Task

Supervised Classification on kc2

Task 307 Supervised Classification
kc2
5 runs submitted

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0 likes downloaded by 0 people , 0 total downloads 0 issues

Visibility: Public

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**0 likes - 0 downloads - 0 reach ** - area_under_roc_curve: 0.8062, f_measure: 0.8238, kappa: 0.4314, kb_relative_information_score: 0.2433, mean_absolute_error: 0.2209, mean_prior_absolute_error: 0.3266, weighted_recall: 0.8352, number_of_instances: 522, precision: 0.8213, predictive_accuracy: 0.8352, prior_entropy: 0.7318, relative_absolute_error: 0.6764, root_mean_prior_squared_error: 0.4037, root_mean_squared_error: 0.3482, root_relative_squared_error: 0.8626, unweighted_recall: 0.6918,
**0 likes - 0 downloads - 0 reach ** - area_under_roc_curve: 0.804, f_measure: 0.8204, kappa: 0.418, kb_relative_information_score: 0.2491, mean_absolute_error: 0.2203, mean_prior_absolute_error: 0.3266, weighted_recall: 0.8333, number_of_instances: 522, precision: 0.8182, predictive_accuracy: 0.8333, prior_entropy: 0.7318, relative_absolute_error: 0.6746, root_mean_prior_squared_error: 0.4037, root_mean_squared_error: 0.3489, root_relative_squared_error: 0.8642, unweighted_recall: 0.6836,
**0 likes - 0 downloads - 0 reach ** - area_under_roc_curve: 0.806, f_measure: 0.8199, kappa: 0.4228, kb_relative_information_score: 0.2448, mean_absolute_error: 0.2204, mean_prior_absolute_error: 0.3266, weighted_recall: 0.8295, number_of_instances: 522, precision: 0.8162, predictive_accuracy: 0.8295, prior_entropy: 0.7318, relative_absolute_error: 0.6747, root_mean_prior_squared_error: 0.4037, root_mean_squared_error: 0.349, root_relative_squared_error: 0.8645, unweighted_recall: 0.6916,
**0 likes - 0 downloads - 0 reach ** - area_under_roc_curve: 0.8064, f_measure: 0.8165, kappa: 0.4096, kb_relative_information_score: 0.2377, mean_absolute_error: 0.2215, mean_prior_absolute_error: 0.3266, weighted_recall: 0.8276, number_of_instances: 522, precision: 0.8129, predictive_accuracy: 0.8276, prior_entropy: 0.7318, relative_absolute_error: 0.6784, root_mean_prior_squared_error: 0.4037, root_mean_squared_error: 0.3487, root_relative_squared_error: 0.8638, unweighted_recall: 0.6835,
**0 likes - 0 downloads - 0 reach ** - area_under_roc_curve: 0.8106, f_measure: 0.8312, kappa: 0.4614, kb_relative_information_score: 0.2445, mean_absolute_error: 0.2202, mean_prior_absolute_error: 0.3266, weighted_recall: 0.8391, number_of_instances: 522, precision: 0.8281, predictive_accuracy: 0.8391, prior_entropy: 0.7318, relative_absolute_error: 0.6744, root_mean_prior_squared_error: 0.4037, root_mean_squared_error: 0.3497, root_relative_squared_error: 0.8663, unweighted_recall: 0.7115,

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