outlier#
Classes:
|
Manages issues related to out-of-distribution examples. |
- class cleanlab.datalab.internal.issue_manager.outlier.OutlierIssueManager(datalab, threshold=None, **kwargs)[source]#
Bases:
IssueManager
Manages issues related to out-of-distribution examples.
Attributes:
Short text that summarizes the type of issues handled by this IssueManager.
Returns a key that is used to store issue summary results about the assigned Lab.
A dictionary of verbosity levels and their corresponding dictionaries of report items to print.
Default thresholds for outlier detection.
Returns a key that is used to store issue score results about the assigned Lab.
Methods:
find_issues
([features, pred_probs])Finds occurrences of this particular issue in the dataset.
collect_info
(*[, knn_graph])Collects data for the info attribute of the Datalab.
make_summary
(score)Construct a summary dataframe.
report
(issues, summary, info[, ...])Compose a report of the issues found by this IssueManager.
- description: ClassVar[str]#
Short text that summarizes the type of issues handled by this IssueManager.
- issue_name: ClassVar[str] = 'outlier'#
Returns a key that is used to store issue summary results about the assigned Lab.
- verbosity_levels: ClassVar[Dict[int, List[str]]]#
A dictionary of verbosity levels and their corresponding dictionaries of report items to print.
Example
>>> verbosity_levels = { ... 0: [], ... 1: ["some_info_key"], ... 2: ["additional_info_key"], ... }
- DEFAULT_THRESHOLDS = {'features': 0.37037, 'pred_probs': 0.13}#
Default thresholds for outlier detection.
If outlier detection is performed on the features, an example whose average distance to their k nearest neighbors is greater than Q3_avg_dist + (1 / threshold - 1) * IQR_avg_dist is considered an outlier.
If outlier detection is performed on the predicted probabilities, an example whose average score is lower than threshold * median_outlier_score is considered an outlier.
- ood: OutOfDistribution#
- find_issues(features=None, pred_probs=None, **kwargs)[source]#
Finds occurrences of this particular issue in the dataset.
Computes the
issues
andsummary
dataframes. Callscollect_info
to compute theinfo
dict.- Return type:
None
- collect_info(*, knn_graph=None)[source]#
Collects data for the info attribute of the Datalab.
Note
This method is called by
find_issues()
afterfind_issues()
has set theissues
andsummary
dataframes as instance attributes.- Return type:
dict
- issue_score_key: ClassVar[str] = 'outlier_score'#
Returns a key that is used to store issue score results about the assigned Lab.
- classmethod make_summary(score)#
Construct a summary dataframe.
- Parameters:
score (
float
) – The overall score for this issue.- Return type:
DataFrame
- Returns:
summary
– A summary dataframe.
- classmethod report(issues, summary, info, num_examples=5, verbosity=0, include_description=False, info_to_omit=None)#
Compose a report of the issues found by this IssueManager.
- Parameters:
issues (
DataFrame
) –An issues dataframe.
Example
>>> import pandas as pd >>> issues = pd.DataFrame( ... { ... "is_X_issue": [True, False, True], ... "X_score": [0.2, 0.9, 0.4], ... }, ... )
summary (
DataFrame
) –The summary dataframe.
Example
>>> summary = pd.DataFrame( ... { ... "issue_type": ["X"], ... "score": [0.5], ... }, ... )
info (
Dict
[str
,Any
]) –The info dict.
Example
>>> info = { ... "A": "val_A", ... "B": ["val_B1", "val_B2"], ... }
num_examples (
int
) – The number of examples to print.verbosity (
int
) – The verbosity level of the report.include_description (
bool
) – Whether to include a description of the issue in the report.
- Return type:
str
- Returns:
report_str
– A string containing the report.
- info: Dict[str, Any]#
- issues: pd.DataFrame#
- summary: pd.DataFrame#