Detecting and Treating Verified Influential Values in a Monthly Retail Trade Survey
Published Online: Dec 11, 2014
Page range: 721 - 747
Received: Nov 01, 2012
Accepted: Oct 01, 2014
DOI: https://doi.org/10.2478/jos-2014-0045
Keywords
© by Mary H. Mulry
This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 3.0 License.
In survey data, an observation is considered influential if it is reported correctly and its weighted contribution has an excessive effect on a key estimate, such as an estimate of total or change. In previous research with data from the U.S. Monthly Retail Trade Survey (MRTS), two methods, Clark Winsorization and weighted M-estimation, have shown potential to detect and adjust influential observations. This article discusses results of the application of a simulation methodology that generates realistic population time-series data. The new strategy enables evaluating Clark Winsorization and weighted M-estimation over repeated samples and producing conditional and unconditional performance measures. The analyses consider several scenarios for the occurrence of influential observations in the MRTS and assess the performance of the two methods for estimates of total retail sales and month-to-month change.