基于分类的数据分割案例研究

B. K. Sarkar
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引用次数: 11

摘要

在机器学习的背景下,为分类问题设计准确的模型是一个值得关注的问题。训练集中优秀样本的包含情况、样本数量以及每个类类型在集合中所占的比例(足以设计模型)等各种因素在这一目的中发挥着重要作用。在这篇文章中,一项调查被引入,以解决什么比例的样本应该用于训练集,以开发一个更好的分类模型的问题。使用C4.5分类器在多个数据集上的实验结果表明,无论领域、大小和类别不平衡如何,在(20%,80%)和(30%,70%)之间的任何均匀分布的数据分区都可以被认为是构建分类模型的最佳样本分区。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A case study on partitioning data for classification
Designing accurate model for classification problem is a real concern in context of machine learning. The various factors such as inclusion of excellent samples in the training set, the number of samples as well as the proportion of each class type in the set (that would be sufficient for designing model) play important roles in this purpose. In this article, an investigation is introduced to address the question of what proportion of the samples should be devoted to the training set for developing a better classification model. The experimental results on several datasets, using C4.5 classifier, shows that any equidistributed data partitioning in between (20%, 80%) and (30%, 70%) may be considered as the best sample partition to build classification model irrespective to domain, size and class imbalanced.
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