Robust estimation with survey data

Loading...
Thumbnail Image
Author (Corporation)
Publication date
26.11.2025
Type of student thesis
Course of study
Type
06 - Presentation
Editors
Editor (Corporation)
Supervisor
Parent work
Special issue
DOI of the original publication
Series
Series number
Volume
Issue / Number
Pages / Duration
Patent number
Publisher / Publishing institution
Place of publication / Event location
Bucharest
Edition
Version
Programming language
Assignee
Practice partner / Client
Abstract
Outlier detection and handling is a non-trivial task, even when the data are regarded as a random sample from an infinite population. In this context (i.e., classical statistics), outliers are typically considered to be generated by a model other than the one under study. Compared to classical statistics, outliers are a very different concept in finite population sampling. In the context of sampling (design-based inference), where no statistical model is assumed, outliers are extreme values that deviate from the bulk of the data. In addition, unlike in classical statistics, we also have to consider the sampling weights. Observations that are not considered outliers (i.e., that are in the bulk of the data) can still strongly influence an estimator due to their large sampling weight (influential values). An estimator or procedure is called (qualitatively) robust if it is resistant or insensitive to the presence of outliers and influential values. In principle, robust estimation can be implemented in two ways: i) detection and treatment of outliers, or ii) direct application of robust estimation techniques. We limit our attention to the latter approach. The robsurvey package implements: i) basic robust estimators of the mean and total (e.g., robust Horvitz-Thompson estimator), robust survey regression, and model-assisted estimation (e.g., robust generalized regression estimator, GREG). In the talk, we will take a look at some of the methods and illustrate them with examples from business surveys.
Keywords
robust statistics, sampling, outlier detection
Subject (DDC)
Project
Event
uRos 2025
Exhibition start date
Exhibition end date
Conference start date
24.11.2025
Conference end date
26.11.2025
Date of the last check
ISBN
ISSN
Language
English
Created during FHNW affiliation
Yes
Strategic action fields FHNW
Publication status
Review
Peer review of the abstract
Open access category
License
'https://creativecommons.org/licenses/by-nc/4.0/'
Citation
Schoch, T. (2025, November 26). Robust estimation with survey data. uRos 2025. https://doi.org/10.26041/fhnw-14422

Version History

Now showing 1 - 2 of 2
VersionDateSummary
2*
2026-02-20 11:42:25
Upload Folien
2026-02-16 15:53:53
* Selected version