OpenML

Supervised Classification on postoperative-patient-data

Task 34 Supervised Classification
postoperative-patient-data
705 runs submitted

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**0 likes - 0 downloads - 0 reach ** - area_under_roc_curve: 0.4133, f_measure: 0.5856, kappa: -0.021, kb_relative_information_score: -0.3665, mean_absolute_error: 0.2804, mean_prior_absolute_error: 0.2871, number_of_instances: 90, precision: 0.5034, predictive_accuracy: 0.7, prior_entropy: 1.0305, recall: 0.7, relative_absolute_error: 0.9767, root_mean_prior_squared_error: 0.3755, root_mean_squared_error: 0.3907, root_relative_squared_error: 1.0404, scimark_benchmark: 1376.6818, usercpu_time_millis: 10, usercpu_time_millis_testing: 10,
**0 likes - 0 downloads - 0 reach ** - area_under_roc_curve: 0.335, f_measure: 0.5911, kb_relative_information_score: -2.7417, mean_absolute_error: 0.2887, mean_prior_absolute_error: 0.2871, number_of_instances: 90, precision: 0.5057, predictive_accuracy: 0.7111, prior_entropy: 1.0305, recall: 0.7111, relative_absolute_error: 1.0056, root_mean_prior_squared_error: 0.3755, root_mean_squared_error: 0.3899, root_relative_squared_error: 1.0385, scimark_benchmark: 918.0213, usercpu_time_millis: 60, usercpu_time_millis_training: 60,
**0 likes - 0 downloads - 0 reach ** - area_under_roc_curve: 0.3606, f_measure: 0.5854, kappa: -0.0377, kb_relative_information_score: -8.9241, mean_absolute_error: 0.3046, mean_prior_absolute_error: 0.2871, number_of_instances: 90, precision: 0.5528, predictive_accuracy: 0.6667, prior_entropy: 1.0305, recall: 0.6667, relative_absolute_error: 1.0611, root_mean_prior_squared_error: 0.3755, root_mean_squared_error: 0.4363, root_relative_squared_error: 1.1619, scimark_benchmark: 906.4475, usercpu_time_millis: 10, usercpu_time_millis_training: 10,
**0 likes - 0 downloads - 0 reach ** - area_under_roc_curve: 0.4201, f_measure: 0.5911, kb_relative_information_score: 1.4088, mean_absolute_error: 0.2823, mean_prior_absolute_error: 0.2871, number_of_instances: 90, precision: 0.5057, predictive_accuracy: 0.7111, prior_entropy: 1.0305, recall: 0.7111, relative_absolute_error: 0.9835, root_mean_prior_squared_error: 0.3755, root_mean_squared_error: 0.3763, root_relative_squared_error: 1.0022, scimark_benchmark: 934.1747,
**0 likes - 0 downloads - 0 reach ** - area_under_roc_curve: 0.3969, f_measure: 0.6037, kappa: 0.0122, kb_relative_information_score: 11.2342, mean_absolute_error: 0.2366, mean_prior_absolute_error: 0.2871, number_of_instances: 90, precision: 0.5957, predictive_accuracy: 0.7, prior_entropy: 1.0305, recall: 0.7, relative_absolute_error: 0.8241, root_mean_prior_squared_error: 0.3755, root_mean_squared_error: 0.4515, root_relative_squared_error: 1.2024, scimark_benchmark: 1327.9952, usercpu_time_millis: 10, usercpu_time_millis_training: 10,

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estimation_procedure | 10-fold Crossvalidation |

evaluation_measures | predictive_accuracy |

source_data | postoperative-patient-data (1) |

target_feature | decision |

evaluations | A list of user-defined evaluations of the task as key-value pairs. | KeyValue (optional) |

model | A file containing the model built on all the input data. | File (optional) |

predictions | The desired output format | Predictions (optional) |

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