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Collective mining of Bayesian networks from distributed heterogeneous data

机译:从分布式异构数据集中挖掘贝叶斯网络

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摘要

We present a collective approach to learning a Bayesian network from distributed heterogeneous data. In this approach, we first learn a local Bayesian network at each site using the local data. Then each site identifies the observations that are most likely to be evidence of coupling between local and non-local variables and transmits a subset of these observations to a central site. Another Bayesian network is learnt at the central site using the data transmitted from the local site. The local and central Bayesian networks are combined to obtain a collective Bayesian network, which models the entire data. Experimental results and theoretical justification that demonstrate the feasibility of our approach are presented.
机译:我们提出了一种从分布式异构数据中学习贝叶斯网络的集体方法。通过这种方法,我们首先使用本地数据在每个站点上学习本地贝叶斯网络。然后,每个站点识别最有可能是局部变量与非局部变量之间耦合的证据的观测值,并将这些观测值的子集传输到中心站点。使用从本地站点传输的数据在中心站点学习另一个贝叶斯网络。合并本地和中央贝叶斯网络以获得集体贝叶斯网络,该贝叶斯网络对整个数据进行建模。实验结果和理论依据证明了我们方法的可行性。

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