Abstract
We propose a novel Continuation Multi Level Monte Carlo (CMLMC) algorithm for weak approximation of stochastic models. The CMLMC algorithm solves the given approximation problem for a sequence of decreasing tolerances, ending when the required error tolerance is satisfied. CMLMC assumes discretization hierarchies that are defined a priori for each level and are geometrically refined across levels. The actual choice of computational work across levels is based on parametric models for the average cost per sample and the corresponding variance and weak error. These parameters are calibrated using Bayesian estimation, taking particular notice of the deepest levels of the discretization hierarchy, where only few realizations are available to produce the estimates. The resulting CMLMC estimator exhibits a non-trivial splitting between bias and statistical contributions. We also show the asymptotic normality of the statistical error in the MLMC estimator and justify in this way our error estimate that allows prescribing both required accuracy and confidence in the final result. Numerical results substantiate the above results and illustrate the corresponding computational savings in examples that are described in terms of differential equations either driven by random measures or with random coefficients.
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Notes
For the variance estimator, one can also use the unbiased estimator; by dividing by \(\overline{M}_\ell -1\) instead of \({\overline{M}}_\ell \). All discussions in this work still apply.
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Acknowledgments
Raúl Tempone is a member of the Strategic Research Initiative on Uncertainty Quantification in Computational Science and Engineering at KAUST (SRI-UQ). The authors would like to recognize the support of King Abdullah University of Science and Technology (KAUST) AEA project “Predictability and Uncertainty Quantification for Models of Porous Media” and University of Texas at Austin AEA Round 3 “Uncertainty quantification for predictive modeling of the dissolution of porous and fractured media”. We would also like to acknowledge the use of the following open source software packages: PETSc [4], PetIGA [8], NumPy, matplotlib [21].
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Communicated by Desmond Higham.
Appendix: Normality of MLMC estimator
Appendix: Normality of MLMC estimator
Theorem 7.1
([10, LindebergspsFeller Theorem, p. 114]) For each \(n\), let \(X_{n,m}\), for \(1 \le n \le m\), be independent random variables (not necessarily identical). Denote
Suppose the following Lindeberg condition is satisfied for all \(\epsilon >0\):
Then,
where \(\varPhi (z)\) is the normal cumulative density function of a standard normal random variable.
Lemma 7.1
Consider the MLMC estimator \(\mathcal {A}\) given by
where \(G_{\ell }(\omega _{\ell , m})\) denote as usual i.i.d. samples of the random variable \(G_\ell \). The family of random variables, \((G_\ell )_{\ell \ge 0}\), is also assumed independent. Denote \({Y_\ell = |G_\ell - {\hbox {E}\left[ G_\ell \right] }|}\) and assume the following
for some \(\beta > 1\) and strictly positive constants \(C_1, C_2, q_3,\delta \) and \(\tau \). Choose the number of samples on each level \(M_\ell \) to satisfy, for \(q_2 > 0\) and a strictly positive sequence \(\{H_\ell \}_{\ell \ge 0}\)
Moreover, choose the number of levels \(L\) to satisfy
for some constants \(C\), and \(c>0\). Finally, denoting
if we have that either \(p>0\) or \(c < \delta /p\), then
Proof
We prove this lemma by ensuring that the Lindeberg condition (7.1) is satisfied. The condition becomes in this case
for all \(\epsilon > 0\). Below we make repeated use of the following identity for non-negative sequences \({\{a_\ell \}}\) and \({\{b_\ell \}}\) and \(q \ge 0\).
First we use the Markov inequality to bound
Using (7.5) and substituting for the variance \({\mathrm{{Var}}\left[ \mathcal A\right] }\) where we denote \({\mathrm{{Var}}\left[ G_\ell \right] } = {\hbox {E}\left[ \left( G_\ell - {\hbox {E}\left[ G_\ell \right] } \right) ^{2}\right] }\) by \(V_\ell \), we find
Using the lower bound on the number of samples \(M_\ell \) (7.3) and (7.5) again yields
Finally using the bounds (7.2a) and (7.2b)
We distinguish two cases here, namely:
-
If \(p>0\) is satisfied then \(\lim _{\mathrm{{TOL}}\rightarrow 0} F= 0\) for any \(c>0\).
-
Otherwise, substituting (7.4) gives
$$\begin{aligned} F&\le \epsilon ^{-\delta } \mathrm{{TOL}}^{\delta } C_1^{-1-{\delta }/{2}} C_2 \frac{\mathrm{{TOL}}^{-cp } \beta ^{(C+1)p} - 1}{\beta ^p-1} = {\mathcal {O}(\mathrm{{TOL}}^{\delta - cp})} , \end{aligned}$$and since in this case \(cp < \delta \) then \(\lim _{\mathrm{{TOL}}\rightarrow 0} F = 0\). \(\square \)
Remark 7.1
The choice (7.3) mirrors the choice (2.7), the latter being the optimal number of samples to bound the statistical error of the estimator by \(\mathrm{{TOL}}\). Specifically, \(H_\ell \propto \sqrt{V_\ell W_\ell }\) where \(W_\ell \) is the work per sample on level \(\ell \). Moreover, the choice (2.7) uses the variances \(\{ V_\ell \}_{\ell =0}^L\) or an estimate of it in the actual implementation. On the other hand, the choice (7.3) uses the upper bound of \(V_\ell \) instead, if \(q_2\) is the rate of variance convergence therein. Furthermore, if we assume the weak error model (2.9a) holds and \(h_L = h_0 \beta ^{-L}\) then we must have
which gives a lower bound on the number of levels \(L\), namely
to bound the bias by \(\mathrm{{TOL}}\).
Finally, in Example 2.1 the conditions (7.2) are satisfied for \(q_3=2\) and, assuming \(p^*> 3\), for \(\delta =1\) and \(\tau =6\). Similarly, Example 2.2 satisfies the conditions (7.2) are for \(q_3=1\) and \(\delta =2\) and \(\tau =2\), cf. [20].
Remark 7.2
The assumption (7.2a) can be relaxed. For instance, one can assume instead that
and slightly different conditions on \(L\).
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Collier, N., Haji-Ali, AL., Nobile, F. et al. A continuation multilevel Monte Carlo algorithm. Bit Numer Math 55, 399–432 (2015). https://doi.org/10.1007/s10543-014-0511-3
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DOI: https://doi.org/10.1007/s10543-014-0511-3
Keywords
- Multilevel Monte Carlo
- Monte Carlo
- Partial differential equations with random data
- Stochastic differential equations
- Bayesian inference