Principal axis theorem
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geometry Geometry (; ) is a branch of mathematics concerned with properties of space such as the distance, shape, size, and relative position of figures. Geometry is, along with arithmetic, one of the oldest branches of mathematics. A mathematician w ...
and linear algebra, a principal axis is a certain line in a
Euclidean space Euclidean space is the fundamental space of geometry, intended to represent physical space. Originally, in Euclid's ''Elements'', it was the three-dimensional space of Euclidean geometry, but in modern mathematics there are ''Euclidean spaces ...
associated with a ellipsoid or hyperboloid, generalizing the major and minor axes of an ellipse or hyperbola. The principal axis theorem states that the principal axes are perpendicular, and gives a constructive procedure for finding them. Mathematically, the principal axis theorem is a generalization of the method of completing the square from elementary algebra. In linear algebra and
functional analysis Functional analysis is a branch of mathematical analysis, the core of which is formed by the study of vector spaces endowed with some kind of limit-related structure (for example, Inner product space#Definition, inner product, Norm (mathematics ...
, the principal axis theorem is a geometrical counterpart of the spectral theorem. It has applications to the
statistics Statistics (from German language, German: ', "description of a State (polity), state, a country") is the discipline that concerns the collection, organization, analysis, interpretation, and presentation of data. In applying statistics to a s ...
of
principal components analysis Principal component analysis (PCA) is a Linear map, linear dimensionality reduction technique with applications in exploratory data analysis, visualization and Data Preprocessing, data preprocessing. The data is linear map, linearly transformed ...
and the singular value decomposition. In
physics Physics is the scientific study of matter, its Elementary particle, fundamental constituents, its motion and behavior through space and time, and the related entities of energy and force. "Physical science is that department of knowledge whi ...
, the theorem is fundamental to the studies of angular momentum and birefringence.


Motivation

The equations in the Cartesian plane \begin \frac + \frac &= 1 \\ pt \frac - \frac &= 1 \end define, respectively, an ellipse and a hyperbola. In each case, the and axes are the principal axes. This is easily seen, given that there are no ''cross-terms'' involving products in either expression. However, the situation is more complicated for equations like 5x^2 + 8xy + 5y^2 = 1. Here some method is required to determine whether this is an ellipse or a hyperbola. The basic observation is that if, by completing the square, the quadratic expression can be reduced to a sum of two squares then the equation defines an ellipse, whereas if it reduces to a difference of two squares then the equation represents a hyperbola: \begin u(x, y)^2 + v(x, y)^2 &= 1\qquad \text \\ u(x, y)^2 - v(x, y)^2 &= 1\qquad \text. \end Thus, in our example expression, the problem is how to absorb the coefficient of the cross-term into the functions and . Formally, this problem is similar to the problem of matrix diagonalization, where one tries to find a suitable coordinate system in which the matrix of a linear transformation is diagonal. The first step is to find a matrix in which the technique of diagonalization can be applied. The trick is to write the
quadratic form In mathematics, a quadratic form is a polynomial with terms all of degree two (" form" is another name for a homogeneous polynomial). For example, 4x^2 + 2xy - 3y^2 is a quadratic form in the variables and . The coefficients usually belong t ...
as 5x^2 + 8xy + 5y^2 = \begin x & y \end \begin 5 & 4 \\ 4 & 5 \end \begin x \\ y \end = \mathbf^\textsf \mathbf where the cross-term has been split into two equal parts. The matrix in the above decomposition is a symmetric matrix. In particular, by the spectral theorem, it has real eigenvalues and is diagonalizable by an orthogonal matrix (''orthogonally diagonalizable''). To orthogonally diagonalize , one must first find its eigenvalues, and then find an orthonormal eigenbasis. Calculation reveals that the eigenvalues of are \lambda_1 = 1,\quad \lambda_2 = 9 with corresponding eigenvectors \mathbf_1 = \begin 1 \\ -1 \end,\quad \mathbf_2 = \begin 1 \\ 1 \end. Dividing these by their respective lengths yields an orthonormal eigenbasis: \mathbf_1 = \begin \frac \\ -\frac \end,\quad \mathbf_2 = \begin \frac \\ \frac \end. Now the matrix is an orthogonal matrix, since it has orthonormal columns, and is diagonalized by: \mathbf = \mathbf^ = \mathbf^\textsf = \begin \frac & \frac\\ -\frac & \frac \end \begin 1 & 0 \\ 0 & 9 \end \begin \frac & -\frac \\ \frac & \frac \end. This applies to the present problem of "diagonalizing" the quadratic form through the observation that \begin 5x^2 + 8xy + 5y^2 &= \mathbf^\textsf \mathbf \\ &= \mathbf^\textsf \left( \mathbf^\textsf \right) \mathbf \\ &= \left( \mathbf^\textsf \mathbf \right)^\textsf \mathbf \left( \mathbf^\textsf \mathbf \right) \\ &= 1\left(\frac \right)^2 + 9\left( \frac \right)^2. \end Thus, the equation 5x^2 + 8xy + 5y^2 = 1 is that of an ellipse, since the left side can be written as the sum of two squares. It is tempting to simplify this expression by pulling out factors of 2. However, it is important ''not'' to do this. The quantities c_1 = \frac,\quad c_2 = \frac have a geometrical meaning. They determine an ''orthonormal coordinate system'' on In other words, they are obtained from the original coordinates by the application of a rotation (and possibly a reflection). Consequently, one may use the and coordinates to make statements about ''length and angles'' (particularly length), which would otherwise be more difficult in a different choice of coordinates (by rescaling them, for instance). For example, the maximum distance from the origin on the ellipse c_1^2 + 9c_2^2 = 1 occurs when , so at the points . Similarly, the minimum distance is where . It is possible now to read off the major and minor axes of this ellipse. These are precisely the individual eigenspaces of the matrix , since these are where or . Symbolically, the principal axes are E_1 = \operatorname \left(\begin \frac \\ -\frac \end\right),\quad E_2 = \operatorname \left(\begin \frac \\ \frac \end\right). To summarize: * The equation is for an ellipse, since both eigenvalues are positive. (Otherwise, if one were positive and the other negative, it would be a hyperbola.) * The principal axes are the lines spanned by the eigenvectors. * The minimum and maximum distances to the origin can be read off the equation in diagonal form. Using this information, it is possible to attain a clear geometrical picture of the ellipse: to graph it, for instance.


Formal statement

The principal axis theorem concerns quadratic forms in which are homogeneous polynomials of degree 2. Any quadratic form may be represented as Q(\mathbf) = \mathbf^\textsf \mathbf where is a symmetric matrix. The first part of the theorem is contained in the following statements guaranteed by the spectral theorem: * The eigenvalues of are real. * is diagonalizable, and the eigenspaces of are mutually orthogonal. In particular, is ''orthogonally diagonalizable'', since one may take a basis of each eigenspace and apply the Gram-Schmidt process separately within the eigenspace to obtain an orthonormal eigenbasis. For the second part, suppose that the eigenvalues of are (possibly repeated according to their algebraic multiplicities) and the corresponding orthonormal eigenbasis is . Then, \mathbf = mathbf_1, \ldots,\mathbf_n\textsf \mathbf, and Q(\mathbf) = \lambda_1 c_1^2 + \lambda_2 c_2^2 + \dots + \lambda_n c_n^2, where is the -th entry of . Furthermore, : The -th principal axis is the line determined by equating for all . The -th principal axis is the span of the vector .


See also

* Sylvester's law of inertia


References

* {{cite book, authorlink=Gilbert Strang, first=Gilbert, last=Strang, title=Introduction to Linear Algebra, publisher=Wellesley-Cambridge Press, year=1994, isbn=0-9614088-5-5 Theorems in geometry Theorems in linear algebra