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Let A be the matrix of the quadratic form

\({\bf{9}}x_{\bf{1}}^{\bf{2}} + {\bf{7}}x_{\bf{2}}^{\bf{2}} + {\bf{11}}x_{\bf{3}}^{\bf{2}} - {\bf{8}}{x_{\bf{1}}}{x_{\bf{2}}} + {\bf{8}}{x_{\bf{1}}}{x_{\bf{3}}}\)

It can be shown that the eigenvalues of A are 3,9, and 15. Find an orthogonal matrix P such that the change of variable \({\bf{x}} = P{\bf{y}}\) transforms \({{\bf{x}}^T}A{\bf{x}}\) into a quadratic form which no cross-product term. Give P and the new quadratic form.

Short Answer

Expert verified

The matrix Pis \(P = \left( {\begin{aligned}{{}}{ - \frac{2}{3}}&{ - \frac{1}{3}}&{\frac{2}{3}}\\{ - \frac{2}{3}}&{\frac{2}{3}}&{ - \frac{1}{3}}\\{\frac{1}{3}}&{\frac{2}{3}}&{\frac{2}{3}}\end{aligned}} \right)\).

The new quadratic form is \(3y_1^2 + 9y_2^2 + 15y_3^2\).

Step by step solution

01

Find the eigenvalues of the coefficient matrix of the quadratic equation

The coefficient matrix for the equation \(9x_1^2 + + 7x_2^2 + 11x_3^2 - 8{x_1}{x_2} + 8{x_1}{x_3}\) is shown as:

\(A = \left( {\begin{aligned}{{}}9&{ - 4}&4\\{ - 4}&7&0\\4&0&{11}\end{aligned}} \right)\)

The characteristic equation of A can be written as:

\(\begin{aligned}{}\det \left( {A - \lambda I} \right) &= 0\\\left| {\begin{aligned}{{}}{9 - \lambda }&{ - 4}&4\\{ - 4}&{7 - \lambda }&0\\4&0&{11 - \lambda }\end{aligned}} \right| &= 0\\\left( {\lambda - 3} \right)\left( {\lambda - 9} \right)\left( {\lambda - 15} \right) &= 0\\\lambda &= 3,9,15\end{aligned}\)

02

Find the eigen vector of matrix A

Find the eigenvector for \(\lambda = 3\):

\(\begin{aligned}{}\left( {A - 3I} \right)X & = 0\\\left( {\begin{aligned}{{}}6&{ - 4}&4\\{ - 4}&4&0\\4&0&8\end{aligned}} \right)\left( {\begin{aligned}{{}}{{x_1}}\\{{x_2}}\\{{x_3}}\end{aligned}} \right) & = \left( {\begin{aligned}{{}}0\\0\end{aligned}} \right)\\{x_1} + 2{x_3} = 0\\{x_2} + 2{x_3} & = 0\end{aligned}\)

Thus, the general solution of the equation is:

\(\left( {\begin{aligned}{{}}{{x_1}}\\{{x_2}}\\{{x_3}}\end{aligned}} \right) = \left( {\begin{aligned}{{}}{ - 2}\\{ - 2}\\1\end{aligned}} \right)\)

Find the eigenvector for \(\lambda = 9\):

\(\begin{aligned}{}\left( {A - 9I} \right)X & = 0\\\left( {\begin{aligned}{{}}1&0&{\frac{1}{2}}\\0&1&{ - 1}\\0&0&0\end{aligned}} \right)\left( {\begin{aligned}{{}}{{x_1}}\\{{x_2}}\\{{x_3}}\end{aligned}} \right) & = \left( {\begin{aligned}{{}}0\\0\\0\end{aligned}} \right)\\{x_1} + \frac{1}{2}{x_3} & = 0\\{x_2} - {x_3} & = 0\end{aligned}\)

Thus, the general solution of the equation is\(\left( {\begin{aligned}{{}}{{x_1}}\\{{x_2}}\\{{x_3}}\end{aligned}} \right) = \left( {\begin{aligned}{{}}{ - \frac{1}{2}}\\1\\1\end{aligned}} \right)\).

Find the eigenvector for \(\lambda = 15\):

\(\begin{aligned}{}\left( {A - 15I} \right)X & = 0\\\left( {\begin{aligned}{{}}{ - 6}&{ - 4}&4\\{ - 4}&{ - 8}&0\\4&0&{ - 3}\end{aligned}} \right)\left( {\begin{aligned}{{}}{{x_1}}\\{{x_2}}\\{{x_3}}\end{aligned}} \right) & = \left( {\begin{aligned}{{}}0\\0\\0\end{aligned}} \right)\\ - 6{x_1} - 4{x_2} + 4{x_3} & = 0\\ - 4{x_1} - 8{x_2} & = 0\\4{x_1} - 3{x_2} & = 0\end{aligned}\)

Thus, the general solution of the equation is\(\left( {\begin{aligned}{{}}{{x_1}}\\{{x_2}}\\{{x_3}}\end{aligned}} \right) = \left( {\begin{aligned}{{}}2\\{ - 1}\\2\end{aligned}} \right)\).

03

Find normalized eigen vectors of A

The normalized eigenvectors are shown below:

\(\begin{aligned}{}{{\bf{u}}_1} & = \frac{1}{{\sqrt {\left( { - 2} \right) + {{\left( { - 2} \right)}^2} + {{\left( 1 \right)}^2}} }}\left( {\begin{aligned}{{}}{ - 2}\\{ - 2}\\1\end{aligned}} \right)\\ & = \left( {\begin{aligned}{{}}{ - \frac{2}{3}}\\{ - \frac{2}{3}}\\{\frac{1}{3}}\end{aligned}} \right)\end{aligned}\)

And,

\(\begin{aligned}{}{{\bf{u}}_2} &= \frac{1}{{\sqrt {{{\left( { - \frac{1}{2}} \right)}^2} + {{\left( 1 \right)}^2} + {{\left( 1 \right)}^2}} }}\left( {\begin{aligned}{{}}{ - \frac{1}{2}}\\1\\1\end{aligned}} \right)\\ &= \left( {\begin{aligned}{{}}{ - \frac{1}{3}}\\{\frac{2}{3}}\\{\frac{2}{3}}\end{aligned}} \right)\end{aligned}\)

And,

\(\begin{aligned}{}{{\bf{u}}_3} &= \frac{1}{{\sqrt {{{\left( 2 \right)}^2} + {{\left( { - 1} \right)}^2} + {{\left( 2 \right)}^2}} }}\left( {\begin{aligned}{{}}2\\{ - 1}\\2\end{aligned}} \right)\\ &= \left( {\begin{aligned}{{}}{\frac{2}{3}}\\{ - \frac{1}{3}}\\{\frac{2}{3}}\end{aligned}} \right)\end{aligned}\)

04

Write the matrix P and D

Write matrix Pusing the normalized eigenvectors:

\(\begin{aligned}{}P &= \left( {\begin{aligned}{{}}{{{\bf{u}}_1}}&{{{\bf{u}}_2}}&{{{\bf{u}}_3}}\end{aligned}} \right)\\ &= \left( {\begin{aligned}{{}}{ - \frac{2}{3}}&{ - \frac{1}{3}}&{\frac{2}{3}}\\{ - \frac{2}{3}}&{\frac{2}{3}}&{ - \frac{1}{3}}\\{\frac{1}{3}}&{\frac{2}{3}}&{\frac{2}{3}}\end{aligned}} \right)\end{aligned}\)

Write matrix D using the eigenvalues of A.

\(D = \left( {\begin{aligned}{{}}3&0&0\\0&9&0\\0&0&{15}\end{aligned}} \right)\)

05

Find the new quadratic form

Consider the expression \({{\bf{x}}^T}A{\bf{x}}\).

\(\begin{aligned}{}{{\bf{x}}^T}A{\bf{x}} &= {\left( {P{\bf{y}}} \right)^T}A\left( {P{\bf{y}}} \right)\\ &= {{\bf{y}}^T}{P^T}AP{\bf{y}}\\ &= {{\bf{y}}^r}D{\bf{y}}\\ &= \left( {\begin{aligned}{{}}{{y_1}}&{{y_2}}&{{y_3}}\end{aligned}} \right)\left( {\begin{aligned}{{}}3&0&0\\0&9&0\\0&0&{15}\end{aligned}} \right)\left( {\begin{aligned}{{}}{{y_1}}\\{{y_2}}\\{{y_3}}\end{aligned}} \right)\\ &= 3y_1^2 + 9y_2^2 + 15y_3^2\end{aligned}\)

Thus, the new quadratic form is \(3y_1^2 + 9y_2^2 + 15y_3^2\).

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Most popular questions from this chapter

Orthogonally diagonalize the matrices in Exercises 13–22, giving an orthogonal matrix\(P\)and a diagonal matrix\(D\). To save you time, the eigenvalues in Exercises 17–22 are: (17)\( - {\bf{4}}\), 4, 7; (18)\( - {\bf{3}}\),\( - {\bf{6}}\), 9; (19)\( - {\bf{2}}\), 7; (20)\( - {\bf{3}}\), 15; (21) 1, 5, 9; (22) 3, 5.

14. \(\left( {\begin{aligned}{{}}{\,1}&{ - 5}\\{ - 5}&{\,\,1}\end{aligned}} \right)\)

10.Determine which of the matrices in Exercises 7–12 are orthogonal. If orthogonal, find the inverse.

10. \(\left( {\begin{aligned}{{}}{1/3}&{\,\,2/3}&{\,\,2/3}\\{2/3}&{\,\,1/3}&{ - 2/3}\\{2/3}&{ - 2/3}&{\,\,1/3}\end{aligned}} \right)\)

Question: In Exercises 15 and 16, construct the pseudo-inverse of \(A\). Begin by using a matrix program to produce the SVD of \(A\), or, if that is not available, begin with an orthogonal diagonalization of \({A^T}A\). Use the pseudo-inverse to solve \(A{\rm{x}} = {\rm{b}}\), for \({\rm{b}} = \left( {6, - 1, - 4,6} \right)\) and let \(\mathop {\rm{x}}\limits^\^ \)be the solution. Make a calculation to verify that \(\mathop {\rm{x}}\limits^\^ \) is in Row \(A\). Find a nonzero vector \({\rm{u}}\) in Nul\(A\), and verify that \(\left\| {\mathop {\rm{x}}\limits^\^ } \right\| < \left\| {\mathop {\rm{x}}\limits^\^ + {\rm{u}}} \right\|\), which must be true by Exercise 13(c).

15. \(A = \left[ {\begin{array}{*{20}{c}}{ - 3}&{ - 3}&{ - 6}&6&{\,\,1}\\{ - 1}&{ - 1}&{ - 1}&1&{ - 2}\\{\,\,\,0}&{\,\,0}&{ - 1}&1&{ - 1}\\{\,\,\,0}&{\,\,0}&{ - 1}&1&{ - 1}\end{array}} \right]\)

Classify the quadratic forms in Exercises 9–18. Then make a change of variable, \({\bf{x}} = P{\bf{y}}\), that transforms the quadratic form into one with no cross-product term. Write the new quadratic form. Construct \(P\) using the methods of Section 7.1.

12.\({\bf{ - }}x_{\bf{1}}^{\bf{2}}{\bf{ - 2}}{x_{\bf{1}}}{x_{\bf{2}}} - x_{\bf{2}}^{\bf{2}}\)

Question: 6. Let A be an \(n \times n\) symmetric matrix. Use Exercise 5 and an eigenvector basis for \({\mathbb{R}^n}\) to give a second proof of the decomposition in Exercise 4(b).

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