In a standard classification framework, a discriminating rule is usually built from a trustworthy set of labeled units. In this context, test observations will be automatically classified as to have arisen from one of the known groups encountered in the training set, without the possibility of detecting previously unseen classes. To overcome this limitation, an adaptive semi-parametric Bayesian classifier is intro- duced for modeling the test units, where robust knowledge is extracted from the training set and incorporated within the priors’ model specification. A successful application of the proposed approach in a real-world problem is addressed.

Denti, F., Cappozzo, A., Greselin, F., Bayesian nonparametric adaptive classification with robust prior information, in Book of Short Papers SIS 2020, (Pisa, 23-26 June 2020), Pearson, Pisa 2020: 655-660 [http://hdl.handle.net/10807/202111]

Bayesian nonparametric adaptive classification with robust prior information

Denti, Francesco;
2020

Abstract

In a standard classification framework, a discriminating rule is usually built from a trustworthy set of labeled units. In this context, test observations will be automatically classified as to have arisen from one of the known groups encountered in the training set, without the possibility of detecting previously unseen classes. To overcome this limitation, an adaptive semi-parametric Bayesian classifier is intro- duced for modeling the test units, where robust knowledge is extracted from the training set and incorporated within the priors’ model specification. A successful application of the proposed approach in a real-world problem is addressed.
2020
Inglese
Book of Short Papers SIS 2020
SIS 2020
Pisa
23-giu-2020
26-giu-2020
9788891910776
Pearson
Denti, F., Cappozzo, A., Greselin, F., Bayesian nonparametric adaptive classification with robust prior information, in Book of Short Papers SIS 2020, (Pisa, 23-26 June 2020), Pearson, Pisa 2020: 655-660 [http://hdl.handle.net/10807/202111]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10807/202111
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