Research on Intelligent Application of Matrix Eigenvalue Method in Tensor Analysis

Yunkun Chen
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Abstract

This paper firstly studies the intelligent application of matrix eigenvalues and eigenvalue methods based on tensor analysis. Then, starting from the concept of eigenvalues and eigenvectors and the eigenvalue decomposition theorem, through intuitive geometric demonstration, eigenvalue deployment and high-dimensional data Two specific examples of dimensionality reduction, combined with MATLAB software to clarify the geometric intuition and practical application of eigenvalues and eigenvectors, in order for students to have a deep understanding of eigenvalues and eigenvectors from multiple perspectives.
矩阵特征值法在张量分析中的智能应用研究
本文首先研究了基于张量分析的矩阵特征值和特征值方法的智能应用。然后,从特征值和特征向量的概念以及特征值分解定理出发,通过直观的几何演示、特征值展开和高维数据降维的两个具体实例,结合MATLAB软件阐明特征值和特征向量的几何直观和实际应用,使学生从多个角度对特征值和特征向量有一个深刻的理解。
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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