fix outlier protection
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@ -113,7 +113,7 @@ Mandatory parameters are marked as **Required**, which means that they are requi
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| `use_SVM_to_remove_outliers` | Train a support vector machine to detect and remove outliers from the training data set, as well as from incoming data points. See details about how it works [here](#removing-outliers-using-a-support-vector-machine-svm). <br> **Datatype:** Boolean.
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| `svm_params` | All parameters available in Sklearn's `SGDOneClassSVM()`. See details about some select parameters [here](#removing-outliers-using-a-support-vector-machine-svm). <br> **Datatype:** Dictionary.
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| `use_DBSCAN_to_remove_outliers` | Cluster data using DBSCAN to identify and remove outliers from training and prediction data. See details about how it works [here](#removing-outliers-with-dbscan). <br> **Datatype:** Boolean.
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| `outlier_protection_percentage` | If more than `outlier_protection_percentage` fraction of points are removed as outliers, FreqAI will log a warning message and ignore outlier detection while keeping the original dataset intact. <br> **Datatype:** float. Default: `0.3`
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| `outlier_protection_percentage` | If more than `outlier_protection_percentage` fraction of points are removed as outliers, FreqAI will log a warning message and ignore outlier detection while keeping the original dataset intact. <br> **Datatype:** float. Default: `30`
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| | **Data split parameters**
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| `data_split_parameters` | Include any additional parameters available from Scikit-learn `test_train_split()`, which are shown [here](https://scikit-learn.org/stable/modules/generated/sklearn.model_selection.train_test_split.html) (external website). <br> **Datatype:** Dictionary.
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| `test_size` | Fraction of data that should be used for testing instead of training. <br> **Datatype:** Positive float < 1.
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@ -519,7 +519,7 @@ class FreqaiDataKitchen:
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"""
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outlier_protection_pct = self.freqai_config["feature_parameters"].get(
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"outlier_protection_percentage", 30)
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outlier_pct = dropped_pts.sum() / len(dropped_pts)
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outlier_pct = (dropped_pts.sum() / len(dropped_pts)) * 100
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if outlier_pct >= outlier_protection_pct:
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self.svm_model = None
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return outlier_pct
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@ -563,12 +563,12 @@ class FreqaiDataKitchen:
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self.data_dictionary["train_features"]
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)
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y_pred = self.svm_model.predict(self.data_dictionary["train_features"])
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dropped_points = np.where(y_pred == -1, 0, y_pred)
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kept_points = np.where(y_pred == -1, 0, y_pred)
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# keep_index = np.where(y_pred == 1)
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outlier_ptc = self.get_outlier_percentage(dropped_points)
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if outlier_ptc:
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outlier_pct = self.get_outlier_percentage(1 - kept_points)
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if outlier_pct:
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logger.warning(
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f"SVM detected > {outlier_ptc}% of the points as outliers."
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f"SVM detected {outlier_pct:.2f}% of the points as outliers. "
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f"Keeping original dataset."
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)
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return
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@ -584,7 +584,7 @@ class FreqaiDataKitchen:
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]
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logger.info(
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f"SVM tossed {len(y_pred) - dropped_points.sum()}"
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f"SVM tossed {len(y_pred) - kept_points.sum()}"
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f" train points from {len(y_pred)} total points."
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)
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@ -593,7 +593,7 @@ class FreqaiDataKitchen:
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# to reduce code duplication
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if self.freqai_config['data_split_parameters'].get('test_size', 0.1) != 0:
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y_pred = self.svm_model.predict(self.data_dictionary["test_features"])
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dropped_points = np.where(y_pred == -1, 0, y_pred)
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kept_points = np.where(y_pred == -1, 0, y_pred)
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self.data_dictionary["test_features"] = self.data_dictionary["test_features"][
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(y_pred == 1)
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]
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@ -604,7 +604,7 @@ class FreqaiDataKitchen:
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]
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logger.info(
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f"SVM tossed {len(y_pred) - dropped_points.sum()}"
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f"SVM tossed {len(y_pred) - kept_points.sum()}"
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f" test points from {len(y_pred)} total points."
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)
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@ -688,10 +688,10 @@ class FreqaiDataKitchen:
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self.data['DBSCAN_min_samples'] = MinPts
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dropped_points = np.where(clustering.labels_ == -1, 1, 0)
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outlier_ptc = self.get_outlier_percentage(dropped_points)
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if outlier_ptc:
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outlier_pct = self.get_outlier_percentage(dropped_points)
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if outlier_pct:
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logger.warning(
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f"DBSCAN detected > {outlier_ptc}% of the points as outliers."
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f"DBSCAN detected {outlier_pct:.2f}% of the points as outliers. "
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f"Keeping original dataset."
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)
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return
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@ -751,10 +751,10 @@ class FreqaiDataKitchen:
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0,
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)
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outlier_ptc = self.get_outlier_percentage(1 - do_predict)
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if outlier_ptc:
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outlier_pct = self.get_outlier_percentage(1 - do_predict)
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if outlier_pct:
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logger.warning(
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f"DI detected > {outlier_ptc}% of the points as outliers."
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f"DI detected {outlier_pct:.2f}% of the points as outliers. "
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f"Keeping original dataset."
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)
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return
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