48 pages, 6 figuresInternational audienceWe introduce new estimators for robust machine learning based on median-of-means (MOM) estimators of the mean of real valued random variables. These estimators achieve optimal rates of convergence under minimal assumptions on the dataset. The dataset may also have been corrupted by outliers on which no assumption is granted. We also analyze these new estimators with standard tools from robust statistics. In particular, we revisit the concept of breakdown point. We modify the original definition by studying the number of outliers that a dataset can contain without deteriorating the estimation properties of a given estimator. This new notion of breakdown number, that takes into account the statistical ...
Median in some statistical methods Abstract: This work is focused on utilization of robust propertie...
Median in some statistical methods Abstract: This work is focused on utilization of robust propertie...
Median in some statistical methods Abstract: This work is focused on utilization of robust propertie...
In contrast to the empirical mean, the Median-of-Means (MoM) is an estimator of the mean theta of a ...
We present an extension of Vapnik's classical empirical risk minimizer (ERM) where the empirical ris...
The design of statistical estimators robust to outliers has been a mainstay of statistical research ...
Tournament procedures, recently introduced in Lugosi & Mendelson (2016), offer an appealing alternat...
Tournament procedures, recently introduced in Lugosi & Mendelson (2016), offer an appealing alternat...
International audienceTournament procedures, recently introduced in Lugosi & Mendelson (2016), offer...
International audienceTournament procedures, recently introduced in Lugosi & Mendelson (2016), offer...
International audienceTournament procedures, recently introduced in Lugosi & Mendelson (2016), offer...
International audienceTournament procedures, recently introduced in Lugosi & Mendelson (2016), offer...
International audienceMean embeddings provide an extremely flexible and powerful tool in machine lea...
International audienceMean embeddings provide an extremely flexible and powerful tool in machine lea...
International audienceMean embeddings provide an extremely flexible and powerful tool in machine lea...
Median in some statistical methods Abstract: This work is focused on utilization of robust propertie...
Median in some statistical methods Abstract: This work is focused on utilization of robust propertie...
Median in some statistical methods Abstract: This work is focused on utilization of robust propertie...
In contrast to the empirical mean, the Median-of-Means (MoM) is an estimator of the mean theta of a ...
We present an extension of Vapnik's classical empirical risk minimizer (ERM) where the empirical ris...
The design of statistical estimators robust to outliers has been a mainstay of statistical research ...
Tournament procedures, recently introduced in Lugosi & Mendelson (2016), offer an appealing alternat...
Tournament procedures, recently introduced in Lugosi & Mendelson (2016), offer an appealing alternat...
International audienceTournament procedures, recently introduced in Lugosi & Mendelson (2016), offer...
International audienceTournament procedures, recently introduced in Lugosi & Mendelson (2016), offer...
International audienceTournament procedures, recently introduced in Lugosi & Mendelson (2016), offer...
International audienceTournament procedures, recently introduced in Lugosi & Mendelson (2016), offer...
International audienceMean embeddings provide an extremely flexible and powerful tool in machine lea...
International audienceMean embeddings provide an extremely flexible and powerful tool in machine lea...
International audienceMean embeddings provide an extremely flexible and powerful tool in machine lea...
Median in some statistical methods Abstract: This work is focused on utilization of robust propertie...
Median in some statistical methods Abstract: This work is focused on utilization of robust propertie...
Median in some statistical methods Abstract: This work is focused on utilization of robust propertie...