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AdvancedMiner

Main features:

  • Performing a wide range of operations on data, such as sampling, joining datasets, dividing into testing/training/validating sets, assigning roles to attributes
  • Graphical and interactive data exploration
  • Outlier filtering, supplying missing values, PCA, various data transformations, etc.
  • Building association models, clustering analyses, variable importance analyses, etc.
  • Constructing various analytical models with the use of diverse Data Mining and statistical algorithms (such as classification trees, neuron networks, linear and logistic regression, K-means)
  • Creation of scoring code so that the models can be integrated with other IT applications (scoring code may include the models as well as data transformations)
  • Model quality evaluation and comparison of Data Mining models (LIFT, ROK, K-S, Confusion Matrix)
  • Generation of model quality reports (MS Office) Complex analytical processes can be defined in a simple way using drag & drop technique. Advanced users can create their own scripts and new node types. AdvancedMiner offers limitless, additional funcionalities for advanced users that can be easily created and/or extended within the application. Advanced features:
  • Support for SQL language (including analytical functions)
  • Integration with the R package
  • Integration with Java and Hadoop Hive