AIAPFeb 13, 2013

Tail Sensitivity Analysis in Bayesian Networks

arXiv:1302.3564v112 citations
Originality Incremental advance
AI Analysis

This work addresses the need for accurate tail sensitivity analysis in Bayesian networks, particularly for reliability and risk analysis, though it is incremental as it builds on existing simulation techniques.

The paper tackles the problem of efficiently simulating tail probabilities for a target variable in Bayesian networks, proposing two methods that reduce rejection rates compared to Monte Carlo simulation and are useful for sensitivity analysis in reliability and risk contexts.

The paper presents an efficient method for simulating the tails of a target variable Z=h(X) which depends on a set of basic variables X=(X_1, ..., X_n). To this aim, variables X_i, i=1, ..., n are sequentially simulated in such a manner that Z=h(x_1, ..., x_i-1, X_i, ..., X_n) is guaranteed to be in the tail of Z. When this method is difficult to apply, an alternative method is proposed, which leads to a low rejection proportion of sample values, when compared with the Monte Carlo method. Both methods are shown to be very useful to perform a sensitivity analysis of Bayesian networks, when very large confidence intervals for the marginal/conditional probabilities are required, as in reliability or risk analysis. The methods are shown to behave best when all scores coincide. The required modifications for this to occur are discussed. The methods are illustrated with several examples and one example of application to a real case is used to illustrate the whole process.

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