Bissiri et al. (2016) present a general Bayesian approach where the like- lihood is replaced more generally by a loss function, which is used to derive the posterior distribution from the prior. In this paper, we exploit this idea for learning the structure of undirected graphical models over discrete variables.

Bissiri, P., Chiogna, M., Thi Kim Hue, N. (2020). Bayesian Inference of Undirected Graphical Models from Count Data. In Book of short papers SIS 2020 (pp.638-643). Pearson.

Bayesian Inference of Undirected Graphical Models from Count Data

Pier Giovanni Bissiri;
2020

Abstract

Bissiri et al. (2016) present a general Bayesian approach where the like- lihood is replaced more generally by a loss function, which is used to derive the posterior distribution from the prior. In this paper, we exploit this idea for learning the structure of undirected graphical models over discrete variables.
paper
loss functions; general Bayesian approach; graphical models; undi- rected graphs; structure learning
English
SIS 2020 - Due to the on-going Covid-19 pandemic, the Executive Board of the Italian Statistical Society and the Local Organizing Committee of SIS 2020 had to deliberate that it will not be possible to hold the SIS 2020 in June 2020. The 50th Scientific Meeting of the Italian Statistical Society will take place virtually, 21-25 June 2021.
2020/2021
Pollice, A; Salvati, N; Schirripa Spagnolo, F
Book of short papers SIS 2020
9788891910776
2020
638
643
https://meetings3.sis-statistica.org/index.php/sis2020/
reserved
Bissiri, P., Chiogna, M., Thi Kim Hue, N. (2020). Bayesian Inference of Undirected Graphical Models from Count Data. In Book of short papers SIS 2020 (pp.638-643). Pearson.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/443779
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