Schilder's Theorem
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mathematics Mathematics is an area of knowledge that includes the topics of numbers, formulas and related structures, shapes and the spaces in which they are contained, and quantities and their changes. These topics are represented in modern mathematics ...
, Schilder's theorem is a generalization of the Laplace method from integrals on \mathbb^n to functional Wiener integration. The theorem is used in the large deviations theory of
stochastic process In probability theory and related fields, a stochastic () or random process is a mathematical object usually defined as a family of random variables. Stochastic processes are widely used as mathematical models of systems and phenomena that appea ...
es. Roughly speaking, out of Schilder's theorem one gets an estimate for the probability that a (scaled-down) sample path of Brownian motion will stray far from the mean path (which is constant with value 0). This statement is made precise using rate functions. Schilder's theorem is generalized by the
Freidlin–Wentzell theorem In mathematics, the Freidlin–Wentzell theorem (due to Mark Freidlin and Alexander D. Wentzell) is a result in the large deviations theory of stochastic processes. Roughly speaking, the Freidlin–Wentzell theorem gives an estimate for the prob ...
for
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s.


Statement of the theorem

Let ''C''0 = ''C''0( , ''T'' R''d'') be the Banach space of continuous functions f : ,T\longrightarrow \mathbf^d such that f(0)=0, equipped with the supremum norm , , ·, , and C_0^\ast be the subspace of absolutely continuous functions whose derivative is in L^2 (the so-called Cameron-Martin space). Define the rate function :I(\omega) = \frac \int_^ \, \dot(t) \, ^ \, \mathrm t on C_0^\ast and let F:C_0\to\mathbb,G:C_0\to\mathbb be two given functions, such that S:=I+F (the "action") has a unique minimum \Omega\in C_0^\ast. Then under some differentiability and growth assumptions on F,G which are detailed i
Schilder 1966
one has :\lim_\frac = G(\Omega)\mathbb\left exp\left(-\frac\langle\omega, D(\Omega) \omega\rangle\right)\right/math> where \mathbb denotes expectation with respect to the Wiener measure \mathbb on C_0 and D(\Omega) is the Hessian of F at the minimum \Omega; \langle\omega, D(\Omega) \omega\rangle is meant in the sense of an L^2( ,T inner product.


Application to large deviations on the Wiener measure

Let ''B'' be a standard Brownian motion in ''d''-
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al
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R''d'' starting at the origin, 0 ∈ R''d''; let W denote the law of ''B'', i.e. classical Wiener measure. For ''ε'' > 0, let W''ε'' denote the law of the rescaled process ''B''. Then, on the
Banach space In mathematics, more specifically in functional analysis, a Banach space (pronounced ) is a complete normed vector space. Thus, a Banach space is a vector space with a metric that allows the computation of vector length and distance between vector ...
''C''0 = ''C''0( , ''T'' R''d'') of continuous functions f : ,T\longrightarrow \mathbf^d such that f(0)=0, equipped with the supremum norm , , ·, , , the
probability measure In mathematics, a probability measure is a real-valued function defined on a set of events in a probability space that satisfies measure properties such as ''countable additivity''. The difference between a probability measure and the more gener ...
s W''ε'' satisfy the large deviations principle with good rate function ''I'' : ''C''0 → R ∪  given by :I(\omega) = \frac \int_^ , \dot(t) , ^ \, \mathrm t if ''ω'' is absolutely continuous, and ''I''(''ω'') = +∞ otherwise. In other words, for every
open set In mathematics, open sets are a generalization of open intervals in the real line. In a metric space (a set along with a distance defined between any two points), open sets are the sets that, with every point , contain all points that are suf ...
''G'' ⊆ ''C''0 and every
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''F'' ⊆ ''C''0, :\limsup_ \varepsilon \log \mathbf_ (F) \leq - \inf_ I(\omega) and :\liminf_ \varepsilon \log \mathbf_ (G) \geq - \inf_ I(\omega).


Example

Taking ''ε'' = 1/''c''2, one can use Schilder's theorem to obtain estimates for the probability that a standard Brownian motion ''B'' strays further than ''c'' from its starting point over the time interval , ''T'' i.e. the probability :\mathbf (C_0 \smallsetminus \mathbf_c (0; \, \cdot \, _\infty)) \equiv \mathbf \big B \, _\infty > c \big as ''c'' tends to infinity. Here B''c''(0; , , ·, , ) denotes the open ball of radius ''c'' about the zero function in ''C''0, taken with respect to the supremum norm. First note that :\, B \, _\infty > c \iff \sqrt B \in A := \left \. Since the rate function is continuous on ''A'', Schilder's theorem yields :\begin \lim_ \frac &= \lim_ \varepsilon \log \left (\mathbf \left \sqrt B \in A \right\right ) \\ pt&= - \inf \left\ \\ pt&= - \frac \int_0^T \frac \, \mathrm t \\ pt&= - \frac, \end making use of the fact that the infimum over paths in the collection ''A'' is attained for . This result can be heuristically interpreted as saying that, for large and/or large :\frac \approx - \frac \qquad \text \qquad \mathbf \left B \, _\infty > c \right \approx \exp \left( - \frac \right). In fact, the above probability can be estimated more precisely: for a standard Brownian motion in , and any and , we have: :\mathbf \left \sqrt B_t \right , \geq c \right\leq 4 n \exp \left( - \frac \right).


References

* {{cite book , last= Dembo , first = Amir , author2=Zeitouni, Ofer , title = Large deviations techniques and applications , series = Applications of Mathematics (New York) 38 , edition = Second , publisher = Springer-Verlag , location = New York , year = 1998 , pages = xvi+396 , isbn = 0-387-98406-2 , mr=1619036 (See theorem 5.2) Asymptotic analysis Theorems regarding stochastic processes Large deviations theory