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A Modified K-Nearest Neighbor Algorithm Using Feature Optimization

机译:一种基于特征优化的改进的K最近邻算法

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A classification technique is an organized approach for building classification model from given input dataset. The learning algorithm of each technique is employed to build a model used to find the relationship between attribute set and class label of the given input data. Presence of irrelevant information in the data set reduces the speed and quality of learning. The technique of feature selection reduces the amount of data needed and execution time and it also improves the accuracy for prediction in the classification problem. In this paper we have modified K- Nearest Neighbor algorithm with relevant feature selection which selects the relevant features and removes irrelevant features of the dataset automatically.
机译:分类技术是一种根据给定输入数据集构建分类模型的有组织方法。使用每种技术的学习算法来构建一个模型,该模型用于查找给定输入数据的属性集和类标签之间的关系。数据集中不相关信息的存在降低了学习的速度和质量。特征选择技术减少了所需的数据量和执行时间,还提高了分类问题中预测的准确性。在本文中,我们使用相关特征选择修改了K最近邻算法,该算法选择相关特征并自动删除数据集的不相关特征。

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