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In
stochastic analysis Stochastic calculus is a branch of mathematics that operates on stochastic processes. It allows a consistent theory of integration to be defined for integrals of stochastic processes with respect to stochastic processes. This field was created an ...
, a rough path is a generalization of the notion of smooth path allowing to construct a robust solution theory for controlled
differential equations In mathematics, a differential equation is an equation that relates one or more unknown functions and their derivatives. In applications, the functions generally represent physical quantities, the derivatives represent their rates of change, an ...
driven by classically irregular signals, for example a
Wiener process In mathematics, the Wiener process is a real-valued continuous-time stochastic process named in honor of American mathematician Norbert Wiener for his investigations on the mathematical properties of the one-dimensional Brownian motion. It is ...
. The theory was developed in the 1990s by Terry Lyons. Several accounts of the theory are available. Rough path theory is focused on capturing and making precise the interactions between highly oscillatory and non-linear systems. It builds upon the harmonic analysis of L.C. Young, the geometric algebra of K.T. Chen, the Lipschitz function theory of H. Whitney and core ideas of stochastic analysis. The concepts and the uniform estimates have widespread application in pure and applied Mathematics and beyond. It provides a toolbox to recover with relative ease many classical results in stochastic analysis (Wong-Zakai, Stroock-Varadhan support theorem, construction of stochastic flows, etc) without using specific probabilistic properties such as the martingale property or predictability. The theory also extends Itô's theory of SDEs far beyond the semimartingale setting. At the heart of the mathematics is the challenge of describing a smooth but potentially highly oscillatory and multidimensional path x_t effectively so as to accurately predict its effect on a nonlinear dynamical system \mathrmy_t=f(y_t)\,\mathrmx_t, y_0=a. The Signature is a homomorphism from the monoid of paths (under concatenation) into the grouplike elements of the free tensor algebra. It provides a graduated summary of the path x. This noncommutative transform is faithful for paths up to appropriate null modifications. These graduated summaries or features of a path are at the heart of the definition of a rough path; locally they remove the need to look at the fine structure of the path. Taylor's theorem explains how any smooth function can, locally, be expressed as a linear combination of certain special functions (monomials based at that point). Coordinate iterated integrals (terms of the signature) form a more subtle algebra of features that can describe a stream or path in an analogous way; they allow a definition of rough path and form a natural linear "basis" for continuous functions on paths. Martin Hairer used rough paths to construct a robust solution theory for the KPZ equation. He then proposed a generalization known as the theory of
regularity structures Martin Hairer's theory of regularity structures provides a framework for studying a large class of subcritical parabolic stochastic partial differential equations arising from quantum field theory. The framework covers the Kardar–Parisi–Zhang ...
for which he was awarded a
Fields medal The Fields Medal is a prize awarded to two, three, or four mathematicians under 40 years of age at the International Congress of the International Mathematical Union (IMU), a meeting that takes place every four years. The name of the award h ...
in 2014.


Motivation

Rough path theory aims to make sense of the controlled differential equation :\mathrm Y^i_t = \sum^d_ V^i_j(Y_t) \, \mathrmX^j_t. where the control, the continuous path X_t taking values in a
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 ...
, need not be differentiable nor of bounded variation. A prevalent example of the controlled path X_t is the sample path of a
Wiener process In mathematics, the Wiener process is a real-valued continuous-time stochastic process named in honor of American mathematician Norbert Wiener for his investigations on the mathematical properties of the one-dimensional Brownian motion. It is ...
. In this case, the aforementioned controlled differential equation can be interpreted as a
stochastic differential equation A stochastic differential equation (SDE) is a differential equation in which one or more of the terms is a stochastic process, resulting in a solution which is also a stochastic process. SDEs are used to model various phenomena such as stock p ...
and integration against "\mathrmX^_t" can be defined in the sense of Itô. However, Itô's calculus is defined in the sense of L^ and is in particular not a pathwise definition. Rough paths gives an almost sure pathwise definition of stochastic differential equation. The rough path notion of solution is well-posed in the sense that if X(n)_t is a sequence of smooth paths converging to X_t in the p-variation metric (described below), and :\mathrm Y(n)^i_t = \sum^d_ V^i_j(Y_t) \, \mathrmX(n)^j_t; :\mathrm Y^i_t = \sum^d_ V^i_j(Y_t) \, \mathrmX^j_t, then Y(n) converges to Y in the p-variation metric. This continuity property and the deterministic nature of solutions makes it possible to simplify and strengthen many results in Stochastic Analysis, such as the Freidlin-Wentzell's Large Deviation theory as well as results about stochastic flows. In fact, rough path theory can go far beyond the scope of Itô and Stratonovich calculus and allows to make sense of differential equations driven by non-
semimartingale In probability theory, a real valued stochastic process ''X'' is called a semimartingale if it can be decomposed as the sum of a local martingale and a càdlàg adapted finite-variation process. Semimartingales are "good integrators", forming the ...
paths, such as
Gaussian process In probability theory and statistics, a Gaussian process is a stochastic process (a collection of random variables indexed by time or space), such that every finite collection of those random variables has a multivariate normal distribution, i.e. ...
es and
Markov process A Markov chain or Markov process is a stochastic model describing a sequence of possible events in which the probability of each event depends only on the state attained in the previous event. Informally, this may be thought of as, "What happen ...
es.


Definition of a rough path

Rough paths are paths taking values in the truncated free tensor algebra (more precisely: in the free nilpotent group embedded in the free tensor algebra), which this section now briefly recalls. The tensor powers of \mathbb^, denoted \big(\mathbb^\big)^, are equipped with the projective norm \Vert \cdot \Vert (see
Topological tensor product In mathematics, there are usually many different ways to construct a topological tensor product of two topological vector spaces. For Hilbert spaces or nuclear spaces there is a simple well-behaved theory of tensor products (see Tensor product of Hi ...
, note that rough path theory in fact works for a more general class of norms). Let T^(\mathbb^) be the truncated tensor algebra :T^(\mathbb^)=\bigoplus^_\big(\mathbb^\big)^, where by convention (\mathbb^d)^\cong\mathbb. Let \triangle_ be the simplex \. Let p\geq 1. Let \mathbf and \mathbf be continuous maps \triangle_\to T^(\mathbb^). Let \mathbf^j denote the projection of \mathbf onto j-tensors and likewise for \mathbf^. The p-variation metric is defined as : d_p \left(\mathbf,\mathbf\right):=\max_ \sup_ \left( \sum^_\Vert \mathbf_^j - \mathbf_^j \Vert^ \right)^ where the supremum is taken over all finite partitions \ of ,1/math>. A continuous function \mathbf:\triangle_\rightarrow T^(\mathbb^d) is a p-geometric rough path if there exists a sequence of paths with finite total variation X(1),X(2),\ldots such that :\mathbf(n)_= \left(1, \int_\mathrm X(n)_, \ldots, \int_ \, \mathrmX(n)_ \otimes \cdots \otimes \mathrm X(n)_\right) converges in the p-variation metric to \mathbf as n\rightarrow \infty.


Universal limit theorem

A central result in rough path theory is
Lyons Lyon,, ; Occitan: ''Lion'', hist. ''Lionés'' also spelled in English as Lyons, is the third-largest city and second-largest metropolitan area of France. It is located at the confluence of the rivers Rhône and Saône, to the northwest of t ...
' Universal Limit theorem. One (weak) version of the result is the following: Let X(n) be a sequence of paths with finite total variation and let :\mathbf(n)_= \left(1,\int_ \mathrmX(n)_, \ldots, \int_ \mathrm X(n)_\otimes \cdots \otimes \mathrm X(n)_\right) denote the rough path lift of X(n). Suppose that \mathbf(n) converges in the p-variation metric to a p-geometric rough path \mathbf as n\to \infty. Let (V^i_j)^_ be functions that have at least \lfloor p \rfloor bounded derivatives and the \lfloor p \rfloor-th derivatives are \alpha-Hölder continuous for some \alpha > p-\lfloor p \rfloor. Let Y(n) be the solution to the differential equation : \mathrm Y(n)^i_t = \sum^d_ V^i_j(Y(n)_t) \, \mathrm X(n)^j_t and let \mathbf(n) be defined as :\mathbf(n)_= \left(1, \int_ \, \mathrm Y(n)_, \ldots, \int_ \mathrm Y(n)_ \otimes \cdots \otimes \mathrm Y(n)_ \right). Then \mathbf(n) converges in the p-variation metric to a p-geometric rough path \mathbf. Moreover, \mathbf is the solution to the differential equation : \mathrm Y^i_t = \sum^d_ V^i_j(Y_t) \, \mathrm X^j_t \qquad (\star) driven by the geometric rough path \mathbf. Concisely, the theorem can be interpreted as saying that the solution map (aka the Itô-Lyons map) \Phi:G\Omega_p(\mathbb^d)\to G\Omega_p(\mathbb^e) of the RDE (\star) is continuous (and in fact locally lipschitz) in the p-variation topology. Hence rough paths theory demonstrates that by viewing driving signals as rough paths, one has a robust solution theory for classical stochastic differential equations and beyond.


Examples of rough paths


Brownian motion

Let (B_t)_ be a multidimensional standard Brownian motion. Let \circ denote the Stratonovich integration. Then : \mathbf_ = \left(1,\int_ \circ \mathrm B_, \int_ \circ \mathrm B_ \otimes \circ \mathrmB_\right) is a p-geometric rough path for any 2. This geometric rough path is called the Stratonovich Brownian rough path.


Fractional Brownian motion

More generally, let B_H(t) be a multidimensional
fractional Brownian motion In probability theory, fractional Brownian motion (fBm), also called a fractal Brownian motion, is a generalization of Brownian motion. Unlike classical Brownian motion, the increments of fBm need not be independent. fBm is a continuous-time Gauss ...
(a process whose coordinate components are independent fractional Brownian motions) with H>\frac. If B^_H(t) is the m-th dyadic piecewise linear interpolation of B_H(t), then : \begin \mathbf^m_H(s,t) = \left(1,\int_ \right. & \mathrm B_H^ m(s_1), \int_ \, \mathrm B_H^m(s_1) \otimes \mathrm B_H^m(s_2), \\ & \left. \int_ \mathrmB_H^m(s_1) \otimes \mathrm B_H^m(s_2) \otimes \mathrm B_H^m(s_3) \right) \end converges almost surely in the p-variation metric to a p-geometric rough path for \frac. This limiting geometric rough path can be used to make sense of differential equations driven by fractional Brownian motion with Hurst parameter H>\frac. When 0, it turns out that the above limit along dyadic approximations does not converge in p-variation. However, one can of course still make sense of differential equations provided one exhibits a rough path lift, existence of such a (non-unique) lift is a consequence of the Lyons–Victoir extension theorem.


Non-uniqueness of enhancement

In general, let (X_t)_ be a \mathbb^d-valued stochastic process. If one can construct, almost surely, functions (s,t)\rightarrow \mathbf^_ \in \big(\mathbb^d\big)^ so that : \mathbf:(s,t)\rightarrow (1,X_t-X_s,\mathbf^2_,\ldots,\mathbf^_) is a p-geometric rough path, then \mathbf_ is an enhancement of the process X . Once an enhancement has been chosen, the machinery of rough path theory will allow one to make sense of the controlled differential equation :\mathrm Y^i_t = \sum^d_ V^i_j(Y_t) \, \mathrm X^j_t. for sufficiently regular vector fields V^i_j. Note that every stochastic process (even if it is a deterministic path) can have more than one (in fact, uncountably many) possible enhancements. Different enhancements will give rise to different solutions to the controlled differential equations. In particular, it is possible to enhance Brownian motion to a geometric rough path in a way other than the Brownian rough path. This implies that the Stratonovich calculus is not the only theory of stochastic calculus that satisfies the classical product rule : \mathrm(X_t\cdot Y_t) = X_t \, \mathrm Y_t+Y_t \, \mathrm X_t. In fact any enhancement of Brownian motion as a geometric rough path will give rise a calculus that satisfies this classical product rule.
Itô calculus Itô calculus, named after Kiyosi Itô, extends the methods of calculus to stochastic processes such as Brownian motion (see Wiener process). It has important applications in mathematical finance and stochastic differential equations. The central ...
does not come directly from enhancing Brownian motion as a geometric rough path, but rather as a branched rough path.


Applications in stochastic analysis


Stochastic differential equations driven by non-semimartingales

Rough path theory allows to give a pathwise notion of solution to (stochastic) differential equations of the form : \mathrmY_t = b(Y_t)\, \mathrmt + \sigma(Y_t) \, \mathrmX_t provided that the multidimensional stochastic process X_t can be almost surely enhanced as a rough path and that the drift b and the volatility \sigma are sufficiently smooth (see the section on the Universal Limit Theorem). There are many examples of Markov processes, Gaussian processes, and other processes that can be enhanced as rough paths. There are, in particular, many results on the solution to differential equation driven by fractional Brownian motion that have been proved using a combination of
Malliavin calculus In probability theory and related fields, Malliavin calculus is a set of mathematical techniques and ideas that extend the mathematical field of calculus of variations from deterministic functions to stochastic processes. In particular, it allows ...
and rough path theory. In fact, it has been proved recently that the solution to controlled differential equation driven by a class of Gaussian processes, which includes fractional Brownian motion with Hurst parameter H>\frac, has a smooth density under the Hörmander's condition on the vector fields.


Freidlin–Wentzell's large deviation theory

Let L(V,W) denote the space of bounded linear maps from a Banach space V to another Banach space W. Let B_t be a d-dimensional standard Brownian motion. Let b:\mathbb^n\rightarrow \mathbb^d and \sigma:\mathbb^n\rightarrow L(\mathbb^d,\mathbb^n) be twice-differentiable functions and whose second derivatives are \alpha-Hölder for some \alpha>0. Let X^ be the unique solution to the stochastic differential equation : \mathrmX^ = b(X^_t) \, \mathrmt + \sqrt \sigma(X^\varepsilon) \circ \mathrmB_t;\,X^=a, where \circ denotes Stratonovich integration. The Freidlin Wentzell's large deviation theory aims to study the asymptotic behavior, as \epsilon \rightarrow 0, of \mathbb ^\varepsilon \in F/math> for closed or open sets F with respect to the uniform topology. The Universal Limit Theorem guarantees that the Itô map sending the control path (t,\sqrtB_t) to the solution X^\varepsilon is a continuous map from the p-variation topology to the p-variation topology (and hence the uniform topology). Therefore, the Contraction principle in large deviations theory reduces Freidlin–Wentzell's problem to demonstrating the large deviation principle for (t,\sqrtB_t) in the p-variation topology. This strategy can be applied to not just differential equations driven by the Brownian motion but also to the differential equations driven any stochastic processes which can be enhanced as rough paths, such as fractional Brownian motion.


Stochastic flow

Once again, let B_t be a d-dimensional Brownian motion. Assume that the drift term b and the volatility term \sigma has sufficient regularity so that the stochastic differential equation :\mathrm\phi_(x) = b(\phi_(x)) \, \mathrmt + \sigma \, \mathrmB_t; X_s=x has a unique solution in the sense of rough path. A basic question in the theory of stochastic flow is whether the flow map \phi_(x) exists and satisfy the cocyclic property that for all s\leq u\leq t, : \phi_(\phi_(x))=\phi_(x) outside a null set ''independent'' of s,u,t. The Universal Limit Theorem once again reduces this problem to whether the Brownian rough path \mathbf exists and satisfies the multiplicative property that for all s\leq u \leq t, : \mathbf_ \otimes \mathbf_ = \mathbf_ outside a null set independent of s, u and t. In fact, rough path theory gives the existence and uniqueness of \phi_(x) not only outside a null set independent of s,t and x but also of the drift b and the volatility \sigma. As in the case of Freidlin–Wentzell theory, this strategy holds not just for differential equations driven by the Brownian motion but to any stochastic processes that can be enhanced as rough paths.


Controlled rough path

Controlled rough paths, introduced by M. Gubinelli, are paths \mathbf for which the rough integral : \int_s^t \mathbf_u \, \mathrmX_u can be defined for a given geometric rough path X. More precisely, let L(V,W) denote the space of bounded linear maps from a Banach space V to another Banach space W. Given a p-geometric rough path : \mathbf = (1,\mathbf^1, \ldots, \mathbf^) on \mathbb^, a \gamma-controlled path is a function \mathbf_s =(\mathbf^0_s,\mathbf^1_s, \ldots, \mathbf^_) such that \mathbf^j: ,1\rightarrow L((\mathbb^d)^, \mathbb^n) and that there exists M>0 such that for all 0\leq s\leq t\leq 1 and j=0,1,\ldots,\lfloor \gamma \rfloor, : \Vert \mathbf^_s \Vert\leq M and : \left\, \mathbf^j_t - \sum_^ \mathbf_s^ \mathbf^i_ \right\, \leq M, t-s, ^.


Example: Lip(''γ'') function

Let \mathbf=(1,\mathbf^,\ldots,\mathbf^) be a p-geometric rough path satisfying the
Hölder condition In mathematics, a real or complex-valued function ''f'' on ''d''-dimensional Euclidean space satisfies a Hölder condition, or is Hölder continuous, when there are nonnegative real constants ''C'', α > 0, such that : , f(x) - f(y) , \leq C ...
that there exists M>0, for all 0\leq s\leq t \leq 1 and all j=1,,2,\ldots,\lfloor p \rfloor, : \Vert \mathbf^j_ \Vert \leq M(t-s)^, where \mathbf^j denotes the j-th tensor component of \mathbf. Let \gamma\geq 1 . Let f:\mathbb^\rightarrow \mathbb^ be an \lfloor \gamma \rfloor-times differentiable function and the \lfloor \gamma \rfloor-th derivative is \gamma - \lfloor \gamma \rfloor Hölder, then : (f(\mathbf^1_s),Df(\mathbf^1_s),\ldots,D^ f(\mathbf^1_s)) is a \gamma-controlled path.


Integral of a controlled path is a controlled path

If \mathbf is a \gamma-controlled path where \gamma>p-1, then : \int_s^t \mathbf_u \, \mathrmX_u is defined and the path : \left( \int_s^t \mathbf_u \, \mathrmX_u, \mathbf^0_s, \mathbf^1_s, \ldots, \mathbf^_s \right) is a \gamma-controlled path.


Solution to controlled differential equation is a controlled path

Let V:\mathbb^n \rightarrow L(\mathbb^d,\mathbb^n) be functions that has at least \lfloor \gamma \rfloor derivatives and the \lfloor \gamma \rfloor-th derivatives are \gamma-\lfloor \gamma \rfloor-Hölder continuous for some \gamma > p . Let Y be the solution to the differential equation :\mathrm Y_t = V(Y_t) \, \mathrmX_t . Define : \frac(\cdot)=V(\cdot); : \frac (\cdot) = D \left( \frac \right) (\cdot) V(\cdot), where D denotes the derivative operator, then : \left(Y_t, \frac(Y_t), \frac(Y_t), \ldots, \frac(Y_t)\right) is a \gamma-controlled path.


Signature

Let X: ,1rightarrow \mathbb^ be a continuous function with finite total variation. Define : S(X)_= \left( 1,\int_ \mathrmX_,\int_ \mathrmX_ \otimes \mathrmX_, \ldots, \int_ \mathrmX_ \otimes \cdots \otimes\mathrm X_,\ldots\right). The signature of a path is defined to be S(X)_. The signature can also be defined for geometric rough paths. Let \mathbf be a geometric rough path and let \mathbf(n) be a sequence of paths with finite total variation such that : \mathbf(n)_= \left(1, \int_ \, \mathrmX(n)_, \ldots, \int_ \, \mathrm X(n)_ \otimes \cdots \otimes \mathrm X(n)_\right). converges in the p-variation metric to \mathbf. Then : \int_ \, \mathrmX(n)_\otimes \cdots \otimes \mathrmX(n)_ converges as n\rightarrow \infty for each N. The signature of the geometric rough path \mathbf can be defined as the limit of S(X(n))_ as n\rightarrow \infty. The signature satisfies Chen's identity, that : S(\mathbf)_\otimes S(\mathbf)_=S(\mathbf)_ for all s \leq u \leq t.


Kernel of the signature transform

The set of paths whose signature is the trivial sequence, or more precisely, : S(\mathbf)_ = (1,0,0,\ldots) can be completely characterized using the idea of tree-like path. A p-geometric rough path is tree-like if there exists a continuous function h: ,1rightarrow [0,\infty) such that h(0)=h(1)=0 and for all j=1,\ldots,\lfloor p \rfloor and all 0\leq s \leq t\leq 1, : \Vert \mathbf^j_ \Vert^p \leq h(t)+h(s)-2\inf_h(u) where \mathbf^ denotes the j-th tensor component of \mathbf. A geometric rough path \mathbf satisfies S(\mathbf)_=(1,0,\ldots) if and only if \mathbf is tree-like. Given the signature of a path, it is possible to reconstruct the unique path that has no tree-like pieces.


Infinite dimensions

It is also possible to extend the core results in rough path theory to infinite dimensions, providing that the norm on the tensor algebra satisfies certain admissibility condition.


References

{{Reflist Differential equations Stochastic processes