Data Mining Management System Optimization using Swarm Intelligence

Asraa Ahmed Hasan Al_Mashhadani, Timur İnan, A. S. Ahmed
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Abstract

Because of a phenomenon known as the “curs e of dimensionality,” standard machine learning algorithms have difficulty dealing with high-dimensional data. There are more possible examples in the data space as the number of dimensions increases; however, as the number of dimensions increases, the amount of data that can be accessed decreases. There are a greater number of potential instances in the data space when there are more dimensions. The amount of data required by machine learning algorithms to address problems with such a high dimension increases exponentially with the number of problem-related characteristics. In this paper, we examine the suggested algorithms' methods for selecting features and their relationship to the data representation.
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基于群体智能的数据挖掘管理系统优化
由于一种被称为“维数曲线”的现象,标准的机器学习算法难以处理高维数据。随着维数的增加,数据空间中可能出现的例子也越来越多;但是,随着维数的增加,可以访问的数据量会减少。当有更多维度时,数据空间中的潜在实例数量会更多。机器学习算法解决如此高维问题所需的数据量随着问题相关特征的数量呈指数增长。在本文中,我们研究了建议的算法选择特征的方法及其与数据表示的关系。
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