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Model description

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Intended uses & limitations

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Training Procedure

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Hyperparameters

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Hyperparameter Value
memory
steps [('scaler', StandardScaler()), ('svm', SGDClassifier())]
verbose False
scaler StandardScaler()
svm SGDClassifier()
scaler__copy True
scaler__with_mean True
scaler__with_std True
svm__alpha 0.0001
svm__average False
svm__class_weight
svm__early_stopping False
svm__epsilon 0.1
svm__eta0 0.0
svm__fit_intercept True
svm__l1_ratio 0.15
svm__learning_rate optimal
svm__loss hinge
svm__max_iter 1000
svm__n_iter_no_change 5
svm__n_jobs
svm__penalty l2
svm__power_t 0.5
svm__random_state
svm__shuffle True
svm__tol 0.001
svm__validation_fraction 0.1
svm__verbose 0
svm__warm_start False

Model Plot

Pipeline(steps=[('scaler', StandardScaler()), ('svm', SGDClassifier())])
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Evaluation Results

Metric Value
accuracy 0.832655
f1 score 0.706073
precision 0.810589
recall 0.625432

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eval_method

The model is evaluated using test split, on accuracy, precision, recall and f1.

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