Using Value-Based Potentials for Making Approximate Inference on Probabilistic Graphical Models
Metadatos
Afficher la notice complèteAuteur
Bonilla Nadal, Pedro; Cano Utrera, Andrés; Gómez Olmedo, Manuel; Moral Callejón, Serafín; Retamero Pascual, Ofelia PaulaEditorial
MDPI
Materia
Probabilistic graphical models Bayesian networks Value-based potentials Approximate inference Medical applications
Date
2022-07-21Referencia bibliográfica
Bonilla-Nadal, P... [et al.]. Using Value-Based Potentials for Making Approximate Inference on Probabilistic Graphical Models. Mathematics 2022, 10, 2542. [https://doi.org/10.3390/math10142542]
Patrocinador
Spanish Government PID2019-106758GB-C31; European Commission; Universidad de Granada/CBUARésumé
The computerization of many everyday tasks generates vast amounts of data, and this
has lead to the development of machine-learning methods which are capable of extracting useful
information from the data so that the data can be used in future decision-making processes. For a
long time now, a number of fields, such as medicine (and all healthcare-related areas) and education,
have been particularly interested in obtaining relevant information from this stored data. This interest
has resulted in the need to deal with increasingly complex problems which involve many different
variables with a high degree of interdependency. This produces models (and in our case probabilistic
graphical models) that are difficult to handle and that require very efficient techniques to store and
use the information that quantifies the relationships between the problem variables. It has therefore
been necessary to develop efficient structures, such as probability trees or value-based potentials, to
represent the information. Even so, there are problems that must be treated using approximation since
this is the only way that results can be obtained, despite the corresponding loss of information. The
aim of this article is to show how the approximation can be performed with value-based potentials.
Our experimental work is based on checking the behavior of this approximation technique on several
Bayesian networks related to medical problems, and our experiments show that in some cases there are
notable savings in memory space with limited information loss.