Class PrivacyMetric (3.18.1)

  PrivacyMetric 
 ( 
 mapping 
 = 
 None 
 , 
 * 
 , 
 ignore_unknown_fields 
 = 
 False 
 , 
 ** 
 kwargs 
 ) 
 

Privacy metric to compute for reidentification risk analysis.

This message has oneof _ fields (mutually exclusive fields). For each oneof, at most one member field can be set at the same time. Setting any member of the oneof automatically clears all other members.

.. _oneof: https://proto-plus-python.readthedocs.io/en/stable/fields.html#oneofs-mutually-exclusive-fields

Attributes

Name
Description
numerical_stats_config
google.cloud.dlp_v2.types.PrivacyMetric.NumericalStatsConfig
Numerical stats This field is a member of oneof _ type .
categorical_stats_config
google.cloud.dlp_v2.types.PrivacyMetric.CategoricalStatsConfig
Categorical stats This field is a member of oneof _ type .
k_anonymity_config
google.cloud.dlp_v2.types.PrivacyMetric.KAnonymityConfig
K-anonymity This field is a member of oneof _ type .
l_diversity_config
google.cloud.dlp_v2.types.PrivacyMetric.LDiversityConfig
l-diversity This field is a member of oneof _ type .
k_map_estimation_config
google.cloud.dlp_v2.types.PrivacyMetric.KMapEstimationConfig
k-map This field is a member of oneof _ type .
delta_presence_estimation_config
google.cloud.dlp_v2.types.PrivacyMetric.DeltaPresenceEstimationConfig
delta-presence This field is a member of oneof _ type .

Classes

CategoricalStatsConfig

  CategoricalStatsConfig 
 ( 
 mapping 
 = 
 None 
 , 
 * 
 , 
 ignore_unknown_fields 
 = 
 False 
 , 
 ** 
 kwargs 
 ) 
 

Compute numerical stats over an individual column, including number of distinct values and value count distribution.

DeltaPresenceEstimationConfig

  DeltaPresenceEstimationConfig 
 ( 
 mapping 
 = 
 None 
 , 
 * 
 , 
 ignore_unknown_fields 
 = 
 False 
 , 
 ** 
 kwargs 
 ) 
 

δ-presence metric, used to estimate how likely it is for an attacker to figure out that one given individual appears in a de-identified dataset. Similarly to the k-map metric, we cannot compute δ-presence exactly without knowing the attack dataset, so we use a statistical model instead.

KAnonymityConfig

  KAnonymityConfig 
 ( 
 mapping 
 = 
 None 
 , 
 * 
 , 
 ignore_unknown_fields 
 = 
 False 
 , 
 ** 
 kwargs 
 ) 
 

k-anonymity metric, used for analysis of reidentification risk.

KMapEstimationConfig

  KMapEstimationConfig 
 ( 
 mapping 
 = 
 None 
 , 
 * 
 , 
 ignore_unknown_fields 
 = 
 False 
 , 
 ** 
 kwargs 
 ) 
 

Reidentifiability metric. This corresponds to a risk model similar to what is called "journalist risk" in the literature, except the attack dataset is statistically modeled instead of being perfectly known. This can be done using publicly available data (like the US Census), or using a custom statistical model (indicated as one or several BigQuery tables), or by extrapolating from the distribution of values in the input dataset.

LDiversityConfig

  LDiversityConfig 
 ( 
 mapping 
 = 
 None 
 , 
 * 
 , 
 ignore_unknown_fields 
 = 
 False 
 , 
 ** 
 kwargs 
 ) 
 

l-diversity metric, used for analysis of reidentification risk.

NumericalStatsConfig

  NumericalStatsConfig 
 ( 
 mapping 
 = 
 None 
 , 
 * 
 , 
 ignore_unknown_fields 
 = 
 False 
 , 
 ** 
 kwargs 
 ) 
 

Compute numerical stats over an individual column, including min, max, and quantiles.

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