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RECOVERING THE GLOBAL STRUCTURE FROM MULTIPLE LOCAL BAYESIAN NETWORKS

机译:从多个本地贝叶斯网络中恢复全球结构

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摘要

Bayesian networks are powerful tools for common knowledge representation and reasoning of partial beliefs under uncertainty. In the last decade, Bayesian networks have been successfully applied to a variety of problem domains and many Bayesian networks have been established. Confronted with many real-world applications, each Bayesian network established may be a local model of the whole knowledge domain. It is desirable to combine all local models of the whole domain into a global and more general representation. It is not realistic to expect the domain experts to construct the global model manually due to the too broad domain. As well, it is not feasible to relearn the model since the dataset may have been discarded or the whole domain may be distributed. Thus, constructing the global model by combining local models is doomed to be an alternative solution. This paper concentrates on finding a method of combination without loss of any information and free of datasets by capturing the graphical characterizations of global models. From the graphical perspective, this paper first captures two graphical characterizations to determine the skeleton and V-structure of global models. Moreover, a simple algorithm is elicited from these graphical characterizations to recover the global underlying model from multiple local models. A preliminary experiment demonstrates empirically that our algorithm is feasible.
机译:贝叶斯网络是用于不确定性下的常识表示和部分信念推理的强大工具。在过去的十年中,贝叶斯网络已经成功地应用于各种问题领域,并且已经建立了许多贝叶斯网络。面对许多实际应用,建立的每个贝叶斯网络可能是整个知识领域的本地模型。理想的是将整个域的所有局部模型组合成一个全局且更通用的表示形式。由于领域范围太广,期望领域专家手动构建全局模型是不现实的。同样,重新学习模型也是不可行的,因为数据集可能已被丢弃或整个域可能已分布。因此,通过组合局部模型来构建全局模型注定是替代解决方案。本文着重于通过捕获全局模型的图形化特征,找到一种不损失任何信息且没有数据集的组合方法。从图形的角度来看,本文首先捕获了两个图形特征,以确定全局模型的骨架和V结构。此外,从这些图形特征中得出一种简单的算法,可以从多个局部模型中恢复全局基础模型。初步实验从经验上证明了我们的算法是可行的。

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