| advertise add site services publishers database health videos | ![]() | about toolbar stats live show health store more stuff JOIN/LOGIN |
ASMB - American Society for Matrix Biology - Matrix Biology Journal asmb.net | Enamel Matrix Derivative Manhattan | Enamel Matrix Derivative New York Cit drstuartfroum.com | Matrix Institute The Matrix Model matrixinstitute.org | Matrix Laser Chicago | Matrix IR Chicago | Elos Fractional Laser charmingskin.com |
In vector calculus, the Jacobian matrix is the matrix of all first-order partial derivatives of a vector-valued function. Suppose F : Rn → Rm is a function from Euclidean n-space to Euclidean m-space. Such a function is given by m real-valued component functions, y1(x1,...,xn), ..., ym(x1,...,xn). The partial derivatives of all these functions (if they exist) can be organized in an m-by-n matrix, the Jacobian matrix J of F, as follows: This matrix is also denoted by The Jacobian determinant (often simply called the Jacobian) is the determinant of the Jacobian matrix. These concepts are named after the mathematician Carl Gustav Jacob Jacobi. The term "Jacobian" is normally pronounced /dʒəˈkoʊbiən/, but sometimes also /jəˈkoʊbiən/.
[edit] Jacobian matrixThe Jacobian of a function describes the orientation of a tangent plane to the function at a given point. In this way, the Jacobian generalizes the gradient of a scalar valued function of multiple variables which itself generalizes the derivative of a scalar-valued function of a scalar. Likewise, the Jacobian can also be thought of as describing the amount of "stretching" that a transformation imposes. For example, if (x2,y2) = f(x1,y1) is used to transform an image, the Jacobian of f, J(x1,y1) describes how much the image in the neighborhood of (x1,y1) is stretched in the x, y, and xy directions. If a function is differentiable at a point, its derivative is given in coordinates by the Jacobian, but a function doesn't need to be differentiable for the Jacobian to be defined, since only the partial derivatives are required to exist. The importance of the Jacobian lies in the fact that it represents the best linear approximation to a differentiable function near a given point. In this sense, the Jacobian is the derivative of a multivariate function. For a function of n variables, n > 1, the derivative of a numerical function must be matrix-valued, or a partial derivative. If p is a point in Rn and F is differentiable at p, then its derivative is given by JF(p). In this case, the linear map described by JF(p) is the best linear approximation of F near the point p, in the sense that for x close to p and where o is the little o-notation (for In a sense, both gradient and Jacobian are "first derivatives", the former of a scalar function of several variables and the latter of a vector function of several variables. Jacobian of the gradient has a special name: Hessian matrix, which in a sense is the "second derivative" of the scalar function of several variables in question. (More generally, gradient is a special version of Jacobian; it is the Jacobian of a scalar function of several variables.) [edit] InverseAccording to the inverse function theorem, the matrix inverse of the Jacobian matrix of a function is the Jacobian matrix of the inverse function. That is, for some function F : Rn → Rn and a point p in Rn,
It follows that the (scalar) inverse of the Jacobian determinant of a transformation is the Jacobian determinant of the inverse transformation. [edit] ExamplesExample 1. The transformation from spherical coordinates (r, θ, φ) to Cartesian coordinates (x1, x2, x3) is given by the function F : R+ × [0,π) × [0,2π) → R3 with components: The Jacobian matrix for this coordinate change is Example 2. The Jacobian matrix of the function F : R3 → R4 with components is This example shows that the Jacobian need not be a square matrix. [edit] In dynamical systemsConsider a dynamical system of the form x' = F(x), where x' is the (component-wise) time derivative of x, and F : Rn → Rn is continuous and differentiable. If F(x0) = 0, then x0 is a stationary point (also called a fixed point). The behavior of the system near a stationary point is related to the eigenvalues of JF(x0), the Jacobian of F at the stationary point.[1] Specifically, if the eigenvalues all have a negative real part, then the system is stable in the operating point, if any eigenvalue has a positive real part, then the point is unstable. [edit] Jacobian determinantIf m = n, then F is a function from n-space to n-space and the Jacobian matrix is a square matrix. We can then form its determinant, known as the Jacobian determinant. The Jacobian determinant is also called the "Jacobian" in some sources. The Jacobian determinant at a given point gives important information about the behavior of F near that point. For instance, the continuously differentiable function F is invertible near a point p ∈ Rn if the Jacobian determinant at p is non-zero. This is the inverse function theorem. Furthermore, if the Jacobian determinant at p is positive, then F preserves orientation near p; if it is negative, F reverses orientation. The absolute value of the Jacobian determinant at p gives us the factor by which the function F expands or shrinks volumes near p; this is why it occurs in the general substitution rule. [edit] ExampleThe Jacobian determinant of the function F : R3 → R3 with components is From this we see that F reverses orientation near those points where x1 and x2 have the same sign; the function is locally invertible everywhere except near points where x1 = 0 or x2 = 0. Intuitively, if you start with a tiny object around the point (1,1,1) and apply F to that object, you will get an object set with approximately 40 times the volume of the original one. [edit] UsesThe Jacobian determinant is used when making a change of variables when integrating a function over its domain. To accommodate for the change of coordinates the Jacobian determinant arises as a multiplicative factor within the integral. Normally it is required that the change of coordinates is done in a manner which maintains an injectivity between the coordinates that determine the domain. The Jacobian determinant, as a result, is usually well defined. [edit] See also[edit] Notes
[edit] External links
|
| ↑ top of page ↑ | about thumbshots |