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Discretization of Continuous Variables in Bayesian Networks Based on Matrix Decomposition

机译:基于矩阵分解的贝叶斯网络中连续变量的离散化

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摘要

Discretization of continuous variables (DCV) which could directly affect the results of Bayesian network inference (BNI) has been an important issue in Bayesian network (BN). Some common methods of DCV by the equal interval, the equal frequency, etc. always result in data loss which would make the results of BNI inaccurate. In this paper, a method of DCV in BN based on matrix decomposition is presented. This method could discretize the value of continuous variable into more states with different probability rather than one state, so it's more scientific and accurate. This paper makes a BN with two nodes, height and weight of each person, as an example and the simulation result demonstrates that the proposed method of DCV based on matrix decomposition can achieve discretization without data loss and ensure the accuracy of BNI.
机译:可以直接影响贝叶斯网络推断(BNI)结果的连续变量(DCV)离散化是贝叶斯网络(BN)中的重要问题。等间隔,等频率等DCV的一些常见方法总是会导致数据丢失,这将使BNI的结果不准确。本文提出了一种基于矩阵分解的BN DCV方法。该方法可以将连续变量的值离散化为更多概率不同的状态,而不是一个状态,因此更加科学,准确。以一个具有两个节点,每个人的身高和体重的BN为例,仿真结果表明,所提出的基于矩阵分解的DCV方法可以实现离散化而不会丢失数据,并保证了BNI的准确性。

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