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BAYESIAN NETWORK WITH INTERVAL PROBABILITY PARAMETERS

机译:具有间隔概率参数的贝叶斯网络

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摘要

Interval data are widely used in real applications to represent the values of quantities in uncertain situations. However, the implied probabilistic causal relationships among interval-valued variables with interval data cannot be represented and inferred by general Bayesian networks with point-based probability parameters. Thus, it is desired to extend the general Bayesian network with effective mechanisms of representation, learning and inference of probabilistic causal relationships implied in interval data. In this paper, we define the interval probabilities, the bound-limited weak conditional interval probabilities and the probabilistic description, as well as the multiplication rules. Furthermore, we propose the method for learning the Bayesian network structure from interval data and the algorithm for corresponding approximate inferences. Experimental results show that our methods are feasible, and we conclude that the Bayesian network with interval probability parameters is the expansion of the general Bayesian network.
机译:间隔数据已广泛用于实际应用中,以表示不确定情况下的数量值。但是,具有间隔数据的间隔值变量之间的隐含概率因果关系无法通过具有基于点的概率参数的通用贝叶斯网络来表示和推断。因此,期望用间隔数据中隐含的概率因果关系的表示,学习和推断的有效机制来扩展通用贝叶斯网络。在本文中,我们定义了区间概率,有界限制的弱条件区间概率和概率描述,以及乘法规则。此外,我们提出了一种从区间数据中学习贝叶斯网络结构的方法以及相应的近似推断算法。实验结果表明我们的方法是可行的,并且得出结论,带有间隔概率参数的贝叶斯网络是一般贝叶斯网络的扩展。

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