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A New Data Mining Method of Iterative Dimensionality Reduction Derived from Partial Least-Squares Regression

机译:一种新的迭代维度减少的新数据挖掘方法,源自偏最小二乘回归

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The main information retrieval and information noise elimination were the essential technology for data mining. The multiple correlation among Multi-index was one of the main reasons for difficult to determine independent variables set in a data mining regression. The paper introduced a new iterative dimensionality reduction method based on partial least-squares regression. Most of the independent variables set should be contained in the original mathematical model in order to avoid missing necessary important information. Some irrelevant or less relevant variables were excluded through successive iterations and the conditions ensuring model accuracy and minimizing the loss of information must be matched at the same time. Ultimately the regression model including important variables set was highly refined. The truly physical non-linear model reflected the relationship among magnetic field strength, strain and magnetic frequency in Giant Magnetostrictive Material (GMM) was deduced by using the iterative method.
机译:主要信息检索和信息噪声消除是数据挖掘的基本技术。多索引之间的多个相关性是难以确定在数据挖掘回归中设置的独立变量的主要原因之一。本文介绍了基于偏最小二乘回归的新迭代维度减少方法。大多数独立变量集应包含在原始数学模型中,以避免缺少必要的重要信息。通过连续迭代排除一些无关或更少的相关变量,并确保模型准确性和最小化信息损失的条件必须同时匹配。最终,包括重要变量集的回归模型非常精致。真正的物理非线性模型反映了磁场强度的关系,通过使用迭代方法推导出巨磁致伸缩材料(GMM)中的应变和磁频。

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