一种基于形式概念的高效分类方法

Nida Meddouri, Hela Khoufi, Mondher Maddouri
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摘要

知识发现数据(Knowledge discovery data, KDD)是一个不断发展的研究主题,旨在利用每天从各个计算应用领域收集的大量数据集。其基本思想是从数据集中提取隐藏的知识。它包括几个组成流程的任务,比如数据挖掘。分类和聚类是数据挖掘技术。提出了决策树归纳、贝叶斯网络、支持向量机和形式概念分析(FCA)等分类方法。FCA的选择可以用它提取隐藏知识的能力来解释。近年来,研究人员对组合一组分类器的集成方法(顺序/并行)很感兴趣。分类器的组合是通过投票技术实现的。在集成学习的背景下,很少有人关注FCA。本文提出了一种用最佳概念构造格的单个部分的新方法。该方法基于并行集成学习。它改进了基于FCA的最先进的方法,因为它处理的数据量更大。
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DFC: A Performant Dagging Approach of Classification Based on Formal Concept
Knowledge discovery data (KDD) is a research theme evolving to exploit a large data set collected every day from various fields of computing applications. The underlying idea is to extract hidden knowledge from a data set. It includes several tasks that form a process, such as data mining. Classification and clustering are data mining techniques. Several approaches were proposed in classification such as induction of decision trees, Bayes net, support vector machine, and formal concept analysis (FCA). The choice of FCA could be explained by its ability to extract hidden knowledge. Recently, researchers have been interested in the ensemble methods (sequential/parallel) to combine a set of classifiers. The combination of classifiers is made by a vote technique. There has been little focus on FCA in the context of ensemble learning. This paper presents a new approach to building a single part of the lattice with best possible concepts. This approach is based on parallel ensemble learning. It improves the state-of-the-art methods based on FCA since it handles more voluminous data.
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