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A Theoretical Analysis of the BDeu Scores in Bayesian Network Structure Learning

Abstract

In Bayesian network structure learning (BNSL), we need the prior probability over structures and parameters. If the former is the uniform distribution, the latter determines the correctness of BNSL. In this paper, we compare BDeu (Bayesian Dirichlet equivalent uniform) and Jeffreys' prior w.r.t. their consistency. When we seek a parent set UU of a variable XX, we require regularity that if H(XU)H(XU)H(X|U)\leq H(X|U') and UUU\subsetneq U', then UU should be chosen rather than UU'. We prove that the BDeu scores violate the property and cause fatal situations in BNSL. This is because for the BDeu scores, for any sample size nn,there exists a probability in the form P(X,Y,Z)=P(XZ)P(YZ)/P(Z)P(X,Y,Z)={P(XZ)P(YZ)}/{P(Z)} such that the probability of deciding that XX and YY are not conditionally independent given ZZ is more than a half. For Jeffreys' prior, the false-positive probability uniformly converges to zero without depending on any parameter values, and no such an inconvenience occurs.

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