面向情感分析的新型凸多面体分类器

Soufiane El Mrabti, M. Lazaar, Mohammed Al Achhab, Hicham Omara
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引用次数: 1

摘要

本文提出了一种基于凸壳几何概念的凸多面体分类器(NCPC)。NCPC基本上是线性分段分类器(LPC)。它将线性不可分的数据划分为各种线性可分的子集。对于每一个数据子集,使用一个线性超平面对它们进行分类。我们通过将该分类器与两种特征选择方法(卡方和方差f值)相结合来评估该分类器的性能。使用两个数据集,结果表明我们提出的分类器优于其他基于LPC的分类器。
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Novel Convex Polyhedron Classifier for Sentiment Analysis
In this paper, we propose a Novel Convex Polyhedron classifier (NCPC) based on the geometric concept convex hull. NCPC is basically a linear piecewise classifier (LPC). It partitions linearly non-separable data into various linearly separable subsets. For each of these subset of data, a linear hyperplane is used to classify them. We evaluate the performance of this classifier by combining it with two feature selection methods (Chi- squared and Anova F-value). Using two datasets, the results indicate that our proposed classifier outperforms other LPC- based classifiers.
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