TY - JOUR
T1 - Efficient computational strategies to learn the structure of probabilistic graphical models of cumulative phenomena
AU - Ramazzotti, Daniele
AU - Nobile, Marco S.
AU - Antoniotti, Marco
AU - Graudenzi, Alex
PY - 2019/1/1
Y1 - 2019/1/1
N2 - Structural learning of Bayesian Networks (BNs) is a NP-hard problem, which is further complicated by many theoretical issues, such as the I-equivalence among different structures. In this work, we focus on a specific subclass of BNs, named Suppes-Bayes Causal Networks (SBCNs), which include specific structural constraints based on Suppes’ probabilistic causation to efficiently model cumulative phenomena. Here we compare the performance, via extensive simulations, of various state-of-the-art search strategies, such as local search techniques and Genetic Algorithms, as well as of distinct regularization methods. The assessment is performed on a large number of simulated datasets from topologies with distinct levels of complexity, various sample size and different rates of errors in the data. Among the main results, we show that the introduction of Suppes’ constraints dramatically improve the inference accuracy, by reducing the solution space and providing a temporal ordering on the variables. We also report on trade-offs among different search techniques that can be efficiently employed in distinct experimental settings. This manuscript is an extended version of the paper “Structural Learning of Probabilistic Graphical Models of Cumulative Phenomena” presented at the 2018 International Conference on Computational Science [1].
AB - Structural learning of Bayesian Networks (BNs) is a NP-hard problem, which is further complicated by many theoretical issues, such as the I-equivalence among different structures. In this work, we focus on a specific subclass of BNs, named Suppes-Bayes Causal Networks (SBCNs), which include specific structural constraints based on Suppes’ probabilistic causation to efficiently model cumulative phenomena. Here we compare the performance, via extensive simulations, of various state-of-the-art search strategies, such as local search techniques and Genetic Algorithms, as well as of distinct regularization methods. The assessment is performed on a large number of simulated datasets from topologies with distinct levels of complexity, various sample size and different rates of errors in the data. Among the main results, we show that the introduction of Suppes’ constraints dramatically improve the inference accuracy, by reducing the solution space and providing a temporal ordering on the variables. We also report on trade-offs among different search techniques that can be efficiently employed in distinct experimental settings. This manuscript is an extended version of the paper “Structural Learning of Probabilistic Graphical Models of Cumulative Phenomena” presented at the 2018 International Conference on Computational Science [1].
KW - Graphical models
KW - Structural learning
KW - Causality
KW - Suppes-Bayes Causal Networks
KW - Cumulative phenomena
UR - http://www.scopus.com/inward/record.url?scp=85056732095&partnerID=8YFLogxK
U2 - 10.1016/j.jocs.2018.10.009
DO - 10.1016/j.jocs.2018.10.009
M3 - Article
AN - SCOPUS:85056732095
SN - 1877-7503
VL - 30
SP - 1
EP - 10
JO - Journal of Computational Science
JF - Journal of Computational Science
ER -