A New Machine Learning Technique Based on Straight Line Segments

J. Ribeiro, R. F. Hashimoto
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引用次数: 6

Abstract

This paper presents a new supervised machine learning technique based on distances between points and straight lines segments. Basically, given a training data set, this technique estimates a function where its value is calculated using the distance between points and two sets of straight line segments. A training algorithm has been developed to find these sets of straight line segments that minimize the mean square error. This technique has been applied on two real pattern recognition problems: (1) breast cancer data set to classify tumors as benign or malignant; (2) wine data set to classify wines in one of the three different cultivators from which they could be derived. This technique was also tested with two artificial data sets in order to show its ability to solve approximation function problems. The obtained results show that this technique has a good performance in all of these problems and they indicate that it is a good candidate to be used in machine learning applications
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一种新的基于直线段的机器学习技术
提出了一种基于点与直线段之间距离的监督式机器学习方法。基本上,给定一个训练数据集,该技术估计一个函数,其值是使用点和两组直线段之间的距离计算的。已经开发了一种训练算法来找到这些使均方误差最小的直线段集。该技术已应用于两个实际的模式识别问题:(1)乳腺癌数据集对肿瘤进行良性或恶性分类;(2)葡萄酒数据集,用于对三种不同栽培器中的葡萄酒进行分类。该方法还在两个人工数据集上进行了测试,以显示其解决近似函数问题的能力。得到的结果表明,该技术在所有这些问题上都有很好的性能,这表明它是机器学习应用的一个很好的候选者
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