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An efficient linear regression classifier

机译:有效的线性回归分类器

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摘要

Pattern recognition is one of the most important research topics in recent days. In this area, one of the crucial problems is the design of the classifier. The most classic and simplest classifier is the K-NN algorithm, and it has been widely used in many fields such as text recognition and face recognition. In this paper, we propose an efficient and simple classifier, called linear regression classifier (LRC), which considers the nature of the different patterns. We first propose LRC-LSE algorithm based on the LSE estimation algorithm, and classify the data according to the linear regression errors. In addition, considering the multi-collinearity, we propose LRC-PLS algorithm based on the PLS estimation approach, further, we evaluate our algorithm in face recognition. Experimental results demonstrate that our algorithm achieves the better classification results than K-NN algorithm with a lower computational cost.
机译:模式识别是最近几天最重要的研究主题之一。 在该领域,一个关键问题是分类器的设计。 最经典和最简单的分类器是K-NN算法,它已广泛用于许多领域,例如文本识别和面部识别。 在本文中,我们提出了一种高效且简单的分类器,称为线性回归分类器(LRC),其考虑了不同模式的性质。 我们首先提出基于LSE估计算法的LRC-LSE算法,并根据线性回归误差对数据进行分类。 另外,考虑到多相共同性,我们提出了基于PLS估计方法的LRC-PLS算法,进一步评估了我们的人脸识别的算法。 实验结果表明,我们的算法比计算成本较低的K-NN算法实现了比K-NN算法更好的分类结果。

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