官术网_书友最值得收藏!

Diagonalization and symmetric matrices

Let's suppose we have a matrix  that has  eigenvectors. We put these vectors into a matrix X that is invertible and multiply the two matrices. This gives us the following:

We know from  that when dealing with matrices, this becomes , where  and each xi has a unique λi. Therefore, .

Let's move on to symmetric matrices. These are special matrices that, when transposed, are the same as the original, implying that  and for all . This may seem rather trivial, but its implications are rather strong.

The spectral theorem states that if a matrix  is a symmetric matrix, then there exists an orthonormal basis for , which contains the eigenvectors of A.

This theorem is important to us because it allows us to factorize symmetric matrices. We call this spectral decomposition (also sometimes referred to as Eigendecomposition).

Suppose we have an orthogonal matrix Q, with the orthonormal basis of eigenvectors  and  being the matrix with corresponding eigenvalues.

From earlier, we know that  for all ; therefore, we have the following:

Note: Λ comes after Q because it is a diagonal matrix, and the s need to multiply the individual columns of Q.

By multiplying both sides by QT, we get the following result:

 

主站蜘蛛池模板: 嘉兴市| 平舆县| 古交市| 桐庐县| 吉林市| 航空| 静安区| 黎城县| 手机| 深水埗区| 基隆市| 南昌市| 新巴尔虎右旗| 名山县| 德格县| 邵阳市| 文水县| 观塘区| 谷城县| 司法| 新津县| 靖宇县| 富宁县| 溧水县| 平凉市| 东阿县| 建平县| 红河县| 乐东| 东源县| 土默特右旗| 宕昌县| 安吉县| 云霄县| 永善县| 武强县| 建平县| 东阳市| 化德县| 磴口县| 乌审旗|