The box–cox transformation: Review and extensions
The supplement includes three data analyses that were excluded from the final version of
the paper: the motivating data set on gasoline consumption from Chen, Lockhart and …
the paper: the motivating data set on gasoline consumption from Chen, Lockhart and …
Development of Low-Cost Air Quality Stations for Next Generation Monitoring Networks: Calibration and Validation of PM2.5 and PM10 Sensors
A low-cost air quality station has been developed for real-time monitoring of main
atmospheric pollutants. Sensors for CO, CO2, NO2, O3, VOC, PM2. 5 and PM10 were …
atmospheric pollutants. Sensors for CO, CO2, NO2, O3, VOC, PM2. 5 and PM10 were …
Semiautomatic robust regression clustering of international trade data
The purpose of this paper is to show in regression clustering how to choose the most
relevant solutions, analyze their stability, and provide information about best combinations of …
relevant solutions, analyze their stability, and provide information about best combinations of …
The power of monitoring: how to make the most of a contaminated multivariate sample
Diagnostic tools must rely on robust high-breakdown methodologies to avoid distortion in
the presence of contamination by outliers. However, a disadvantage of having a single, even …
the presence of contamination by outliers. However, a disadvantage of having a single, even …
Wild adaptive trimming for robust estimation and cluster analysis
Trimming principles play an important role in robust statistics. However, their use for
clustering typically requires some preliminary information about the contamination rate and …
clustering typically requires some preliminary information about the contamination rate and …
[HTML][HTML] Nonparametric limits of agreement for small to moderate sample sizes: a simulation study
ME Frey, HC Petersen, O Gerke - Stats, 2020 - mdpi.com
The assessment of agreement in method comparison and observer variability analysis of
quantitative measurements is usually done by the Bland–Altman Limits of Agreement, where …
quantitative measurements is usually done by the Bland–Altman Limits of Agreement, where …
Robust methods for heteroskedastic regression
AC Atkinson, M Riani, F Torti - Computational Statistics & Data Analysis, 2016 - Elsevier
Heteroskedastic regression data are modelled using a parameterized variance function.
This procedure is robustified using a method with high breakdown point and high efficiency …
This procedure is robustified using a method with high breakdown point and high efficiency …
Robust Gaussian process regression with the trimmed marginal likelihood
D Andrade, A Takeda - Uncertainty in Artificial Intelligence, 2023 - proceedings.mlr.press
Accurate outlier detection is not only a necessary preprocessing step, but can itself give
important insights into the data. However, especially, for non-linear regression the detection …
important insights into the data. However, especially, for non-linear regression the detection …
[HTML][HTML] Robust regression with density power divergence: Theory, comparisons, and data analysis
Minimum density power divergence estimation provides a general framework for robust
statistics, depending on a parameter α, which determines the robustness properties of the …
statistics, depending on a parameter α, which determines the robustness properties of the …
On consistency factors and efficiency of robust S-estimators
We tackle the problem of obtaining the consistency factors of robust S-estimators of location
and scale both in regression and multivariate analysis. We provide theoretical results …
and scale both in regression and multivariate analysis. We provide theoretical results …