一种提高分类性能的混合方法

Ibrahim Kök, Murat Emre Davarci, S. Özdemir
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引用次数: 0

摘要

影响分类性能的因素有很多。数据的数量、大小、类型和分类方法是最明显的影响因素。对于完全相同的数据集,使用不同的分类方法可能会获得不同的分类性能值,因此,开发更准确、适用于多领域的分类模型对于分类问题具有重要意义。本文提出了一种结合Naïve贝叶斯、感知器和KNN的混合分类模型。在这个模型中,使用了一个称为决策函数的新参数。提出的决策函数旨在综合考虑三种算法的分类结果,提高分类成功率。性能评价结果表明,提出的决策函数显著提高了分类成功率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A hybrid approach for improving the classification performance
There are many factors that affect the performance of classification. The volume, size, type of data and classification methods are the most obvious factors. For the exact same data set, it is possible to achieve different classification performance values by using different classification methods Hence, the development of classification models that are more accurate and applicable to many areas for classification problems has a great importance. In this work, a hybrid classification model combining Naïve Bayes, Perceptron and KNN is proposed. In this model, a novel parameter called Decision Function is used. The proposed decision function aims to increase the classification success by considering the classification results of the three algorithms The performance evaluation results show that the proposed decision function significantly improves the classification success.
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