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PEnBayes: A Multi-Layered Ensemble Approach for Learning Bayesian Network Structure from Big Data

机译:PEnBayes:一种用于从大数据中学习贝叶斯网络结构的多层集成方法

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摘要

Discovering the Bayesian network (BN) structure from big datasets containing rich causal relationships is becoming increasingly valuable for modeling and reasoning under uncertainties in many areas with big data gathered from sensors due to high volume and fast veracity. Most of the current BN structure learning algorithms have shortcomings facing big data. First, learning a BN structure from the entire big dataset is an expensive task which often ends in failure due to memory constraints. Second, it is quite difficult to select a learner from numerous BN structure learning algorithms to consistently achieve good learning accuracy. Lastly, there is a lack of an intelligent method that merges separately learned BN structures into a well structured BN network. To address these shortcomings, we introduce a novel parallel learning approach called PEnBayes (Parallel Ensemble-based Bayesian network learning). PEnBayes starts with an adaptive data preprocessing phase that calculates the Appropriate Learning Size and intelligently divides a big dataset for fast distributed local structure learning. Then, PEnBayes learns a collection of local BN Structures in parallel using a two-layered weighted adjacent matrix-based structure ensemble method. Lastly, PEnBayes merges the local BN Structures into a global network structure using the structure ensemble method at the global layer. For the experiment, we generate big data sets by simulating sensor data from patient monitoring, transportation, and disease diagnosis domains. The Experimental results show that PEnBayes achieves a significantly improved execution performance with more consistent and stable results compared with three baseline learning algorithms.
机译:从大量包含丰富因果关系的大型数据集中发现贝叶斯网络(BN)结构,对于在许多领域中存在不确定性的情况下进行建模和推理具有越来越重要的价值,因为该区域由于数据量大且准确性高而从传感器收集了大数据。当前大多数BN结构学习算法都面临着大数据的缺点。首先,从整个大数据集中学习BN结构是一项昂贵的任务,由于内存限制,这种工作通常以失败告终。其次,很难从众多的BN结构学习算法中选择一个学习者来始终获得良好的学习准确性。最后,缺乏将单独学习的BN结构合并为结构良好的BN网络的智能方法。为了解决这些缺点,我们介绍了一种新颖的并行学习方法,称为PEnBayes(基于并行乐团的贝叶斯网络学习)。 PEnBayes从自适应数据预处理阶段开始,该阶段计算适当的学习大小,并智能地划分大型数据集以进行快速分布式的局部结构学习。然后,PEnBayes使用两层加权相邻基于矩阵的结构集成方法并行学习局部BN结构的集合。最后,PEnBayes使用全局层的结构集成方法将本地BN结构合并为全局网络结构。对于实验,我们通过模拟来自患者监测,运输和疾病诊断领域的传感器数据来生成大数据集。实验结果表明,与三种基线学习算法相比,PEnBayes可以显着提高执行性能,并具有更加一致和稳定的结果。

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