Efficient Closure Operators for FCA-Based Classification

Nida Meddouri, Mondher Maddouri
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Abstract

Knowledge discovery in databases (KDD) aims to exploit the large amounts of data collected every day in various fields of computing application. The idea is to extract hidden knowledge from a set of data. It gathers several tasks that constitute a process, such as: data selection, pre-processing, transformation, data mining, visualization, etc. Data mining techniques include supervised classification and unsupervised classification. Classification consists of predicting the class of new instances with a classifier built on learning data of labeled instances. Several approaches were proposed such as: the induction of decision trees, Bayes, nearest neighbor search, neural networks, support vector machines, and formal concept analysis. Learning formal concepts always refers to the mathematical structure of concept lattice. This article presents a state of the art on formal concept analysis classifier. The authors present different ways to calculate the closure operators from nominal data and also present new approach to build only a part of the lattice including the best concepts. This approach is based on Dagging (ensemble method) that generates an ensemble of classifiers, each one represents a formal concept, and combines them by a voting rule. Experimental results are given to prove the efficiency of the proposed method.
基于fca分类的高效闭包算子
数据库中的知识发现(Knowledge discovery in databases, KDD)旨在利用每天在计算应用的各个领域中收集到的大量数据。这个想法是从一组数据中提取隐藏的知识。它集合了构成一个过程的几个任务,如:数据选择、预处理、转换、数据挖掘、可视化等。数据挖掘技术包括监督分类和非监督分类。分类包括使用基于标记实例学习数据的分类器来预测新实例的类别。提出了几种方法,如:决策树归纳、贝叶斯、最近邻搜索、神经网络、支持向量机和形式化概念分析。形式概念的学习总是涉及到概念格的数学结构。本文介绍了形式概念分析分类器的研究现状。作者提出了从标称数据中计算闭包算子的不同方法,并提出了仅构建包含最佳概念的部分晶格的新方法。该方法基于Dagging(集成方法),该方法生成分类器的集成,每个分类器代表一个正式概念,并通过投票规则将它们组合在一起。实验结果证明了该方法的有效性。
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