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Structure learning of Bayesian Networks using global optimization with applications in data classification

机译:使用全局优化及其数据分类应用的贝叶斯网络结构学习

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Bayesian Networks are increasingly popular methods of modeling uncertainty in artificial intelligence and machine learning. A Bayesian Network consists of a directed acyclic graph in which each node represents a variable and each arc represents probabilistic dependency between two variables. Constructing a Bayesian Network from data is a learning process that consists of two steps: learning structure and learning parameter. Learning a network structure from data is the most difficult task in this process. This paper presents a new algorithm for constructing an optimal structure for Bayesian Networks based on optimization. The algorithm has two major parts. First, we define an optimization model to find the better network graphs. Then, we apply an optimization approach for removing possible cycles from the directed graphs obtained in the first part which is the first of its kind in the literature. The main advantage of the proposed method is that the maximal number of parents for variables is not fixed a priory and it is defined during the optimization procedure. It also considers all networks including cyclic ones and then choose a best structure by applying a global optimization method. To show the efficiency of the algorithm, several closely related algorithms including unrestricted dependency Bayesian Network algorithm, as well as, benchmarks algorithms SVM and C4.5 are employed for comparison. We apply these algorithms on data classification; data sets are taken from the UCI machine learning repository and the LIBSVM.
机译:贝叶斯网络是在人工智能和机器学习中建模不确定性的日益流行的方法。贝叶斯网络由有向无环图组成,其中每个节点代表一个变量,每个弧代表两个变量之间的概率依存关系。从数据构建贝叶斯网络是一个学习过程,它包括两个步骤:学习结构和学习参数。从数据中学习网络结构是此过程中最困难的任务。本文提出了一种基于优化构造贝叶斯网络最优结构的新算法。该算法有两个主要部分。首先,我们定义一个优化模型以查找更好的网络图。然后,我们采用一种优化方法,从第一部分获得的有向图中去除可能的周期,这是文献中的第一篇。所提出的方法的主要优点是变量的最大父母数不是先验固定的,而是在优化过程中确定的。它还考虑了包括循环网络在内的所有网络,然后通过应用全局优化方法来选择最佳结构。为了显示该算法的效率,采用了几种密切相关的算法进行比较,这些算法包括无限制依赖贝叶斯网络算法以及基准算法SVM和C4.5。我们将这些算法应用于数据分类;数据集来自UCI机器学习存储库和LIBSVM。

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