Onsager–Machlup function
The Onsager–Machlup function is a function that summarizes the dynamics of a continuous stochastic process. It is used to define a probability density for a stochastic process, and it is similar to the Lagrangian of a dynamical system. It is named after Lars Onsager and S. Machlup who were the first to consider such probability densities.[1]
The dynamics of a continuous stochastic process X from time t = 0 to t = T in one dimension, satisfying a stochastic differential equation
where W is a Wiener process, can in approximation be described by the probability density function of its value xi at a finite number of points in time ti:
where
and Δti = ti+1 − ti > 0, t1 = 0 and tn = T. A similar approximation is possible for processes in higher dimensions. The approximation is more accurate for smaller time step sizes Δti, but in the limit Δti → 0 the probability density function becomes ill defined, one reason being that the product of terms
diverges to infinity. In order to nevertheless define a density for the continuous stochastic process X, ratios of probabilities of X lying within a small distance ε from smooth curves φ1 and φ2 are considered:[2]
as ε → 0, where L is the Onsager–Machlup function.
Definition
Consider a d-dimensional Riemannian manifold M and a diffusion process X = {Xt : 0 ≤ t ≤ T} on M with infinitesimal generator 1/2ΔM + b, where ΔM is the Laplace–Beltrami operator and b is a vector field. For any two smooth curves φ1, φ2 : [0, T] → M,
where ρ is the Riemannian distance, denote the first derivatives of φ1, φ2, and L is called the Onsager–Machlup function.
The Onsager–Machlup function is given by[3][4][5]
where || ⋅ ||x is the Riemannian norm in the tangent space Tx(M) at x, div b(x) is the divergence of b at x, and R(x) is the scalar curvature at x.
Examples
The following examples give explicit expressions for the Onsager–Machlup function of a continuous stochastic processes.
Wiener process on the real line
The Onsager–Machlup function of a Wiener process on the real line R is given by[6]
Let X = {Xt : 0 ≤ t ≤ T} be a Wiener process on R and let φ : [0, T] → R be a twice differentiable curve such that φ(0) = X0. Define another process Xφ = {Xtφ : 0 ≤ t ≤ T} by Xtφ = Xt − φ(t) and a measure Pφ by
For every ε > 0, the probability that |Xt − φ(t)| ≤ ε for every t ∈ [0, T] satisfies
By Girsanov's theorem, the distribution of Xφ under Pφ equals the distribution of X under P, hence the latter can be substituted by the former:
By Itō's lemma it holds that
where is the second derivative of φ, and so this term is of order ε on the event where |Xt| ≤ ε for every t ∈ [0, T] and will disappear in the limit ε → 0, hence
Diffusion processes with constant diffusion coefficient on Euclidean space
The Onsager–Machlup function in the one-dimensional case with constant diffusion coefficient σ is given by[7]
In the d-dimensional case, with σ equal to the unit matrix, it is given by[8]
where || ⋅ || is the Euclidean norm and
Generalizations
Generalizations have been obtained by weakening the differentiability condition on the curve φ.[9] Rather than taking the maximum distance between the stochastic process and the curve over a time interval, other conditions have been considered such as distances based on completely convex norms[10] and Hölder, Besov and Sobolev type norms.[11]
Applications
The Onsager–Machlup function can be used for purposes of reweighting and sampling trajectories,[12] as well as for determining the most probable trajectory of a diffusion process.[13][14]
See also
References
- Onsager, L. and Machlup, S. (1953)
- Stratonovich, R. (1971)
- Takahashi, Y. and Watanabe, S. (1980)
- Fujita, T. and Kotani, S. (1982)
- Wittich, Olaf
- Ikeda, N. and Watanabe, S. (1980), Chapter VI, Section 9
- Dürr, D. and Bach, A. (1978)
- Ikeda, N. and Watanabe, S. (1980), Chapter VI, Section 9
- Zeitouni, O. (1989)
- Shepp, L. and Zeitouni, O. (1993)
- Capitaine, M. (1995)
- Adib, A.B. (2008).
- Adib, A.B. (2008).
- Dürr, D. and Bach, A. (1978).
Bibliography
- Adib, A.B. (2008). "Stochastic actions for diffusive dynamics: Reweighting, sampling, and minimization". J. Phys. Chem. B. 112 (19): 5910–5916. arXiv:0712.1255. doi:10.1021/jp0751458. PMID 17999482.
- Capitaine, M. (1995). "Onsager–Machlup functional for some smooth norms on Wiener space". Probab. Theory Relat. Fields. 102 (2): 189–201. doi:10.1007/bf01213388.
- Dürr, D. & Bach, A. (1978). "The Onsager–Machlup function as Lagrangian for the most probable path of a diffusion process". Commun. Math. Phys. 60 (2): 153–170. Bibcode:1978CMaPh..60..153D. doi:10.1007/bf01609446.
- Fujita, T. & Kotani, S. (1982). "The Onsager–Machlup function for diffusion processes". J. Math. Kyoto Univ. 22: 115–130. doi:10.1215/kjm/1250521863.
- Ikeda, N. & Watanabe, S. (1980). Stochastic differential equations and diffusion processes. Kodansha-John Wiley.
- Onsager, L. & Machlup, S. (1953). "Fluctuations and Irreversible Processes". Physical Review. 91 (6): 1505–1512. Bibcode:1953PhRv...91.1505O. doi:10.1103/physrev.91.1505.
- Shepp, L. & Zeitouni, O. (1993). Exponential estimates for convex norms and some applications. Progress in Probability. 32. Berlin: Birkhauser-Verlag. pp. 203–215. CiteSeerX 10.1.1.28.8641. doi:10.1007/978-3-0348-8555-3_11. ISBN 978-3-0348-9677-1.
- Stratonovich, R. (1971). "On the probability functional of diffusion processes". Select. Transl. In Math. Stat. Prob. 10: 273–286.
- Takahashi, Y. & Watanabe, S. (1980). "The probability functionals (Onsager–Machlup functions) of diffusion processes". Lecture Notes in Mathematics. Springer. 851: 432–463.
- Wittich, Olaf. "The Onsager–Machlup Functional Revisited". Cite journal requires
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(help) - Zeitouni, O. (1989). "On the Onsager–Machlup functional of diffusion processes around non C2 curves". Annals of Probability. 17 (3): 1037–1054. doi:10.1214/aop/1176991255.
External links
- Onsager–Machlup function. Encyclopedia of Mathematics. URL: http://www.encyclopediaofmath.org/index.php?title=Onsager-Machlup_function&oldid=22857