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David H. Hand

    David J. Hand est un auteur dont l'œuvre explore en profondeur les mathématiques et les statistiques, révélant l'omniprésence et l'impact surprenants de l'improbabilité dans nos vies. Son approche est analytique et systématique, examinant comment des événements apparemment incroyables suivent souvent des règles simples, bien que complexes. Le style d'écriture de Hand traduit des concepts statistiques complexes en récits captivants, permettant aux lecteurs d'apprécier les modèles mathématiques qui façonnent notre monde. Son écriture nous met au défi de considérer la probabilité et le hasard, démontrant comment l'improbabilité devient inévitable au sein de systèmes complexes.

    Advances in intelligent data analysis
    • 1999

      Advances in intelligent data analysis

      • 538pages
      • 19 heures de lecture

      Inhaltsverzeichnis Learning covers a range of methodologies and techniques for intelligent data analysis, including statistical measures and linguistic model design. It discusses a "Top-Down and Prune" induction scheme for decision committees and explores mining clusters with association rules. The text delves into evolutionary computation for identifying strongly correlated variables in high-dimensional time-series data and examines biases in decision tree pruning strategies. Feature selection and retrospective pruning in hierarchical clustering are also addressed, alongside the discriminative power of input features in fuzzy models. Visualization techniques include monitoring human information processing through EEG analysis and knowledge-based visualization for spatial data mining. It introduces probabilistic topic maps for navigating large text collections and employs 3D visualizations for multidimensional data. Classification and clustering topics feature a decision tree algorithm for ordinal classification, Bayesian clustering for dynamic discovery, and nonparametric linear discriminant analysis. The text discusses supervised classification challenges and temporal pattern generation using hidden Markov models. Integration strategies include adjusted estimation for classifier combinations and reasoning about input-output modeling of dynamic systems. Applications range from intrusion detection and dairy industry pre

      Advances in intelligent data analysis