The box–cox transformation: Review and extensions

AC Atkinson, M Riani, A Corbellini - 2021 - projecteuclid.org
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 …

Development of Low-Cost Air Quality Stations for Next Generation Monitoring Networks: Calibration and Validation of PM2.5 and PM10 Sensors

A Cavaliere, F Carotenuto, F Di Gennaro, B Gioli… - Sensors, 2018 - mdpi.com
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 …

Semiautomatic robust regression clustering of international trade data

F Torti, M Riani, G Morelli - Statistical Methods & Applications, 2021 - Springer
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 …

The power of monitoring: how to make the most of a contaminated multivariate sample

A Cerioli, M Riani, AC Atkinson, A Corbellini - Statistical Methods & …, 2018 - Springer
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 …

Wild adaptive trimming for robust estimation and cluster analysis

A Cerioli, A Farcomeni, M Riani - Scandinavian Journal of …, 2019 - Wiley Online Library
Trimming principles play an important role in robust statistics. However, their use for
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 …

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 …

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 …

[HTML][HTML] Robust regression with density power divergence: Theory, comparisons, and data analysis

M Riani, AC Atkinson, A Corbellini, D Perrotta - Entropy, 2020 - mdpi.com
Minimum density power divergence estimation provides a general framework for robust
statistics, depending on a parameter α, which determines the robustness properties of the …

On consistency factors and efficiency of robust S-estimators

M Riani, A Cerioli, F Torti - Test, 2014 - Springer
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 …