Given a sample of unlabeled observations, the goal of a novelty detec- tion method is to identify which units substantially deviate from the observed la- beled patterns. Therefore, in a model-based framework, it is firstly of paramount importance to learn the components that correspond to the manifest groups in the training set. Secondly, one needs to take into account the lack of knowledge regard- ing the statistical novelties. Thirdly, contaminated elements in the known classes could greatly jeopardize the identification of new groups. Motivated by these chal- lenges, we propose a two-stage Bayesian non-parametric novelty detector. At stage one, robust estimates are extracted from the training set and, subsequently, such in- formation is employed to elicit informative priors within a flexible semiparametric mixture. This general paradigm can be easily adapted to complex modeling frame- works: we provide here an application to functional data from a food authenticity study.

Denti, F., Cappozzo, A., Greselin, F., Outlier and novelty detection for Functional data: a semiparametric Bayesian approach, in Book of Short Papers of the 5th international workshop on Models and Learning for Clustering and Classification, (Catania, 31-August 02-September 2020), Ledizioni, Milano 2021: 33-38. [10.5281/zenodo.5598945] [http://hdl.handle.net/10807/202109]

Outlier and novelty detection for Functional data: a semiparametric Bayesian approach

Denti, Francesco;
2021

Abstract

Given a sample of unlabeled observations, the goal of a novelty detec- tion method is to identify which units substantially deviate from the observed la- beled patterns. Therefore, in a model-based framework, it is firstly of paramount importance to learn the components that correspond to the manifest groups in the training set. Secondly, one needs to take into account the lack of knowledge regard- ing the statistical novelties. Thirdly, contaminated elements in the known classes could greatly jeopardize the identification of new groups. Motivated by these chal- lenges, we propose a two-stage Bayesian non-parametric novelty detector. At stage one, robust estimates are extracted from the training set and, subsequently, such in- formation is employed to elicit informative priors within a flexible semiparametric mixture. This general paradigm can be easily adapted to complex modeling frame- works: we provide here an application to functional data from a food authenticity study.
2021
Inglese
Book of Short Papers of the 5th international workshop on Models and Learning for Clustering and Classification
MBC2 2020
Catania
31-ago-2020
2-set-2020
9788855265393
Ledizioni
Denti, F., Cappozzo, A., Greselin, F., Outlier and novelty detection for Functional data: a semiparametric Bayesian approach, in Book of Short Papers of the 5th international workshop on Models and Learning for Clustering and Classification, (Catania, 31-August 02-September 2020), Ledizioni, Milano 2021: 33-38. [10.5281/zenodo.5598945] [http://hdl.handle.net/10807/202109]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10807/202109
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