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Aldo Corbellini
Aldo Corbellini
Statistics researcher, University of Parma
Verified email at unipr.it
Title
Cited by
Cited by
Year
Robust bivariate boxplots and multiple outlier detection
S Zani, M Riani, A Corbellini
Computational Statistics & Data Analysis 28 (3), 257-270, 1998
1231998
The box–cox transformation: Review and extensions
AC Atkinson, M Riani, A Corbellini
1002021
Fitting Pareto II distributions on firm size: Statistical methodology and economic puzzles
A Corbellini, L Crosato, P Ganugi, M Mazzoli
Advances in Data Analysis: Theory and Applications to Reliability and …, 2010
552010
The power of monitoring: how to make the most of a contaminated multivariate sample
A Cerioli, M Riani, AC Atkinson, A Corbellini
Statistical Methods & Applications 27, 559-587, 2018
542018
Functional cluster analysis of financial time series
A Cerioli, F Laurini, A Corbellini
New Developments in Classification and Data Analysis: Proceedings of the …, 2005
202005
Robust regression with density power divergence: Theory, comparisons, and data analysis
M Riani, AC Atkinson, A Corbellini, D Perrotta
Entropy 22 (4), 399, 2020
162020
The analysis of transformations for profit-and-loss data
AC Atkinson, M Riani, A Corbellini
Journal of the Royal Statistical Society Series C: Applied Statistics 69 (2 …, 2020
152020
The use of prior information in very robust regression for fraud detection
M Riani, A Corbellini, AC Atkinson
International Statistical Review 86 (2), 205-218, 2018
152018
Robust Bayesian regression with the forward search: theory and data analysis
AC Atkinson, A Corbellini, M Riani
Test 26, 869-886, 2017
152017
Some issues on clustering of functional data
S Ingrassia, A Cerioli, A Corbellini
Between Data Science and Applied Data Analysis: Proceedings of the 26 th …, 2003
142003
Efficient robust methods via monitoring for clustering and multivariate data analysis
M Riani, AC Atkinson, A Cerioli, A Corbellini
Pattern Recognition 88, 246-260, 2019
132019
New methods for ordering multivariate data: an application to the performance of investment funds
S Zani, M Riani, A Corbellini
Applied Stochastic Models in Business and Industry 15 (4), 485-493, 1999
121999
Automatic robust Box–Cox and extended Yeo–Johnson transformations in regression
M Riani, AC Atkinson, A Corbellini
Statistical Methods & Applications 32 (1), 75-102, 2023
102023
Rejoinder to the discussion 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 & Applications 27, 661-666, 2018
102018
Robust correspondence analysis
M Riani, AC Atkinson, F Torti, A Corbellini
Journal of the Royal Statistical Society Series C: Applied Statistics 71 (5 …, 2022
72022
fsdaSAS: a package for robust regression for very large datasets including the batch forward search
F Torti, A Corbellini, AC Atkinson
Stats 4 (2), 327-347, 2021
62021
Robust bivariate boxplots and visualization of multivariate data
M Riani, S Zani, A Corbellini
Classification, Data Analysis, and Data Highways: Proceedings of the 21st …, 1998
61998
M. Hubert, P. Rousseeuw and P. Segaert: Multivariate functional outlier detection
A Nieto-Reyes, JA Cuesta-Albertos
Statistical methods & applications 24, 237-243, 2015
52015
Information criteria for outlier detection avoiding arbitrary significance levels
M Riani, AC Atkinson, A Corbellini, A Farcomeni, F Laurini
Econometrics and Statistics, 2022
42022
Labor market analysis through transformations and robust multivariate models
A Corbellini, M Magnani, G Morelli
Socio-Economic Planning Sciences 73, 100826, 2021
42021
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