High Dimensional Datasets Optimization handling by Wrapper Sequential Feature Selection in Forward Mode - A Comparative Survey

Ravi Shankar Mishra
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Abstract

High-quality data might be difficult to be produced when there is a large quantity of information in a single educational dataset. Researchers in the field of educational data mining have recently begun to rely more and more on data mining methodologies in their investigations. However, instead of undertaking feature selection methods, many research investigations have focused on picking appropriate learning algorithms. Since these datasets are computationally complicated, they need a lot of computing time for categorization. This article examines the use of wrapper approaches for the purpose of managing high-dimensional datasets in order to pick appropriate features for a machine learning approach. This study then suggests a strategy for improving the quality of student or educational datasets. For future investigations, the suggested framework that utilizes filter and wrapper-based approaches may be used for many medical and industrial datasets.
前向模式下包装器序列特征选择对高维数据集的优化处理——比较研究
当单个教育数据集中存在大量信息时,可能难以产生高质量的数据。近年来,教育数据挖掘领域的研究人员开始越来越多地依赖于数据挖掘方法。然而,许多研究都集中在选择合适的学习算法上,而不是采用特征选择方法。由于这些数据集计算复杂,它们需要大量的计算时间进行分类。本文探讨了如何使用包装器方法来管理高维数据集,以便为机器学习方法选择合适的特性。然后,本研究提出了提高学生或教育数据集质量的策略。对于未来的研究,建议的使用过滤器和包装为基础的方法的框架可用于许多医疗和工业数据集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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