2 research outputs found

    Importance sampling on relational Bayesian networks

    Get PDF
    We present techniques for importance sampling from distributions defined representation language, and therefore can be applied in situations where sampling from a standard Bayesian Network representation is infeasible. We describe experimental results from using standard, adaptive and backward sampling strategies. Furthermore, we use in our experiments a model that illustrates a fully general way of translating the recent framework of Markov Logic Networks into Relational Bayesian Networks
    corecore