基于大数据的相似学习:一个案例研究

Albert Agisha Ntwali
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引用次数: 5

摘要

当前这篇文章的目的是用一些相似的方法来分析学生的表现。这种分析将根据学生通常吃午饭的方式对他们进行分类。在整个过程中,我们定义了一些相似度度量的概念,并最终选择了一些度量来评估各种数据类型的属性。最近邻方法用于分类,使用k -最近邻(KNN)算法。最后比较了三种数据类型下的性能:数值数据、分类数据和混合数据。最后,使用Python编程语言对结果进行了测试和验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Similarity Learning on Big Data: A Case Study
: The current article aims to analyze student performance using some similarity measures. The analysis will result in a classification of the student based on how they usually take their lunch. Throughout the processes, we define some notions of similarity measures and finally select some measures to evaluate various data types of attributes. The Nearest-Neighbor approach is used for classification, with the K-Nearest-Neighbor (KNN) algorithm. At last we compare the performance on three data types: numerical, categorical and mixed data. Finally, the result is tested and validated using the Python programming language.
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