Value‐based potentials: Exploiting quantitative information regularity patterns in probabilistic graphical models
Metadatos
Mostrar el registro completo del ítemAutor
Gómez Olmedo, Manuel; Cabañas, Rafael; Cano Utrera, Andrés; Moral García, Serafín; Retamero Pascual, Ofelia PaulaEditorial
John Wiley & Sons
Materia
Bayesian networks Inference algorithms Influence diagrams Probabilistic graphical models
Fecha
2021-07-26Referencia bibliográfica
Gómez-Olmedo, M... [et al.]. Value-based potentials: exploiting quantitative information regularity patterns in probabilistic graphical models. Int J Intell Syst. 2021; 1- 31. [https://doi.org/10.1002/int.22573]
Patrocinador
Spanish Government PID2019-106758GB-C31 TIN2016-77902-C3-2-P; European CommissionResumen
When dealing with complex models (i.e., models with
many variables, a high degree of dependency between
variables, or many states per variable), the efficient representation
of quantitative information in probabilistic
graphical models (PGMs) is a challenging task. To address
this problem, this study introduces several new structures,
aptly named value‐based potentials (VBPs), which are
based exclusively on the values. VBPs leverage repeated
values to reduce memory requirements. In the present
paper, they are compared with some common structures,
like standard tables or unidimensional arrays, and probability
trees (PT). Like VBPs, PTs are designed to reduce
the memory space, but this is achieved only if value repetitions
correspond to context‐specific independence
patterns (i.e., repeated values are related to consecutive
indices or configurations). VBPs are devised to overcome
this limitation. The goal of this study is to analyze the
properties of VBPs. We provide a theoretical analysis of
VBPs and use them to encode the quantitative information
of a set of well‐known Bayesian networks, measuring
the access time to their content and the computational
time required to perform some inference tasks.