Xing M. Wang
We expand the Probability Bracket Notation (PBN), a symbolic framework inspired by the Dirac notation in quantum mechanics, to multivariable probability systems and static Bayesian networks (BNs). By defining joint, marginal, and conditional probability distributions (PDs), as well as marginal and conditional expectations, we demonstrate how to express dependencies among multiple random variables and manipulate them algebraically in PBN. Using the well-known Student BN as an example of probabilistic graphical models (PGMs), we illustrate how to apply PBN to analyze predictions, inferences (using both bottom-up and top-down approaches), and expectations. We then extend PBN to BNs with continuous variables. After reviewing linear Gaussian networks, we introduce a customized Healthcare BN that includes both continuous and discrete random variables, utilizes user-specific data, and provides tailored predictions via discrete-display (DD) nodes that proxy for their continuous-variable parents. Compared to traditional probability notation, PBN offers an operator-driven framework that unifies and simplifies the analysis of probabilistic models, with potential as both an educational tool and a practical platform for causal reasoning, inference, expectation, data analytics, machine learning, and artificial intelligence.