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I.S. EN ISO 19114:2005

Superseded

Superseded

A superseded Standard is one, which is fully replaced by another Standard, which is a new edition of the same Standard.

View Superseded by

GEOGRAPHIC INFORMATION - QUALITY EVALUATION PROCEDURES

Available format(s)

Hardcopy , PDF

Superseded date

28-12-2013

Superseded by

I.S. EN ISO 19157:2013

Language(s)

English

Published date

01-01-2005

Preview

For Harmonized Standards, check the EU site to confirm that the Standard is cited in the Official Journal.

Only cited Standards give presumption of conformance to New Approach Directives/Regulations.

$195.20
Including GST where applicable

Foreword
Introduction
1 Scope
2 Conformance
3 Normative references
4 Terms and definitions
5 Abbreviated terms
6 Process for evaluating data quality
  6.1 General
  6.2 Components of the process
7 Data quality evaluation methods
  7.1 Classification of data quality evaluation methods
  7.2 Direct evaluation methods
  7.3 Indirect evaluation method
  7.4 Data quality evaluation examples
8 Reporting data quality evaluation information
  8.1 Reporting as metadata
  8.2 Reporting in a quality evaluation report
  8.3 Reporting aggregated data quality result
Annex A (normative) Abstract test suites
  A.1 Introduction
  A.2 Quality evaluation procedures
  A.3 Evaluating data quality
  A.4 Reporting data quality
Annex B (informative) Uses of quality evaluation procedures
  B.1 Introduction
  B.2 Development of a product specification or user
      requirements
  B.3 Quality control during dataset creation
  B.4 Inspection for conformance to a product specification
  B.5 Evaluation of dataset conformance to user requirements
  B.6 Quality control during dataset update
Annex C (informative) Applying quality evaluation procedures to
                      dynamic datasets
  C.1 Introduction
  C.2 Determining and reporting the quality of a dynamic
      dataset
  C.3 Establishing continuous quality evaluation procedures
  C.4 Periodically re-establish the reference quality of the
      dataset
Annex D (informative) Examples of data quality measures
  D.1 Introduction
  D.2 Relationship of the data quality components
  D.3 Examples of data quality completeness measures
  D.4 Examples of data quality logical consistency measures
  D.5 Examples of data quality positional accuracy measures
  D.6 Examples of data quality temporal accuracy measures
  D.7 Examples of data quality thematic accuracy measures
Annex E (informative) Guidelines for sampling methods applied to
                      geographic datasets
  E.1 Introduction
  E.2 Lot and item
  E.3 Sample size
  E.4 Sampling strategies
  E.5 Probability-based sampling
Annex F (informative) Example of testing for thematic accuracy
                      and completeness
  F.1 Introduction
  F.2 Quality evaluation process
  F.3 Method for data quality evaluation
  F.4 Inspection for quality
  F.5 Determination of data quality results and conformance
  F.6 Reporting quality results
Annex G (informative) Example of measurement and reporting of
                      completeness and thematic accuracy
  G.1 Introduction
  G.2 Dataset description
  G.3 Evaluation of data quality
  G.4 Reporting quality results
Annex H (informative) Example of an aggregated data quality
                      result
  H.1 Introduction
  H.2 Dataset description
  H.3 Universe of discourse
  H.4 Dataset
  H.5 Aggregation of evaluation results and reporting
Annex I (normative) Reporting quality information in a quality
                    evaluation report
  I.1 Introduction
  I.2 Quality evaluation report components
Annex J (informative) Aggregation of data quality results
  J.1 Introduction
  J.2 100 % pass/fail
  J.3 Weighted pass/fail
  J.4 Subset of results sufficient for product purpose
  J.5 Maximum/minimum value
Bibliography

Defines a framework of procedures for determining and evaluating quality that is applicable to digital geographic datasets, consistent with the data quality principles defined in ISO 19113.

DocumentType
Standard
Pages
76
PublisherName
National Standards Authority of Ireland
Status
Superseded
SupersededBy

ISO 3951-1:2013 Sampling procedures for inspection by variables — Part 1: Specification for single sampling plans indexed by acceptance quality limit (AQL) for lot-by-lot inspection for a single quality characteristic and a single AQL
ISO 19108:2002 Geographic information Temporal schema
ISO 3534-2:2006 Statistics — Vocabulary and symbols — Part 2: Applied statistics
ISO 19115:2003 Geographic information Metadata
ISO 8601:2004 Data elements and interchange formats Information interchange Representation of dates and times
ISO/IEC 11404:2007 Information technology — General-Purpose Datatypes (GPD)
ISO 9001:2015 Quality management systems — Requirements
ISO 19113:2002 Geographic information Quality principles

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