Implicit Linear Inequality Edits Generation and Error Localization in the SPEER Edit System Maria Garcia U.S. Census Bureau UNECE Work Session on Statistical.

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Implicit Linear Inequality Edits Generation and Error Localization in the SPEER Edit System Maria Garcia U.S. Census Bureau UNECE Work Session on Statistical Data Editing May 16-18, 2005, Ottawa, Canada

SPEER Editing System  Fellegi-Holt system for continuous data under ratio and balance edits  All implied ratio edits are available

New SPEER System  Pre-processing program for implied edit generation  Optimality of ratio edits bounds  All SPEER modules rewritten  Simplified error localization  Calculation of imputation intervals

Number of Times Field in Balance Edits is Marked for Deletion ASM Fields

Remarks  Maintains SPEER exceptional speed  Better job of error localization  SPEER’97 heuristics not needed  Computer time (8 hours to generate linear inequality edits)