objectives differentiate accuracy, precision, error, and uncertainty. discuss the dimensions of...

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Objectives • Differentiate accuracy, precision, error, and uncertainty. • Discuss the dimensions of geographic data quality. • Discuss how to compute RMSE for positional accuracy. • Describe why data standards are beneficial • Key terms: metadata

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Page 1: Objectives Differentiate accuracy, precision, error, and uncertainty. Discuss the dimensions of geographic data quality. Discuss how to compute RMSE for

Objectives

• Differentiate accuracy, precision, error, and uncertainty.

• Discuss the dimensions of geographic data quality.

• Discuss how to compute RMSE for positional accuracy.

• Describe why data standards are beneficial

• Key terms: metadata

Page 2: Objectives Differentiate accuracy, precision, error, and uncertainty. Discuss the dimensions of geographic data quality. Discuss how to compute RMSE for

•Accuracy—how close to “true”

•Precision—how exactly measured and stored

•Error—deviation from “true” value

•Uncertainty—lack of confidence due to incomplete knowledge

Page 3: Objectives Differentiate accuracy, precision, error, and uncertainty. Discuss the dimensions of geographic data quality. Discuss how to compute RMSE for

Inherent = Source

Operational = user

or processing

Page 4: Objectives Differentiate accuracy, precision, error, and uncertainty. Discuss the dimensions of geographic data quality. Discuss how to compute RMSE for
Page 5: Objectives Differentiate accuracy, precision, error, and uncertainty. Discuss the dimensions of geographic data quality. Discuss how to compute RMSE for
Page 6: Objectives Differentiate accuracy, precision, error, and uncertainty. Discuss the dimensions of geographic data quality. Discuss how to compute RMSE for

Semantic DiscrepanciesSemantic Discrepancies

Page 7: Objectives Differentiate accuracy, precision, error, and uncertainty. Discuss the dimensions of geographic data quality. Discuss how to compute RMSE for

• RMSE = sqrt(average(squared discrepancies))

• x, y, and z (or e)

• p = sqrt(x²+ y²) (Positional)

• Use p and e for map overall

Page 8: Objectives Differentiate accuracy, precision, error, and uncertainty. Discuss the dimensions of geographic data quality. Discuss how to compute RMSE for
Page 9: Objectives Differentiate accuracy, precision, error, and uncertainty. Discuss the dimensions of geographic data quality. Discuss how to compute RMSE for
Page 10: Objectives Differentiate accuracy, precision, error, and uncertainty. Discuss the dimensions of geographic data quality. Discuss how to compute RMSE for

Metadata—Geographic Data Quality

• Lineage

• Positional accuracy

• Attribute accuracy

• Logical consistency

• Completeness

Page 11: Objectives Differentiate accuracy, precision, error, and uncertainty. Discuss the dimensions of geographic data quality. Discuss how to compute RMSE for

Spatial autocorrelation

Page 12: Objectives Differentiate accuracy, precision, error, and uncertainty. Discuss the dimensions of geographic data quality. Discuss how to compute RMSE for

Sampling

Page 13: Objectives Differentiate accuracy, precision, error, and uncertainty. Discuss the dimensions of geographic data quality. Discuss how to compute RMSE for

Standards vs Translators