Structural Learning of Probabilistic Graphical Models of Cumulative Phenomena

被引:2
|
作者
Ramazzotti, Daniele [1 ]
Nobile, Marco S. [2 ]
Antoniotti, Marco [2 ]
Graudenzi, Alex [2 ]
机构
[1] Stanford Univ, Dept Pathol, Stanford, CA 94305 USA
[2] Univ Milano Bicocca, Dept Informat Syst & Commun, Milan, MI, Italy
来源
关键词
CANCER PROGRESSION MODELS; BAYESIAN NETWORKS; INFERENCE; PACKAGE; TRONCO;
D O I
10.1007/978-3-319-93698-7_52
中图分类号
TP301 [理论、方法];
学科分类号
081202 ;
摘要
One of the critical issues when adopting Bayesian networks (BNs) to model dependencies among random variables is to "learn" their structure. This is a well-known NP-hard problem in its most general and classical formulation, which is furthermore complicated by known pitfalls such as the issue of I-equivalence among different structures. In this work we restrict the investigation to a specific class of networks, i.e., those representing the dynamics of phenomena characterized by the monotonic accumulation of events. Such phenomena allow to set specific structural constraints based on Suppes' theory of probabilistic causation and, accordingly, to define constrained BNs, named Suppes-Bayes Causal Networks (SBCNs). Within this framework, we study the structure learning of SBCNs via extensive simulations with various state-of-the-art search strategies, such as canonical local search techniques and Genetic Algorithms. This investigation is intended to be an extension and an in-depth clarification of our previous works on SBCN structure learning. Among the main results, we show that Suppes' constraints do simplify the learning task, by reducing the solution search space and providing a temporal ordering on the variables, which simplifies the complications derived by I-equivalent structures. Finally, we report on tradeoffs among different optimization techniques that can be used to learn SBCNs.
引用
收藏
页码:678 / 693
页数:16
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