and dependencies. Consequently, complexity also rises with the vast amount of data. While acquiring data from all the involved systems and protocols remains challenging, the assessment and reasoning of information are complex for tasks like fault detection and diagnosis. Furthermore, through the