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Local Feature Selection by Formal Concept Analysis for Multi-class Classification

机译:基于形式概念分析的多类分类局部特征选择

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摘要

In this paper, we propose a multi-class classification algorithm to apply it to data sets increasing frequently. The algorithm performs lazy learning based on formal concept analysis. We designed it so that it obtains localness in predicting classes of test data and feature selection simultaneously. Prom a given data set that consists of a set of training data and a set of test data, the algorithm generates a single formal concept lattice. Every formal concept in the lattice represents a cluster of data that are generated by various feature selections. In order to classify each test datum, plausible clusters are selected and combined into a set of neighbors for the test datum. Our algorithm can construct sets of neighbors for test data that are never generated by other algorithms, e.g., the k-nearest neighbor algorithm and decision tree classifiers. We compare our algorithm with other algorithms by experiments using UCI datasets and show that ours is comparable to the others at the viewpoint of correctness.
机译:在本文中,我们提出了一种多类分类算法,将其应用于频繁增加的数据集。该算法基于形式概念分析执行懒惰学习。我们对其进行了设计,以使其在预测测试数据类别和特征选择的同时获得局部性。验证由一组训练数据和一组测试数据组成的给定数据集,该算法将生成单个形式概念格。网格中的每个形式概念都代表由各种特征选择生成的数据集群。为了对每个测试基准进行分类,选择合理的簇并将其合并为测试基准的一组邻居。我们的算法可以构造测试数据的邻居集,而其他数据则永远不会通过其他算法生成,例如k最近邻居算法和决策树分类器。通过使用UCI数据集进行的实验,我们将我们的算法与其他算法进行了比较,并从正确性的角度证明了我们的算法与其他算法具有可比性。

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