Journal of Applied Mathematics and Physics
Vol.05 No.02(2017), Article ID:74233,4 pages
10.4236/jamp.2017.52039
Revisiting the Evaluation of a Multidimensional Gaussian Integral
R. P. Mondaini, S. C. de Albuquerque Neto
Federal University of Rio de Janeiro, Centre of Technology, COPPE, Rio de Janeiro, Brazil
Copyright © 2017 by authors and Scientific Research Publishing Inc.
This work is licensed under the Creative Commons Attribution International License (CC BY 4.0).
http://creativecommons.org/licenses/by/4.0/
Received: January 4, 2017; Accepted: February 18, 2017; Published: February 21, 2017
ABSTRACT
The evaluation of Gaussian functional integrals is essential on the application to statistical physics and the general calculation of path integrals of stochastic processes. In this work, we present an elementary extension of an usual result of the literature as well as an alternative new derivation.
Keywords:
Gaussian Integral, Determinants, Spectral Theorem, Sylvester’s Criterion
1. Introduction
In the present work, we apply theorems of Linear Algebra to derive and extend an usual result of the literature on evaluation of multidimensional Gaussian integrals of the form [1] :
where is the transpose of every non-zero column vector and is a real positive definite quadratic form of variables. In order to guarantee the convergence of the integrals, we should have
(1)
We can also write as a sum of its symmetric and skew-symmetric components, and we have
(2)
since .
2. Application of the Spectral Theorem of Linear Algebra
From the Spectral Theorem of Linear Algebra [2] , a real matrix will be diagonalized by an orthogonal transformation if and only if this matrix is symmetric.
We then apply an orthogonal transformation to the quadratic form :
(3)
where the columns of the matrix are the orthonormal eigenvectors of the matrix .
We then have
(4)
where is the corresponding diagonal form.
From Equation (3) and Equation (4) we have:
(5)
where are the eigenvalues and their algebraic multiplicities [2] with
(6)
The transformation of the volume element is
(7)
and we can choose
(8)
from Equation (3) and the adequate organization of the orthonormal eigenvectors as the columns of the matrix .
The quadratic form can then be written as
(9)
From Equation (8) and Equation (9), the multidimensional integral will result
(10)
since each unidimensional integral is given by
(11)
We finally write, from Equations ((5), (10), (11)),
(12)
and we see from Equation (12) that the original matrix does not need to be diagonalizable [1] . The usual result of the literature will follows if , i.e., if is itself a symmetric matrix.
3. Application of Sylvester’s Criterion Theorem
We now present an alternative derivation of the result obtained above. We will show that there is no need to apply an orthogonal transformation to diagonalize a quadratic form in order to derive formula (12).
Let us write the vectors:
(13)
where is an orthonormal basis,
(14)
We now define the matrices
(15)
(16)
The first terms of the expansion of will produce null determinants of the matrix. The term will correspond to the determinant times . The term will lead to a determinant of a
matrix which is obtained by replacement of column of the matrix by a column whose elements are , times . The term will correspond to the determinant of a matrix which is obtained by replacement of the column of the matrix by a column whose elements are , times . We can then write,
(17)
It should be noted that if is a symmetric matrix like ,
the quadratic form can be written as
(18)
where
From Equation (17), we can write Equation (18) as
(19)
From Sylvester’s Criterion [3] , the quadratic form is positive definite if and only if all upper left determinants of the symmetric matrix are positive. We should note [4] that for each variable :
(20)
since the other variables which are contained on the term do not contribute to unidimensional integrals of the form
where is a real constant and a generic function of its arguments.
We then have from Equation (19) and Equation (20):
(21)
Cite this paper
Mondaini, R.P. and de Albuquerque Neto, S.C. (2017) Revisiting the Evaluation of a Multidimensional Gaussian Integral. Journal of Applied Mathematics and Physics, 5, 449-452. https://doi.org/10.4236/jamp.2017.52039
References
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- 3. Gilbert, G.T. (1991) Positive Definite Matrices and Sylvester’s Criterion. American Mathematical Monthly, 98, 44-46.
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