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55 results

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Classification Algorithms
Functions
Integrations
Analytics Weka Weka (3.7) Weka (3.6) Weka (deprecated)
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    Node / Learner
    LibSVM (3.6)
    Analytics Integrations Weka
    +3
    A wrapper class for the libsvm tools (the libsvm classes, typically the jar file, need to be in the classpath to use this classif…
    0
    knime
  2. Go to item
    Node / Learner
    LinearRegression (3.6)
    Analytics Integrations Weka
    +3
    Class for using linear regression for prediction. Uses the Akaike criterion for model selection, and is able to deal with weighte…
    0
    knime
  3. Go to item
    Node / Learner
    Logistic (3.6)
    Analytics Integrations Weka
    +3
    Class for building and using a multinomial logistic regression model with a ridge estimator. There are some modifications, howeve…
    0
    knime
  4. Go to item
    Node / Learner
    MultilayerPerceptron (3.6)
    Analytics Integrations Weka
    +3
    A Classifier that uses backpropagation to classify instances. This network can be built by hand, created by an algorithm or both.…
    0
    knime
  5. Go to item
    Node / Learner
    PaceRegression (3.6)
    Analytics Integrations Weka
    +3
    Class for building pace regression linear models and using them for prediction. Under regularity conditions, pace regression is p…
    0
    knime
  6. Go to item
    Node / Learner
    SMO (3.6)
    Analytics Integrations Weka
    +3
    Implements John Platt's sequential minimal optimization algorithm for training a support vector classifier. This implementation g…
    0
    knime
  7. Go to item
    Node / Learner
    SMOreg (3.6)
    Analytics Integrations Weka
    +3
    SMOreg implements the support vector machine for regression. The parameters can be learned using various algorithms. The algorith…
    0
    knime
  8. Go to item
    Node / Learner
    SPegasos (3.6)
    Analytics Integrations Weka
    +3
    Implements the stochastic variant of the Pegasos (Primal Estimated sub-GrAdient SOlver for SVM) method of Shalev-Shwartz et al. (…
    0
    knime
  9. Go to item
    Node / Learner
    VotedPerceptron (3.6)
    Analytics Integrations Weka
    +3
    Implementation of the voted perceptron algorithm by Freund and Schapire. Globally replaces all missing values, and transforms nom…
    0
    knime
  10. Go to item
    Node / Learner
    Winnow (3.6)
    Analytics Integrations Weka
    +3
    Implements Winnow and Balanced Winnow algorithms by Littlestone. For more information, see N. Littlestone (1988). Learning quickl…
    0
    knime
  11. Go to item
    Node / Learner
    GaussianProcesses (3.6)
    Analytics Integrations Weka
    +3
    Implements Gaussian Processes for regression without hyperparameter-tuning. For more information see David J.C. Mackay (1998). In…
    0
    knime
  12. Go to item
    Node / Learner
    IsotonicRegression (3.6)
    Analytics Integrations Weka
    +3
    Learns an isotonic regression model. Picks the attribute that results in the lowest squared error. Missing values are not allowed…
    0
    knime
  13. Go to item
    Node / Learner
    LeastMedSq (3.6)
    Analytics Integrations Weka
    +3
    Implements a least median sqaured linear regression utilising the existing weka LinearRegression class to form predictions. Least…
    0
    knime
  14. Go to item
    Node / Learner
    LibLINEAR (3.6)
    Analytics Integrations Weka
    +3
    A wrapper class for the liblinear tools (the liblinear classes, typically the jar file, need to be in the classpath to use this c…
    0
    knime
  15. Go to item
    Node / Learner
    PLSClassifier (3.6)
    Analytics Integrations Weka
    +3
    A wrapper classifier for the PLSFilter, utilizing the PLSFilter's ability to perform predictions. (based on WEKA 3.6) For further…
    0
    knime
  16. Go to item
    Node / Learner
    RBFNetwork (3.6)
    Analytics Integrations Weka
    +3
    Class that implements a normalized Gaussian radial basisbasis function network. It uses the k-means clustering algorithm to provi…
    0
    knime
  17. Go to item
    Node / Learner
    SimpleLinearRegression (3.6)
    Analytics Integrations Weka
    +3
    Learns a simple linear regression model. Picks the attribute that results in the lowest squared error. Missing values are not all…
    0
    knime
  18. Go to item
    Node / Learner
    SimpleLogistic (3.6)
    Analytics Integrations Weka
    +3
    Classifier for building linear logistic regression models. LogitBoost with simple regression functions as base learners is used f…
    0
    knime
  19. Go to item
    Node / Learner
    GaussianProcesses (3.7)
    Analytics Integrations Weka
    +3
    Implements Gaussian processes for regression without hyperparameter-tuning To make choosing an appropriate noise level easier, th…
    0
    knime
  20. Go to item
    Node / Learner
    IsotonicRegression (3.7)
    Analytics Integrations Weka
    +3
    Learns an isotonic regression model Picks the attribute that results in the lowest squared error.Missing values are not allowed. …
    0
    knime

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