Bayesian based subgroup discovery

T. Anwar, S. Asghar, S. Fong
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引用次数: 1

Abstract

Data Mining is concerned with extraction of interesting patterns or knowledge from huge amounts of Data. Generally data mining tasks are either predictive or descriptive. Classification falls under predictive induction while clustering and association rule mining fall under descriptive induction. Subgroup discovery is a task at the intersection of supervised learning and descriptive induction. In subgroup discovery we want to uncover individual patterns in data with a given property of interest. We want to find subgroups that cover a large population and are statistically different. The main application areas of subgroup discovery are exploration and descriptive induction, where the user wants to find the overview of dependencies between a target and many explaining variables. Many techniques have been proposed for discovering subgroups and some of these techniques are based on classification. But none of the techniques uses Bayesian networks for the generation of subgroups. Our contributions include a technique for the discovery of subgroups where the subgroups are generated using Bayesian networks.
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基于贝叶斯的子组发现
数据挖掘涉及从大量数据中提取有趣的模式或知识。通常,数据挖掘任务要么是预测性的,要么是描述性的。分类属于预测归纳,聚类和关联规则挖掘属于描述性归纳。子群发现是监督学习和描述归纳法的交叉任务。在子组发现中,我们希望发现具有给定感兴趣属性的数据中的单个模式。我们想要找到覆盖大量人口并且在统计上有所不同的亚群。子组发现的主要应用领域是探索和描述性归纳,其中用户希望找到目标和许多解释变量之间的依赖关系的概述。已经提出了许多用于发现子组的技术,其中一些技术是基于分类的。但是这些技术都没有使用贝叶斯网络来生成子群。我们的贡献包括一种发现子组的技术,其中子组是使用贝叶斯网络生成的。
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