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首页> 外文期刊>International journal of computers, communications and control >A New Linear Classifier Based on Combining Supervised and Unsupervised Techniques
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A New Linear Classifier Based on Combining Supervised and Unsupervised Techniques

机译:结合有监督技术和无监督技术的新型线性分类器

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摘要

The aim of the research reported in the paper is to obtain an alternative approach in using Support Vector Machine (SVM) in case of nonlinearly separable data based on using the k-means algorithm instead of the standard kernel based approach. The SVM is a relatively new concept in machine learning and it was introduced by Vapnik in 1995. In designing a classifier, two main problems have to be solved, on one hand the option concerning a suitable structure and on the other hand the selection of an algorithm for parameter estimation. The algorithm for parameter estimation performs the optimization of a convenable selected cost function with respect to the empirical risk which is directly related to the representativeness of the available learning sequence. The choice of the structure is made such that to maximize the generalization capacity, that is to assure good performance in classifying new data coming from the same classes. In solving these problems one has to establish a balance between the accuracy in encoding the learning sequence and the generalization capacities because usually the over-fitting prevents the minimization of the empirical risk.
机译:本文报道的研究目的是基于k均值算法而不是基于标准核的方法,获得一种在非线性可分离数据的情况下使用支持向量机(SVM)的替代方法。 SVM是机器学习中的一个相对较新的概念,由Vapnik于1995年引入。在设计分类器时,必须解决两个主要问题,一方面涉及适合的结构的选择,另一方面选择支持的结构。参数估计的算法。用于参数估计的算法针对与实际风险相关的经验风险进行了可优化的选定成本函数的优化,该经验风险直接与可用学习序列的代表性相关。对结构进行选择,以使泛化能力最大化,即确保对来自相同类的新数据进行分类时具有良好的性能。在解决这些问题中,必须在学习序列编码的准确性和泛化能力之间建立平衡,因为通常过度拟合会阻止经验风险的最小化。

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