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Mining and visualising ordinal data with non-parametric continuous BBNs

机译:使用非参数连续BBN挖掘和可视化序数数据

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摘要

Data mining is the process of extracting and analysing information from large databases. Graphical models are a suitable framework for probabilistic modelling. A Bayesian Belief Net (BBN) is a probabilistic graphical model, which represents joint distributions in an intuitive and efficient way. It encodes the probability density (or mass) function of a set of variables by specifying a number of conditional independence statements in the form of a directed acyclic graph. Specifying the structure of the model is one of the most important design choices in graphical modelling. Notwithstanding their potential, there are only a limited number of applications of graphical models on very complex and large databases. A method for mining ordinal multivariate data using non-parametric BBNs is presented. The main advantage of this method is that it can handle a large number of continuous variables, without making any assumptions about their marginal distributions, in a very fast manner. Once the BBN is learned from data, it can be further used for prediction. This approach allows for rapid conditionalisation, which is a very important feature of a BBN from a user's standpoint.
机译:数据挖掘是从大型数据库中提取和分析信息的过程。图形模型是概率建模的合适框架。贝叶斯信任网(BBN)是一种概率图形模型,它以直观有效的方式表示联合分布。它通过指定有向无环图形式的许多条件独立性语句来编码一组变量的概率密度(或质量)函数。在图形建模中,指定模型的结构是最重要的设计选择之一。尽管它们具有潜力,但是在非常复杂和大型的数据库上只有有限数量的图形模型应用。提出了一种使用非参数BBN挖掘有序多变量数据的方法。此方法的主要优点是,它可以以非常快的方式处理大量连续变量,而无需对其边际分布进行任何假设。一旦从数据中学到了BBN,就可以将其进一步用于预测。这种方法允许快速条件化,从用户的角度来看,这是BBN的非常重要的功能。

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