Incremental Bayesian network structure learning in high dimensional domains

Amanullah Yasin, Philippe Leray
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引用次数: 4

Abstract

The recent advances in hardware and software has led to development of applications generating a large amount of data in real-time. To keep abreast with latest trends, learning algorithms need to incorporate novel data continuously. One of the efficient ways is revising the existing knowledge so as to save time and memory. In this paper, we proposed an incremental algorithm for Bayesian network structure learning. It could deal with high dimensional domains, where whole dataset is not completely available, but grows continuously. Our algorithm learns local models by limiting search space and performs a constrained greedy hill-climbing search to obtain a global model. We evaluated our method on different datasets having several hundreds of variables, in terms of performance and accuracy. The empirical evaluation shows that our method is significantly better than existing state of the art methods and justifies its effectiveness for incremental use.
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高维域的增量贝叶斯网络结构学习
最近硬件和软件的进步导致了实时生成大量数据的应用程序的发展。为了跟上最新的趋势,学习算法需要不断地吸收新的数据。其中一个有效的方法是修改现有的知识,以节省时间和记忆。本文提出了一种用于贝叶斯网络结构学习的增量算法。它可以处理高维域,在高维域,整个数据集不是完全可用的,但可以持续增长。我们的算法通过限制搜索空间来学习局部模型,并执行约束贪婪爬坡搜索来获得全局模型。我们在包含数百个变量的不同数据集上评估了我们的方法的性能和准确性。实证评估表明,我们的方法明显优于现有的最先进的方法,并证明了其增量使用的有效性。
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