Bayesian Learning of Causal Relationships for System Reliability
Yu, Xuewen, Smith, Jim Q., Nichols, Linda
–arXiv.org Artificial Intelligence
Concurrently advances in causal modelling has led to a better understanding of how to predict complex systems when these are subjected to control. A major breakthrough then occurred about 20 years ago when it was then discovered that causal and graphical modelling could be combined. This paper reports on how the combination of these two technologies are being applied to give more insights concerning causal hypotheses that relate specially to reliability and system safety. Of course causal ideas have been embedded within reliability theory for a long time, both to explore the reasons behind a failure and to also estimate the efficacy of various interventions in the system that might ameliorate adverse outcomes. However, the graphical frameworks around which these ideas appear have been tree like - for example fault trees or event chains (Leverson 2011) - rather than the most common graphical framework for analyzing causation: the BN. Only recently have graphical causal methods emerged for methodologies and algorithms to exist for causal discovery and causal reasoning on such tree structures. The primary such graph is the chain event graph (CEG), see Thwaites, Smith and Riccomagno (2010), Barclay, Hutton and Smith (2013) and Collazo et.
arXiv.org Artificial Intelligence
Feb-14-2020