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Learning Bayesian Network Structure from Incomplete Data without Any Assumption

机译:不加假设地从不完整数据中学习贝叶斯网络结构

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Since most real-life data contain missing values, reasoning and learning with incomplete data has become crucial in data mining and machine learning. In particular, Bayesian networks are one machine learning technique that allows for reasoning with incomplete data, but training such networks on incomplete data may be a difficult task. Many methods were thus proposed to learn Bayesian network structure from incomplete data, based on multiple structure generation and scoring of their adequacy to the dataset. However, this kind of approaches may be time-consuming. Therefore we propose an efficient dependency analysis approach that uses a redefinition of probability calculation to take incomplete records into account while learning BN structure, without generating multiple possibilities. Some experiments on well-known benchmarks are described to show the validity of our proposal.
机译:由于大多数现实生活中的数据都包含缺失的值,因此使用不完整的数据进行推理和学习在数据挖掘和机器学习中变得至关重要。特别地,贝叶斯网络是一种允许对不完整数据进行推理的机器学习技术,但是在不完整数据上训练此类网络可能是一项艰巨的任务。因此,提出了许多方法,基于多种结构的生成以及它们对数据集的适用性评分,可以从不完整的数据中学习贝叶斯网络结构。但是,这种方法可能很耗时。因此,我们提出了一种有效的依赖性分析方法,该方法使用概率计算的重新定义在学习BN结构时将不完整的记录考虑在内,而不会产生多种可能性。描述了一些关于著名基准的实验,以证明我们的建议的有效性。

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