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Fuzzy Rough Set Prototype Selection for Regression

机译:回归的模糊粗糙集原型选择

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Instance selection methods are a class of preprocessing techniques that have been widely studied in machine learning to remove redundant or noisy instances from a training set. The main focus of such prior efforts has been on the selection of suitable training instances to perform a classification task for crisp class labels. In this paper, we propose a novel instance selection technique termed Fuzzy Rough Set Prototype Selection for Regression (FRPS-R) for solving regression problems, where the outcome is continuous. We use concepts from fuzzy rough set theory and extend the currently well-known fuzzy rough set prototype selection technique to model the quality of all available elements and then use a wrapper approach to select an optimal subset of high-quality instances; thereby generalizing the idea. Our experimental evaluation shows that the application of our proposed instance selection technique can significantly improve the predictive performance of the weighted k-nearest neighbor regression algorithm, in particular when noise is present in the original training set.
机译:实例选择方法是一类预处理技术,已在机器学习中进行了广泛研究,以从训练集中删除多余或嘈杂的实例。这些现有努力的主要焦点在于选择合适的训练实例以执行用于清晰的类别标签的分类任务。在本文中,我们提出了一种新颖的实例选择技术,称为“模糊回归粗糙集原型选择”(FRPS-R),用于解决结果是连续的回归问题。我们使用模糊粗糙集理论的概念,并扩展了当前众所周知的模糊粗糙集原型选择技术,以对所有可用元素的质量进行建模,然后使用包装器方法选择高质量实例的最佳子集。从而概括了这个想法。我们的实验评估表明,我们提出的实例选择技术的应用可以显着提高加权k最近邻回归算法的预测性能,尤其是当原始训练集中存在噪声时。

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