List of Conformed Dimensions of Data Quality | Conformed Dimensions of Data Quality
The following is the current version of the Conformed Dimensions of Data Quality (r4.3) and their underlying concepts. Each Dimension has one or more underlying concepts. The definitions of each of those are available here. The following is a PDF format document of the Conformed Dimensions level of detail.
Conformed Dimension
Conformed Dimension Definition
Underlying Concepts
Non Standard Terminology for Dimension
Completeness
Completeness measures the degree of population of data values in a data set.
Record Population, Attribute Population, Truncation, Existence
Fill Rate, Coverage, Usability, Scope
Accuracy
Accuracy measures the degree to which data factually represents its associated real-world object, event, concept or alternatively matches the agreed upon source(s).
Agree with Real-world, Match to Agreed Source
Consistency
Consistency
Consistency measures whether or not data is equivalent across systems or location of storage.
Equivalence of Redundant or Distributed Data, Format Consistency, Logical Consistency, Temporal Consistency
Integrity, Concurrence, Coherence
Validity
Validity measures whether a value conforms to a preset standard.
Values in Specified Range, Values Conform to Business Rule, Domain of Predefined Values, Values Conform to Data Type, Values Conform to Format
Accuracy, Integrity, Reasonableness, Compliance
Timeliness
Timeliness is a measure of time between when data is expected versus made available.
Time Expectation for Availability, Manual Float, Electronic Float
Currency, Lag Time, Latency, Information Float, Cadence
Currency
Currency measures how quickly data reflects the real-world concept that it represents.
Current with World it Models
Timeliness
Integrity
Integrity measures the structural or relational quality of data sets.
Referential Integrity, Uniqueness, Cardinality
Validity, Duplication, Coherence
Accessibility
Accessibility measures how easy it is to acquire data when needed, how long it is retained, and how access is controlled.
Ease of Obtaining Data, Access Control, Retention
Availability, Security
Precision
Precision is the measurement or classification detail used in specifying an attribute’s domain.
Precision of Data Value, Granularity, Domain Precision
Coverage, Detail
Lineage
Lineage measures whether factual documentation exists about where data came from, how it was transformed, where it went and end-to-end graphical illustration.
Source Documentation, Segment Documentation, Target Documentation, End-to-End Graphical Documentation
Representation
Representation measures ease of understanding data, consistency of presentation, appropriate media choice, and availability of documentation (metadata).
Easy to Read & Interpret, Presentation Language, Media Appropriate, Metadata Availability, Includes Measurement Units
Presentation
This work is licensed under a Creative Commons Attribution 4.0 International License.