MULTIDIMENSIONAL STICKY BROWNIAN MOTIONS AS LIMITS OF EXCLUSION PROCESSES

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The Annals of Applied Probability 215, Vol. 25, No. 3, 1155 1188 DOI: 1.1214/14-AAP119 Institute of athematical Statistics, 215 ULTIDIENSIONAL STICKY BROWNIAN OTIONS AS LIITS OF EXCLUSION PROCESSES BY IKLÓS Z. RÁCZ 1 AND YKHAYLO SHKOLNIKOV University of California, Berkeley We study exclusion processes on the integer lattice in which particles change their velocities due to stickiness. Specifically, whenever two or more particles occupy adacent sites, they stick together for an extended period of time, and the entire particle system is slowed down until the collision is resolved. We show that under diffusive scaling of space and time such processes converge to what one might refer to as a sticky reflected Brownian motion in the wedge. The latter behaves as a Brownian motion with constant drift vector and diffusion matrix in the interior of the wedge, and reflects at the boundary of the wedge after spending an instant of time there. In particular, this leads to a natural multidimensional generalization of sticky Brownian motion on the half-line, which is of interest in both queuing theory and stochastic portfolio theory. For instance, this can model a market, which experiences a slowdown due to a maor event (such as a court trial between some of the largest firms in the market) deciding about the new market leader. 1. Introduction. Stochastic processes with sticky points in the arkov process sense have been studied for more than half a century. Sticky Brownian motion on the half-line is the process evolving as a standard Brownian motion away from zero and reflecting at zero after spending an instant of time there as opposed to a reflecting Brownian motion, which reflects instantaneously. This process was initially studied by Feller [1, 11], and Itô and ckean [17, 18] ina more general context, and was subsequently analyzed in more detail by several further authors [1, 12]. These papers show that sticky Brownian motion arises as a time change of a reflecting Brownian motion, and that it describes the scaling limit of random walks on the natural numbers whose ump rate at zero is significantly smaller than the ump rates at positive sites. In stochastic analysis, the stochastic differential equation (SDE) (1) ds(t) = 1 {S(t)>} db(t) + η1 {S(t)=} dt satisfied by sticky Brownian motion has drawn much attention, as it is an example of an SDE for which weak existence and uniqueness hold, but strong existence Received February 213; revised December 213. 1 Supported in part by NSF Grant DS-11-6999 and DOD ONR Grant N1411114. SC21 subect classifications. 6H3, 6K35, 6H1. Key words and phrases. Exclusion processes with speed change, reflected Brownian motion, scaling limits, sticky Brownian motion, stochastic differential equations, stochastic portfolio theory. 1155

1156. Z. RÁCZ AND. SHKOLNIKOV and pathwise uniqueness fail; see [6]. In fact, in [29] (see also the survey [8]) it is shown that a weak solution to (1) cannot be adapted to a cozy filtration, that is, a filtration generated by a finite or infinite-dimensional Brownian motion. The present study is motivated by the question of how one can define and analyze multidimensional analogues of (1) and whether solutions to the corresponding systems of SDEs arise as suitable scaling limits of interacting particle systems in analogy to the findings of [12] in the one-dimensional case. In [2], Section 3, it is shown that a large class of reflecting Brownian motions in the n-dimensional wedge W = { x = (x 1,...,x n ) R n : x 1 x 2 x n } arise as limits of certain exclusion processes with speed change under diffusive rescaling. As we show below, sticky Brownian motions with state space W can also be obtained as scaling limits of suitable exclusion processes with speed change. 1.1. Exclusion processes with sticky particles. To simplify the exposition, we next describe a simple class of particle systems which converge to sticky Brownian motions in W in the scaling limit, and postpone the description of the much wider class of particle systems that we can handle to Section 3. We fix the number of particles n N, and also rate parameters a>, L = (θ L ) i [n], [n 1] [, ) n (n 1),and R = (θ R ) i [n], [n 1] [, ) n (n 1) with the notation [n]={1, 2,...,n}. For a fixed value of the scaling parameter >, the particles move on the rescaled lattice Z/ ; to describe their motion we introduce the following Poisson processes, all of which are independent, and all of which have ump size 1.Fori [n], the Poisson processes P i and Q i have ump rates a, while for i [n], [n 1], the Poisson processes L and R have ump rates θ L and θ R, respectively. In addition, for notational convenience we introduce ghost particles at ±, namely: X ( ) and X n+1 ( ). For any initial condition X1 ()<X 2 ()< <X n () on Z/, we can then define a particle system evolving on Z/ in continuous time by setting dxi (t) = 1 {X k (t)+(1/ )<Xk+1 (t),k [n 1]} d( P i (t) Q i (t) ) (2) + 1 {X i (t)+(1/ )<X i+1 (t),x (t)+(1/ )=X +1 (t)} dr (t) 1 {X i 1 (t)+(1/ )<X i (t),x (t)+(1/ )=X +1 (t)} dl (t),

STICKY BROWNIAN OTIONS 1157 for i [n]. Note that (2) guarantees that for any t, the particle configuration (X1 (t), X 2 (t),..., X n (t)) is an element of the discrete wedge { W = x (Z/ ) n : x k + 1 } x k+1,k [n 1]. Intuitively, when apart, the particles move independently on the rescaled lattice Z/ according to the processes P i Q i, i = 1, 2,...,n (in particular, with ump rates of order ); however, when two particles land on adacent sites an event we describe as a collision the system experiences a slowdown: the particles change their ump rates to the ones of the processes L and R, i [n], [n 1], which are of order. The interaction between adacent particles can be described as stickiness, as it takes a long time (on the time scale t) until the collision is resolved and the particles return to ump rates of order. 1.2. Convergence to multidimensional sticky Brownian motions. The described particle systems converge to a sticky Brownian motion in W under the following assumption. Define V = (v ) i [n], [n 1],thespeed change matrix,by setting (3) θ R θ L, v := if i 1,i, θi,i 1 R, if = i 1, θi,i L, if = i, and the reflection matrix Q = (q, ), [n 1] by setting q, = v +1, v,. When there is a collision between particles and + 1 and no other collisions, then the velocity of particle i is given by v, and the velocity of gap between particles and + 1isgivenbyq,. Define also the (n 1) (n 1) 2 matrix Q (2) = (q (2) i,(k,l) )n 1 i,k,l=1 according to q (2) i,(k,l) := θi,l L, if k = i 1,l i 1, θi+1,l L + θ i,l R, if k = i, l i, θi+1,l R, if k = i + 1,l i + 1,, otherwise. Let q, denote the th column of Q,letq (2),(k,l) denote the column of Q(2) indexed by (k, l) and let I (2) [n 1] 2 denote the set of pairs of indices (k, l) such that q (2),(k,l) is the zero vector. Note that (k, k) I(2) for all k [n 1]. ASSUPTION 1. (a) Assume that the matrix Q is completely-s, in the sense that there is a λ [, ) n 1 such that Qλ (, ) n 1 and the same property is

1158. Z. RÁCZ AND. SHKOLNIKOV shared by every principal submatrix of Q; see[28] for several equivalent definitions. (b) Assume that the matrices Q and Q (2) (restricted to nonzero columns) are ointly completely-s, in the following sense. For a vector u R k and J [k], let u J R J denote the vector obtained from u by removing all coordinates of u whose index is not in J. We assume that for every J [n 1], J, there exists γ = γ(j) (R + ) J such that γ qj, 1forevery J and γ q(2),j,(k,l) 1for every k,l J, (k, l) / I (2). Under Assumption 1 which we discuss in more detail below we have the following convergence result. THEORE 1. Suppose that Assumption 1 holds, and also that the initial conditions {(X1 (), X 2 (),...,X n ()), > } are deterministic and converge to a limit (x 1,x 2,...,x n ) W as. Then the laws of the paths of the particle systems {(X1 ( ), X 2 ( ),...,X n ( )), > } on D([, ), Rn ) (the space of càdlàg paths with values in R n endowed with the topology of uniform convergence on compact sets) converge to the law of the unique weak solution of the system of SDEs (4) dx i (t) = 1 {X1 (t)<x 2 (t)< <X n (t)} 2a dwi (t) + 1 {X (t)=x +1 (t)}v dt, i [n], in W starting from (x 1,x 2,...,x n ). Here (W 1,W 2,...,W n ) is a standard Brownian motion in R n. The solution to (4) evolves as a Brownian motion when away from the boundary W of W, it does not spend a nonempty time interval on W; however, it satisfies P ( L ({ t :X(t) W }) > ) = 1, where L is the Lebesgue measure on [, ). We refer to the solution of (4) with a = 1/2 assticky Brownian motion in W with reflection matrix V. We choose this terminology because the SDE (4) generalizes one-dimensional sticky Brownian motion as in [1, 12], and also because it is consistent with the terminology used in [28] and the references therein dealing with instantaneously reflecting Brownian motions. Regarding our assumptions, Assumption 1(a) is a natural condition, which is necessary for the existence of the limiting stochastic process; see Theorem 3. Assumption 1(b) [which is stronger; it implies Assumption 1(a)], however, is a technical condition; it is readily satisfied in many natural situations, but it is not a necessary condition for the convergence result to hold. For instance, Assumption 1 is satisfied in the natural case when θ L = θ R = θ>foralli [n],

STICKY BROWNIAN OTIONS 1159 [n 1]. See also [3], where essentially the same condition is required and used in the proof of [3], Theorem 7.7, and where it is shown that this condition is satisfied if the reflection matrix Q satisfies the Harrison Reiman condition [13], and some additional conditions hold. On the other hand, consider the case when θ, L = θ +1, R = θ>forall [n 1], andθ L = θ R = otherwise; in words, suppose that when a collision occurs, all particles not part of the collision freeze, that is, they cannot move until the collision is resolved. It is not hard to see that Assumption 1(b) cannot hold in this case, although Assumption 1(a) holds, and we expect that the convergence result holds as well. In Section 3 we prove a much stronger result than Theorem 1, allowing for nonexponential interarrival times between the umps in the processes P i, Q i, L and R, as well as for dependence between the latter processes; see Theorem 7. This then leads to the definition of a sticky Brownian motion in W whose components have unequal drift and diffusion coefficients. In addition, it is not hard to see from the proof that for each ump parameter θ L or θ R which is zero, we can choose the ump rate of the corresponding process L or R to be of order o( ) (not necessarily identically zero) for the result of Theorem 1 to still hold. One of the main technical difficulties in the proof of Theorem 1 and its extension (Theorem 7 in Section 3) is posed by the indicator function appearing in the diffusion matrix of the limiting process. This is in contrast to the main convergence result in [2], where the martingale part of the limiting process is a Brownian motion. Another maor difference compared to the setting of [2] is that we consider a large class of completely-s reflection matrices and are dealing with weak solutions of the limiting stochastic differential equation; whereas in [2] only a special class of reflection matrices is considered, allowing for a pathwise construction of the limiting obect. Finally, we allow for dependence of interarrival times between umps for different particles in Theorem 7 below, which is not addressed in [2]. 1.3. Applications. We mention two potential areas of applications for the process in (4) and its extensions that appear in Section 2. It is known that reflected Brownian motions in W give a class of tractable descriptive models for the logarithmic market capitalizations (i.e., the logarithms of the total market values of stocks) of firms in a large equity market; see, for example, [2]. These models lead to realistic capital distribution curves in the long-run and are also able to produce a realistic pattern of collisions. In the same spirit, one can think of (4) as a model for the logarithmic market capitalizations in an equity market in which the market experiences a slowdown whenever there is a possibility that two firms will exchange their ranks (described by a collision). For example, one can imagine a court trial between two firms, the result of which decides which firm becomes the market leader, leading to a slowdown of the market right before the time of the verdict as the market participants await the result of the trial. The question of whether real-world equity markets spend a positive amount of time in collisions

116. Z. RÁCZ AND. SHKOLNIKOV [so that the logarithmic market capitalizations should be modeled by the solution of (4)] or the set of times spent in collisions has zero Lebesgue measure (so that a reflecting Brownian motion in W is a more appropriate model) is a challenging statistical problem which should be addressed in future research. Another area of application is the study of diffusion approximations of storage and queueing networks. It is well known (see, e.g., the survey [31] and the references therein) that reflected Brownian motions in the orthant describe the heavy traffic limits of many queuing networks such as open queuing networks, single class networks and feedforward multiclass networks. oreover, Welch [3] discusses a situation where a customer of a single server queueing network receives exceptional service when the server is idle before his arrival and standard service when the server is busy prior to his arrival. The results in [3], as well as their extensions to more general exceptional service policies in [22] and[23] show that the heavy traffic limits of such networks are described by sticky Brownian motions on the half-line. For further information on queuing networks with exceptional service mechanisms we refer the reader to [12, 33] and[23]. Similarly, in the setting of a multi-server queuing network, one can think of a situation where the servers provide exceptional service to a customer if the server was idle prior to his arrival, and where such exceptional service slows down the entire queuing network, for example, due to a commonly used resource. In view of the aforementioned results in the single-server case, we expect sticky Brownian motions in the orthant (R + ) n 1, given by the spacings processes ( X2 ( ) X 1 ( ), X 3 ( ) X 2 ( ),...,X n ( ) X n 1 ( ) ), to arise as heavy-traffic limits of multi-server queueing networks with appropriate exceptional service policies. We also anticipate the tools developed in this paper to appear at the heart of the proofs of the corresponding heavy-traffic limit theorems. In the case that the exceptional service by one of the servers does not affect other servers, we expect the heavy-traffic limit to be given by a sticky Brownian motion with a local rather than a global slowdown; see Section 1.4 for further discussion. 1.4. Future directions. A natural direction for future work is to study other types of sticky interaction between particles. Even in the class of exclusion processes in one dimension, there are avenues to be explored. For instance, the exclusion processes described by (2) experience a global slowdown when a collision occurs, whereas for some applications it would be interesting to consider particle systems with local slowdown. We believe that the techniques we develop in Section 3 would carry over to such a setting with appropriate modifications; however, the difficulty of proving convergence of such processes to the appropriate continuous obect comes from proving uniqueness for the limiting SDE. We expect the solution of this SDE to spend a positive amount of time on lower-dimensional faces of the wedge W, making the analysis of the process more difficult.

STICKY BROWNIAN OTIONS 1161 1.5. Outline. The rest of the paper is structured as follows. Section 2 is devoted to the study of sticky Brownian motions in W. In Section 2.1 we give the proof of existence and uniqueness of the weak solution to a system of SDEs generalizing (4). Then, in Section 2.2 we show that the solution is a arkov process and study the invariant distributions of a suitably normalized version thereof. Subsequently, Section 3 deals with the convergence of exclusion processes to sticky Brownian motions in W. First in Section 3.1 we prove Theorem 1, and then in Section 3.2 we state and prove our main result, namely a generalized version of Theorem 1, which deals with the convergence of exclusion processes with nonexponential and possibly dependent ump interarrival times to sticky Brownian motions in W. 2. ultidimensional sticky Brownian motions. This section is devoted to the study of the system of SDEs ( dx i (t) = 1 {X1 (t)<x 2 (t)< <X n (t)} bi dt + dw i (t) ) (5) + 1 {X (t)=x +1 (t)}v dt, i [n], where b i, i [n], are real constants, W = (W 1,W 2,...,W n ) is an n-dimensional Brownian motion with zero drift vector and a strictly positive definite diffusion matrix C = (c i,i ) i,i [n], V = (v ) i [n], [n 1] is a matrix with real entries and the initial conditions X i () = x i, i [n], satisfy (x 1,x 2,...,x n ) W. We note that the diffusion matrix of the process X is both discontinuous and degenerate, so neither existence nor uniqueness of a weak solution to (5) can be obtained directly from the classical results in [27] or[2]. 2.1. Existence and uniqueness. In this subsection, we show that Assumption 1(a) is necessary and sufficient for the existence and uniqueness of a weak solution to (5). Furthermore, even under Assumption 1(a) one cannot expect a strong solution to exist. Our proof relies on the classical results of [28]on the existence and uniqueness of semimartingale reflecting Brownian motions in an orthant; this connection highlights the importance of Assumption 1(a). We first recall the main definition and the main result from [28]. DEFINITION 1([28], Definition 1.1). Let η R d,letɣ be a d d nondegenerate covariance matrix, let R be a d d matrix and for i [d], letf i = { x (R + ) d : x i = }. For x (R + ) d,asemimartingale reflecting Brownian motion (SRB) in the orthant (R + ) d associated with the data (η,ɣ,r) that starts from x is a continuous, (F t )-adapted, d-dimensional process Z defined on some filtered probability space (, (F t ) t,p x ) such that under P x, Z(t) = X(t) + RỸ(t) (R +) d for all t, where:

1162. Z. RÁCZ AND. SHKOLNIKOV (i) X is a d-dimensional Brownian motion with drift vector η and covariance matrix Ɣ such that { X(t) ηt,f t,t } is a martingale and X() = x P x -a.s., (ii) Ỹ is an (F t)-adapted, d-dimensional process such that P x -a.s. for each i [d],theith component Ỹi of Ỹ satisfies: (a) Ỹi() =, (b) Ỹi is continuous and nondecreasing, (c) Ỹi can increase only when Z is on the face F i,thatis, t 1 { Z(s) (R + ) d \F i } dỹi(s) = for all t. Ỹ is referred to as the pushing process of Z. THEORE 2([28], Theorem 1.3 and Corollary 1.4). There exists a SRB in the orthant (R + ) d with data (η,ɣ,r)that starts from x (R + ) d if and only if R is completely-s. oreover, when it exists, the oint law of any SRB, together with its associated pushing process, is unique. We are now ready to prove our result on the system of SDEs (5). THEORE 3. Under Assumption 1(a) there exists a unique weak solution to (5). oreover, if Assumption 1(a) does not hold, there is no weak solution to (5). PROOF. There are two key ideas in the proof. The first is to consider the process of spacings ( X2 ( ) X 1 ( ), X 3 ( ) X 2 ( ),...,X n ( ) X n 1 ( ) ) and the process n i=1 X i ( ), which together determine the process X( ). The second idea is to consider an appropriate (and naturally arising) time change. Step 1. We start with the proof of weak existence. First, from Theorem 2 it follows that there exists a weak solution on a suitable filtered probability space {,(F t ) t,p} to the following system of SDEs: dẑi(t) = (b i+1 b i ) dt + db i (t) + q d (t), i [n 1], with initial conditions Ẑi() = x i+1 x i, i [n 1], where the vector B = (B 1,B 2,...,B n 1 ) is a Brownian motion with zero drift vector and diffusion matrix A = (a i,i ) i,i [n 1] given by (6) a i,i = c i,i + c i+1,i +1 c i,i +1 c i+1,i,

STICKY BROWNIAN OTIONS 1163 the ( ), [n 1], are the semimartingale local times at zero of the processes Ẑ ( ), [n 1], respectively, and recall that q = v i+1, v. Note that here we have used the fact that the matrix Q is completely-s; see Assumption 1(a). Next, we can find (after extending the underlying probability space if necessary) a Brownian motion β = ( β 1, β 2,..., β n ) with zero drift vector and diffusion matrix C such that B i ( ) = β i+1 ( ) β i ( ), i [n 1]. Therefore, we can define X = ( X 1, X 2,..., X n ) as the unique process satisfying ( ) n n n X i (t) = x i + b i t + β i (t) + v (t), i=1 i=1 i=1 ( X 2 (t) X 1 (t),..., X n (t) X n 1 (t) ) = (Ẑ1(t),..., Ẑn 1(t) ), for all t. Finally, we let T(t):= t + (t) := t + (t), t, τ(t):= inf { s :T(s)= t }, t, and set X( ) = X(τ( )). Then clearly (7) X i ( ) X i () = b i τ( ) + β n 1 ( ) ( ) i τ( ) + v τ( ), i [n]. oreover, we note that τ( ), (τ( )) are nondecreasing functions, which induce nonnegative measures dτ( ), d (τ( )) on [, ) satisfying (8) dτ(t)+ d ( τ(t) ) = dt. Therefore we have τ( ) τ( ) = 1 { X 1 (t)< X 2 (t)< < X n (t)} dt = 1 {X1 (t)<x 2 (t)< <X n (t)} dτ(t) = 1 {X1 (t)<x 2 (t)< <X n (t)} dt, which takes care of the first term on the right-hand side of (7). In addition, the processes β i (τ( )), i [n] are martingales with respect to the filtration (F τ(t) ) t with quadratic covariation processes given by c i,i τ( ) = c i,i 1 {X1 (t)<x 2 (t)< <X n (t)} dt, i,i [n], where we used the identity derived in the previous display. From the last computation we can conclude, in particular, that after extending the underlying probability

1164. Z. RÁCZ AND. SHKOLNIKOV space if necessary, we can find a Brownian motion β = (β 1,β 2,...,β n ) with zero drift vector and diffusion matrix C such that Finally, we have ( ) β i τ( ) = 1 {X1 (t)<x 2 (t)< <X n (t)} dβ i (t), i [n]. ( τ( ) ) = = = = 1 { X (τ(t))= X +1 (τ(t))} d ( ) τ(t) ( ) 1 { X (τ(t))= X +1 (τ(t))} dt dτ(t) τ( ) 1 {X (t)=x +1 (t)} dt 1 { X (t)= X +1 (t)} dt 1 {X (t)=x +1 (t)} dt, for [n 1]. Here the second identity is a consequence of (8) and the fact that the boundary local times,, do not charge the set {t : X (t) = X +1 (t)} (see the main result, Theorem 1, in [25]); and the fourth identity follows from the fact that the instantaneously reflecting Brownian motion Ẑ does not spend time on the boundary of the orthant (R + ) n 1 [28], Lemma 2.1. All in all, we can now conclude that (X, β) is a weak solution to (5). Step 2. We now turn to the proof of weak uniqueness. To this end, let (X, W ) be any weak solution to (5). Define { s } σ(t)= inf s : 1 {X1 (a)<x 2 (a)< <X n (a)} da = t, t, and set X( ) = X(σ( )). Using Lévy s characterization of Brownian motion, one verifies that X i (t) = X n 1 i () + b i t + Ŵi(t) + v L (t), t, where Ŵ = (Ŵ1, Ŵ2,...,Ŵn) is a Brownian motion with zero drift vector and diffusion matrix C, and{l } [n 1] are nondecreasing processes whose points of increase are contained in the sets { t : X (t) = X +1 (t) }, [n 1], respectively. oreover, the law of X is uniquely determined by the oint law of (9) ( X 2 ( ) X 1 ( ), X 3 ( ) X 2 ( ),..., X n ( ) X n 1 ( ) ) and n X i ( ). i=1

STICKY BROWNIAN OTIONS 1165 However, by the uniqueness result of Theorem 2 we can identify the first of the latter two processes as an instantaneously reflected Brownian motion in the orthant (R + ) n 1, so the oint law of that process and its boundary local times is uniquely determined. oreover, the second process can be constructed by using the first process, its boundary local time processes and an additional independent one-dimensional standard Brownian motion, so the oint law of the processes in (9) is uniquely determined. Thus, the law of X is uniquely determined as well. Finally, the law of X is also uniquely determined as one can verify that X( ) = X(τ( )), where τ is defined as in step 1 above. Step 3. Suppose now that Assumption 1(a) does not hold. Then a weak solution of (5) cannot exist. Indeed, if (X, W ) was such a weak solution, we could define the time change σ( ) as in step 2 above and let X( ) = X(σ( )) as before. Then the arguments in step 2 would show that the process of spacings ( X 2 ( ) X 1 ( ), X 3 ( ) X 2 ( ),..., X n ( ) X n 1 ( ) ) is a reflecting Brownian motion in the orthant (R + ) n 1 in the sense of [28]. However, by Theorem 2 the latter process does not exist if the reflection matrix Q is not completely-s. This is the desired contradiction. The following example shows that, even when Assumption 1(a) holds, one cannot expect a strong solution to (5) toexist. EXAPLE 1. Consider the following specification of parameters: n = 2, b 1 = b 2 =, c 1,1 = c 2,2 = 1, c 1,2 = c 2,1 =, v 1,1 = 1 2, v 2,1 = 1 2 ; that is, the system of SDEs is (1) dx 1 (t) = 1 {X1 (t)<x 2 (t)} dw 1 (t) 1 2 1 {X 1 (t)=x 2 (t)} dt, (11) dx 2 (t) = 1 {X1 (t)<x 2 (t)} dw 2 (t) + 1 2 1 {X 1 (t)=x 2 (t)} dt, with W 1 and W 2 being independent one-dimensional standard Brownian motions. We claim that this system does not admit a strong solution. It is well known (see Theorem 3.2 in [5]) that strong existence and weak uniqueness together imply pathwise uniqueness, so it suffices to show that pathwise uniqueness does not hold for the system (1) (11). To this end, we consider the SDE (12) dz(t) = 1 {Z(t)>} dβ(t) + 1 {Z(t)=} dt, where β is a Brownian motion with zero drift and diffusion coefficient 2. The main result in [6] shows that pathwise uniqueness does not hold for this equation. Therefore it suffices to argue that pathwise uniqueness for the system (1) (11) would imply pathwise uniqueness for equation (12). Indeed, let Z, Z be two solutions of (12) on the same probability space and with respect to the same Brownian motion β. Extend the probability space so that it supports an independent Brownian motion W with zero drift and diffusion coefficient 2, and define S, S according to ds(t) = 1 {Z(t)>} dw(t) and ds (t) = 1 {Z (t)>} dw(t).

1166. Z. RÁCZ AND. SHKOLNIKOV Finally, set and X 1 = S Z, X 2 = S + Z 2 2 X 1 = S Z 2, X 2 = S + Z. 2 Then both (X 1,X 2 ) and (X 1,X 2 ) are weak solutions of the system (1) (11) with respect to the Brownian motion ((W β)/2,(w + β)/2). Therefore if pathwise uniqueness did hold for the system (1) (11), we would be able to conclude that X 1 = X 1 and X 2 = X 2 pathwise, and, hence, that Z = Z pathwise; in other words, the solution of (12) would be pathwise unique. This is the desired contradiction. 2.2. arkov property and invariant measures. Having established that the weak solution X of the system (5) exists and is unique (see Theorem 3), we can now proceed to study some of its properties. First, we remark that weak existence and uniqueness imply that the corresponding martingale problem is well posed; see, for example, Corollary 4.8 and Corollary 4.9 in Chapter 5 of [21]. Therefore, by Theorem 6.2.2 in [27], the process X is arkovian. In addition, the relation X( ) = X(τ( )), where X is an instantaneously reflecting Brownian motion in the wedge W with a nondegenerate diffusion matrix, shows that the process X has the Harris property (see, e.g., the Appendix of [7]), (13) x,y W,r > : P x( X(t) y <rfor some t ) >. oreover, the corresponding property is true for the process of spacings Z( ) = ( X 2 ( ) X 1 ( ), X 3 ( ) X 2 ( ),...,X n ( ) X n 1 ( ) ). Thus Z has a unique invariant distribution provided that it is positive recurrent or, equivalently, if Ẑ( ) = ( X 2 ( ) X 1 ( ), X 3 ( ) X 2 ( ),..., X n ( ) X n 1 ( ) ) is positive recurrent; see [24] and the references therein. By Proposition 2.8 in the dissertation [15], the latter is the case if and only if (14) Q 1 (b 2 b 1,b 3 b 2,...,b n b n 1 ) T < componentwise. Here, the superscript T stands for the transpose of the vector under consideration. We summarize our findings in the next proposition. PROPOSITION 4. The processes X and Z are arkovian. Both of them possess the Harris property. oreover, the process Z has a unique invariant distribution if and only if the recurrence condition (14) is satisfied.

STICKY BROWNIAN OTIONS 1167 For a wide class of coefficients the invariant distribution of the process Z can be given explicitly. Let, denote the standard inner product in Euclidean space, that is, for x,y R d, x,y = d i=1 x i y i,andletf i := {z (R + ) n 1 : z i = } denote the ith face of the orthant (R + ) n 1. With this notation we then have the following result. THEORE 5. Suppose that in addition to (14) the condition (15) 2A = QD + DQ T is satisfied, where A is given by (6) and D = diag(a) (the diagonal matrix, whose diagonal elements coincide with those of A). Let (16) γ = 2D 1 Q 1 (b 2 b 1,b 3 b 2,...,b n b n 1 ) T, and write γ = (γ 1,...,γ n 1 ). Then the invariant distribution of the process Z in the orthant (R + ) n 1 is given by ( n 1 1 a, (17) C e γ,z dz + 1 {z F } dz ), 2 where C = 1 n 1 a, γ /2 n 1 ( γ ) is the appropriate normalization constant, and dz, [n 1], are the Lebesgue boundary measures on the faces F, [n 1], respectively. PROOF. We first transform our process of interest Z in such a way as to make the diffusion matrix of the transformed process the identity; we refer to [16], Section 3.2.1, for similar computations. Let U = (u ) [n 1] be an orthogonal matrix whose columns are the orthonormal eigenvectors of A,andletG := U T AU,a diagonal matrix with the eigenvalues of A in its diagonal. Define the transformed process Z( ) := G 1/2 U T Z( ). This is a sticky Brownian motion in the cone S := G 1/2 U T (R + ) n 1 = { z R n 1 : UG 1/2 z (R + ) n 1}, with drift vector μ := G 1/2 U T μ,whereμ := (b 2 b 1,...,b n b n 1 ) T, identity diffusion matrix, and reflection matrix Q := G 1/2 U T Q. This transformed reflection matrix can be decomposed as where Q = (N + T)D 1/2 (q,1,...,q,n 1 ), N := G 1/2 U T D 1/2 (n,1,...,n,n 1 ), T := G 1/2 U T QD 1/2 N (t,1,...,t,n 1 ).

1168. Z. RÁCZ AND. SHKOLNIKOV The columns of N are unit vectors, since for all [n 1] we have (18) i=1 n 2 n 1 = ( gi,i 1 u,i i=1 a, ) 2 = 1 a, i=1 g i,i u 2,i = 1, where G = (g ) [n 1], and in the last equality we used that UGU T = A. Furthermore, the corresponding columns of N and T are orthogonal, since for every i [n 1] we have n T,i t,i = n,i t,i = = k=1 q k,i n 1 1 g, u ai,i u u k, 1 = k=1 k=1 n 1 n 2,i 1 u k, q k,i ai,i g, q k,i 1 {k=i} 1 = q i,i 1 =, where we used (18), the fact that U is orthogonal, and that diag(q) = I,which follows from (15). In fact, n,i is the inward unit normal to the ith face F i := G 1/2 U T F i of the new state space S. To see this, let w F i,andletv := G 1/2 U T w F i.then n T,i n 1 v = n,i v = = 1 w k ai,i k=1 n 1 1 g, u ai,i u u k, = 1 k=1 ai,i k=1 1 g, u k, w k w k 1 {k=i} = 1 ai,i w i =, where the last equality is because w F i. Thus the ith column q,i of the new reflection matrix Q is decomposed into components that are normal and tangential to F i, (19) q,i = 1 ai,i (n,i + t,i ). The advantage of this transformation is that the setup of the new process Z fits precisely into the framework of Harrison and Williams [14], who studied the stationary distribution of reflected Brownian motion with identity diffusion matrix in a convex polyhedral domain. Their main result is that the stationary distribution is of exponential form if the reflection matrix satisfies a certain skew symmetry condition, and they give explicit formulas for the exponent. The main difference between their setting and ours is that the process we study is sticky at the boundary of the domain, as opposed to reflecting instantaneously, as is the case in [14]. However, apart from taking care of this distinction at the boundary, the same methods and computations apply.

STICKY BROWNIAN OTIONS 1169 In particular, we can plug our expressions into the formulas of Harrison and Williams [14] to arrive at the skew symmetry condition for our process, and also to find the appropriate exponent. First, we have (2) N T T + T T N = D 1/2( QD + DQ T 2A ) D 1/2. The skew symmetry condition of Harrison and Williams (see [14], equation (1.3)) says that the left-hand side of (2) is the zero matrix, which is the same as our condition (15). Second, plugging in to [14], equation (4.9), the γ arising in the exponent of the stationary distribution of exponential form for the transformed process Z should be γ = 2 ( I ( N T ) 1T T ) 1μ (21) = 2G 1/2 U T D 1 Q 1 μ, and thus the γ for the original process Z should be γ = UG 1/2 γ = 2D 1 Q 1 μ, ust as in (16). In the remainder of the proof, we go through the computations of [14] as applied to our setting. Let L := 1 2 + μ,andfor [n 1], letd := q,.the generator L of the sticky Brownian motion Z can then be written as L = L1 {S\ S} + D 1 {F }. Let p(z) := exp( γ,z ) for z S. In order to show that (17) isinvariantforz,we must show that for every f Cc (S), wehave n 1 a, (22) plf dz + pd f dz =, S 2 F where for [n 1], dz is the surface measure on the face F.DefineL := 1 2 μ. Using Green s second identity and the divergence theorem, we get that for every f Cc (S),wehave plf dz = f L p dz S S (23) + 1 ( f p p f ) 2μ n, f p dz, 2 n, n, F where we used / n, n, to denote differentiation in the inward unit normal direction on the face F.NowL p = ( 1 2 γ 2 μ γ)p =, since using (21) we have that 1 2 γ 2 μ γ = 1 1 ) T T ( 1 ) 2( N γ N T N γ,

117. Z. RÁCZ AND. SHKOLNIKOV which is zero, since N T T is skew symmetric due to (2) and our condition (15). Plugging (23) back into (22) and using (19) we get that showing (22) is equivalent to showing that for every f C c (S),wehave (24) F { f ( (n, t, ) p 2μ n, p ) + (t, pf ) } dz =. The relationship (21) between γ and μ implies that γ T (N T) 2μ T N =, and thus for every [n 1] we have (n, t, ) p 2μ n, p =. Since t, is parallel to the face F, the divergence in (24) is the same as the divergence taken in F. Thus, by applying the divergence theorem on each face F, it follows that showing (24) is equivalent to showing that for every f C c (S),wehave (25) 1 k< F,k (t, n,k + t,k n k, )pf dσ,k =, where F,k = F F k, σ,k denotes (n 3)-dimensional surface measure on F,k, and n,k denotes the unit vector that is normal to both F,k and n,, and points into the interior of F from F,k. In fact, n,k must lie in the two-dimensional space spanned by n, and n,k, and can be determined uniquely, n,k = ( n,k n T, n,kn, ) / ( 1 ( n T, n,k ) 2 ) 1/2. Consequently, since N T T is skew symmetric, we have t, n,k + t,k n k, = for all 1 k< n 1, showing that (25) indeed holds. 3. Convergence and general setup. This section is divided into two parts. In the first part (Section 3.1) we prove the convergence theorem (Theorem 1) as stated in the Introduction. Then in the second part (Section 3.2) we describe a much larger class of particle systems that converge to appropriate sticky Brownian motions in W. 3.1. Proof of the convergence theorem. Given the uniqueness of a weak solution to the system of SDEs (4)asprovedinTheorem3, Theorem 1 is a consequence of Proposition 6 below. To state and obtain the latter, we study the following decomposition. For each i [n] we can write (26) Xi (t) = Xi () + A i (t) + + R, (t) C R, L, (t), (t) C L, (t)

where, for [n 1], (27) (28) and (29) A i (t) := C R, R, t (t) := θ R I R, (t) (t) := t := θ R STICKY BROWNIAN OTIONS 1171 1 {X k (s)+(1/ )<X k+1 (s),k [n 1]} d( P i (s) Q i (s) ), t 1 {X i (s)+(1/ )<Xi+1 (s),x (s)+(1/ )=X+1 (s)} ds 1 {X i (s)+(1/ )<X i+1 (s),x (s)+(1/ )=X +1 (s)} d( R (s) θ R s), and the processes C L,, I L, and L, are defined similarly to C R,, I R, and R,, respectively. For m N, letd m D([, ), R m ). We have the following convergence result. PROPOSITION 6. Assume that Assumption 1 holds and that the initial conditions {X (), > } are deterministic and converge to a limit x W as. Then the family {( (3) X,A,I L,,I R,, L,, R,), > } is tight in D 4n2 2n. oreover, every limit point ( X,A,I L,,I R,, L,, R, ) satisfies the following for each i [n]: (31) (32) (33) (34) X i ( ) = A i ( ) = I L, ( ) = I R, ( ) = 1 {X 1 (s)< <X n (s)} 2a dwi (s) + v I L, R, i,i 1 ( ) = Ii,i ( ) =, 1 {X (s)=x +1 (s)} ds, 1 {X 1 (s)<x 2 (s)< <X n (s)} 2a dwi (s), 1 {X (s)=x +1 (s)} ds, [n 1]\{i 1}, 1 {X (s)=x +1 (s)} ds, [n 1]\{i}, L, ( ) = R, ( ) =, [n 1], with a suitable n-dimensional standard Brownian motion W = (W 1,...,W n ).

1172. Z. RÁCZ AND. SHKOLNIKOV PROOF. Step 1. The tightness of the family in (3) can be verified using the necessary and sufficient conditions of Corollary 3.7.4 in [9]. First, note that for i [n] and [n 1], the processes P i ( ) Q i ( ), aswellas( 1/4 (R (t) θ R t),t ) and (1/4 (L (t) θ L t),t ) all converge to suitable onedimensional Brownian motions in the limit. Therefore, the conditions of Corollary 3.7.4 in [9] hold for the corresponding families of processes indexed by >. One can then bound the indicator functions appearing in the integrands of the integrals in (27), (28) and(29) between and 1 appropriately to show that the same conditions hold for the family {(A,I L,,I R,, L,, R, ), > }, which is thus tight in D 4n2 3n. For example, for i [n] and t wehavethat A i (t) t sgn ( P i (s) Q i (s) ) d ( P i (s) Q i (s) ). The expression on the right-hand side converges to 2a t sgn(b(s)) db(s) as, whereb is a standard one-dimensional Brownian motion. By Tanaka s formula, this is equal to 2a( B(t) L(t)), wherel( ) is the local time process at of B( ). Consequently, the family of processes {A, >} is tight. Verifying tightness of the other families of processes can be done similarly. In view of decomposition (26), the first statement of the proposition now readily follows. Step 2. Now fix a limit point (X,A,I L,,I R,, L,, R, ) and to simplify notation assume that it is the limit of the whole family (3) as. We start with a few simple observations about the limit point under consideration. Note first that, for any fixed >, the umps of all components of (X,A,I L,,I R,, L,, R, ) are bounded above in absolute value by 1, so all components of the limit point must have continuous paths. oreover, for every fixed t, the family {A (t), > } is uniformly integrable due to the estimate ] ] (t) E [ A i (t) 2] = E [[ A i [ t = E = E [ t 2at, ] 1 {X k (s)+(1/ )<Xk+1 (s),k [n 1]} d[p i Q i ](s) ] 1 {X k (s)+(1/ 1 )<Xk+1 (s),k [n 1]} (dp i + dq i )(s) i [n], where[ ] denotes the quadratic variation process of a process with paths in D 1. This and the fact that A is a martingale for any fixed > show that A is a martingale with respect to its own filtration; see, for example, [19], Proposition IX.1.12. Next, we observe that, as limits of nondecreasing processes, I L, and I R, must be nondecreasing processes themselves for every i [n], [n 1], and

STICKY BROWNIAN OTIONS 1173 consequently they are also of finite variation. Furthermore, for all i [n], [n 1], the quadratic variation processes of the martingales L, and R, satisfy t : lim E[[ L, ] ] (t) = and lim E[[ R, ] ] (t) =. Therefore, the distributional limits L, lim L,, R, lim R, in D 1 exist and are identically equal to zero. Finally, the two observations of the previous paragraph, together with the decomposition (26), show that for i, i [n] the quadratic covariation processes X i,x i and A i,a i are in fact equal. In particular, we have that X i = A i for i [n]. Step 3. In order to show (32), we study the quadratic covariation processes X i,x i = A i,a i, i, i [n]. We first claim that A i,a i = whenever i i. To this end, it suffices to show that for any such pair of indices A i ( )A i ( ) is a martingale with respect to its own filtration. The latter is the limit in D 1 of the family of martingales {A i ( )A i ( ), > } by definition, so it is enough to prove that, for any fixed t, the random variables {A i (t)a i (t), > } are uniformly integrable. The latter is a consequence of the following chain of estimates: E [ A i (t) 2 A i (t)2] [ t ] [ t ] = E A i (s) 2 da i (s)2 + E A i (s)2 da i (s) 2 = E E = E [ t [ t [ t + E [ t = E 2a = 2a A i (s) 2 d [ A i ] (s) ] + E [ t ] A i (s) 2 d[p i Q i ](s) + E [ t t t A i (s)2 d [ A i [ t ] A i (s) 2 1 (dp i + dq i )(s) ] A 1 i (s)2 (dp i + dq i )(s) A i (s) 2 2a ds ] [ t ] + E A i (s)2 2a ds ( E [ [Pi Q i ](s) ] + E [ [P i Q i ](s) ]) ds 4as ds = 4a 2 t 2. ] (s) ] ] A i (s)2 d[p i Q i ](s)

1174. Z. RÁCZ AND. SHKOLNIKOV We next aim to evaluate A i, i [n]. To this end, we first show that for any fixed i [n] and t, the random variables {A i (t) 2, >} are uniformly integrable. By Itô s lemma for (not necessarily continuous) semimartingales we have that for any fixed t, t A i (t) 4 = 4A i (s ) 3 da i (s) + 1 t 12A i (s ) 2 d [ A ] i (s) 2 + {( A i (s) 4 A i (s ) 4) 4A i (s ) 3( A i (s) A i (s ) ) s t 6A i (s ) 2( A i (s) A i (s ) ) 2 }. Taking expectations on both sides and dropping the third line of the previous display, we arrive at the following estimate: E [ A i (t) 4] [ t E + E + E ] 4A i (s ) 3 da i (s) [ t [ s t 6A i (s ) 2 d [ A i ] (s) ] {( A i (s) 4 A i (s ) 4) 4A i (s ) 3( A i (s) A i (s ) )}]. The first term on the right-hand side is equal to zero, since A i is a martingale starting at zero. We can upper bound the second term on the right-hand side using the inequality d[a i ](s) 1 d(p i + Q i )(s). Finally, we can upper bound the third expectation on the right-hand side using the identity x 4 y 4 4y 3 (x y) = (x y) 2 (x 2 + 2xy + 3y 2 ), the fact that the umps of the process A i are of size 1, and the fact that A i (s) A i (s ) d(p i + Q i )(s). We then arrive at the estimate E [ A i (t) 4] [ t ( E 3A i (s) 2 + 11A i (s ) 2) 1 ] d(p i + Q i )(s), and the right-hand side can now be bounded above by a constant depending only on a and t by arguing as above when estimating E[A i (t) 2 A i (t) 2 ]. Thus indeed the random variables {A i (t) 2, >} are uniformly integrable. Putting this together with the fact that the functional (ω 1,ω 2,...,ω n ) t2 t 1 1 {ω1 (s)< <ω n (s)} ds

STICKY BROWNIAN OTIONS 1175 on D n is lower semicontinuous and using the Portmanteau theorem, we have for each i [n] that [ G ( A )( t2 )] A i (t 2 ) 2 A i (t 1 ) 2 2a 1 {X 1 (s)< <Xn (s)} ds [ = lim E G ( A )( A i (t 2 ) 2 A i (t 1 ) 2 ɛ t 1 t2 )] 2a 1 {X t k (s)+ɛ<xk+1 (s),k [n 1]} ds 1 [ lim sup E G ( A )( A i (t 2 ) 2 A i (t 1 ) 2 [ = lim sup E G ( A )( A i (t 2 ) 2 A i (t 1 ) 2 t2 )] 2a 1 {X t k (s)+(1/ )<Xk+1 (s),k [n 1]} ds 1 t2 )] 1 {X t k (s)+(1/ )<Xk+1 (s),k [n 1]} d[p i Q i ](s) 1 ] (t2 ) + [ A ] i (t1 ) )] = = lim sup E [ G ( A )( A i (t 2 ) 2 A i (t 1 ) 2 [ A i for any nonnegative continuous bounded functional G on D n measurable with respect to the σ -algebra generated by the coordinate mappings on D n ([,t 1 ]).Therefore, recalling from the end of step 2 of the proof that Xi = A i, we conclude that t 1 <t 2 : X i (t2 ) Xi t2 (35) (t1 ) 2a 1 {X 1 (s)< <Xn (s)} ds holds with probability one. On the other hand, E [ G ( A )( A i (t 2 ) 2 A i (t 1 ) 2 2a(t 2 t 1 ) )] = lim E[ G ( A )( A i (t 2 ) 2 A i (t 1 ) 2 2a(t 2 t 1 ) )] = lim E[ G ( A )( A i (t 2 ) 2 A i (t 1 ) 2 [P i Q i ](t 2 ) +[P i Q i ](t 1 ) )] for any functional G on D n as above. Hence t 1 <t 2 : X i (t2 ) Xi (36) (t1 ) 2a(t 2 t 1 ) must hold with probability 1. In view of (36), we see that in order to improve (35) to an equality, it suffices to show that the measure d Xi =d A i assigns zero mass to the sets t 1

1176. Z. RÁCZ AND. SHKOLNIKOV {t :X (t) = X +1 (t)}, [n 1], with probability one. To this end, we first recall that for every i [n] the square integrable martingale A i is the limit in D 1 of the square integrable martingales {A i, >}, and the random variables {A i (t) 2, >} are uniformly integrable for any fixed t. Therefore A i is the limit in D 1 of {[A i ], >}, and so by the Portmanteau theorem, E [( A i (t) A ) 2 ] i (t) lim inf E[([ A ] [ i (t) A ] ) 2 ] i (t) [( t lim inf E 1 {X k (s)+(1/ )<Xk+1 (s),k [n 1]} 1 ) 2 ] (dp i + dq i dp i dq i )(s) [ t = lim inf E 1 {X k (s)+(1/ )<Xk+1 (s),k [n 1]} 1 ] d[p i + Q i P i Q i ](s) 1 lim inf 3/2 E[ P i (t) + Q i (t) + P i (t) + Q i (t) ] = for any fixed i, i [n] and t with probability one. In view of the path continuity of the processes Xi, i [n], this implies X 1 = X 2 = = X n with probability one. To conclude the argument, we use the occupation time formula for continuous semimartingales (see, e.g., [26], Theorem VI.1.6), which states that if Y is a continuous semimartingale, and φ is a positive Borel function, then a.s. for every t wehave t φ ( Y(s) ) d Y (s) = φ(a)l a (t) da, where L a ( ) is the local time process at a of Y( ). In particular, the choice of φ(a)= 1 {a=} gives that t 1 {Y(s)=} d Y (s) =, and now choosing Y( ) = X+1 ( ) X ( ) this implies that the measure d X+1 X = d X +1 + d X = 2d X = 2d X i assigns zero mass to the set {t :X (t) = X +1 (t)} with probability one. Hence, equality must hold in (35). The representation (32) with a suitable standard

STICKY BROWNIAN OTIONS 1177 Brownian motion W = (W 1,W 2,...,W n ) now readily follows from the artingale Representation theorem in the form of Theorem 4.2 in Chapter 3 of [21]. Step 4. We now turn to the proof of (31), (33) and(34). To this end, recalling the ghost particles X ( ) and X n+1 ( ) introduced for notational convenience, for any >, i {, 1,...,n} and [n 1],define I,1 ( ) := I,2 ( ) := 1 {X (s)+(1/ )=X+1 (s)} ds, 1 {X i (s)+(1/ )=Xi+1 (s),x (s)+(1/ )=X+1 (s)} ds. Then for any i [n], [n 1], we have the decompositions I L, ( ) := I,1 ( ) I,2 i 1, ( ), I R, ( ) := I,1 ( ) I,2 ( ). It is now easy to check that for each i {, 1,...,n}, [n 1], the families of processes {I,1, >} and {I,2, >} satisfy the tightness criterion of Corollary 3.7.4 in [9]. So, after passing to a subsequence if necessary, we obtain the existence of suitable limits I,1 and I,2, respectively; for notational convenience we assume that the full families of processes converge ointly to the respective limit points. The limiting processes inherit many properties of the prelimit processes. First, clearly the limits are nondecreasing processes and inherit the property that for every i {, 1,...,n}, (37) t 1 <t 2 : I,2 (t 2 ) I,2 (t 1 ) I,1 (t 2 ) I,1 (t 1 ). Second, the prelimit processes satisfy 1 {X (t)+(1/,1 )<X+1 (t)} di (t) =, (38) (1 {X i (t)+(1/ )<Xi+1 (t)} + 1,2 {X (t)+(1/ )<X+1 (t)}) di (t) =, and from these we have that the limiting processes satisfy (39) 1 {X (t)<x+1 (t)} di,1 (t) =, (4) (1 {X i (t)<x i+1 (t)} + 1 {X (t)<x +1 (t)} ) di,2 (t) =. These properties can be shown by arguing as in the second half of the proof of Theorem 4.1 in [32] (see also the proof of Proposition 9 in [2]); we provide a sketch on how to obtain (39) from (38), and (4) follows similarly. We first use the Skorokhod representation theorem [9], Theorem 3.1.8, and the fact that the

1178. Z. RÁCZ AND. SHKOLNIKOV limiting processes (X,I,1,I,2,I L,,I R, ) are a.s. continuous to replace the sequence of processes {(X,I,1,I,2,I L,,I R, ), > } by one that has the same distribution and which a.s. converges uniformly on compact time intervals. Let {f m } m 1 be a sequence of continuous functions such that for every m, f m : R [, 1], f m (x) = forx 1/m and f m (x) = 1forx 2/m. By passing to the m limit, in order to show (39) it suffices to show that for each t, [n 1],andm 1, a.s. t ( f m X (41) +1 (s) X (s)) di,1 (s) =. To do this, fix [n 1], m 1andt. For >m 2,(38) implies that a.s. t ( f m X +1 (s) X (s)) di,1 (s) =, and thus to show (41) it suffices to show that a.s. t ( f m X +1 (s) X (s)) di,1 (s) (42) t ( f m X +1 (s) X (s)) di,1 (s) as. The almost sure convergence assumed above implies that a.s. as, X+1 ( ) X ( ) X +1 ( ) X ( ) uniformly on compacts, and since f m is uniformly continuous, we have that a.s. as, f m (X+1 ( ) X ( )) f m(x+1 ( ) X ( )) uniformly on compacts. We also have that a.s. as, I,1 ( ) I,1 ( ) uniformly on compacts, and the remaining details of showing (42) are as in the end of the proof of Theorem 4.1 in [32]. Next, we define the time change { s } σ(t)= inf s : 1 {X 1 (r)<x2 (r)< <X n (r)} dr = t, t and then let X ( ) = X (σ ( )), Î,1 ( ) = I,1 (σ ( )) and Î,2 ( ) = I,2 (σ ( )). Using Lévy s characterization of Brownian motion, we conclude that the components of X admit the decomposition X i ( ) = X i () + 2aŴi( ) + v Î,1 ( ) + i 1 θ L Î,2 n 1 i 1, ( ) θ R Î,2 ( ) i

STICKY BROWNIAN OTIONS 1179 with Ŵ = (Ŵ1, Ŵ2,...,Ŵn) being a suitable standard Brownian motion. As we shall show shortly, for every i [n] we have (43) Î,2 ( ), [n 1]\{i}, and thus the decomposition simplifies to X i ( ) = X i () + 2aŴi( ) + v Î,1 ( ). We can then identify the process of spacings ( X 2 ( ) X 1 ( ), X 3 ( ) X 2 ( ),..., X n ( ) X n 1 ( )) as a reflected Brownian motion in the orthant (R + ) n 1 with reflection matrix Q (recall from Section 1.2 that q, = v +1, v, for, [n 1]), and the processes Î,1 ( ), [n 1], with its boundary local times. At this point one can argue as in step 2 in the proof of Theorem 3 to obtain the representations (31), (33) and (34). Thus what is left is to show (43). For [n 1] let Ẑ ( ) = X +1 ( ) X ( ), thus Ẑ( ) = (Ẑ1( ),...,Ẑn 1( )) is the process of spacings. Due to (4), showing (43) reduces to showing that (44),2 1 {Ẑi(t)=Ẑ (t)=} dî (t) =. This can be done by generalizing the proof of Theorem 1 in [25], along the lines of [3], Theorem 7.7, and [2], Lemma 1, and, in particular, it uses the Lyapunov functions constructed in the proof of Lemma 4 in [25]. Here we provide a sketch of the proof, and refer to [3, 25] and[2] for details. This is the only point in our proof where we use Assumption 1(b). First we introduce some notation to simplify the representation of Ẑ. For i [n 1], let B i ( ) := 2a(Ŵi+1( ) Ŵi( )); then B := ( B 1,..., B n 1 ) is a Brownian motion with mean zero and diffusion matrix A = (a ) n 1 =1 given by 4a, if i =, a := 2a, if i =1,, otherwise. In the following we think of Î,2 as an (R + ) (n 1)2 -valued process whose components are indexed by ordered pairs (i, ), i, [n 1], and the component indexed by (i, ) is Î,2 ( ). Recalling the definition of the matrix Q(2) from Section 1.2, we can write Ẑ asẑ( ) = Ẑ() + B( ) + QÎ,1 ( ) + Q (2)Î,2 ( ).