scholarly journals Effective Multi-level Monte Carlo Methods for Stochastic Biochemical Kinetics

2021 ◽  
Author(s):  
Priyabrata Senapati

Stochastic mathematical models are essential for an accurate description of biochemical processes at the cellular level. The effect of random fluctuations may be significant when some species have low molecular counts. While exact stochastic simulation methods exist, they are typically expensive on systems arising in applications. Thus more effective strategies are required for simulating complex stochastic models of biochemical system. Often, the expected value of some function of the final time solution of the stochastic model is of interest. Then, the approach employing multi-level Monte Carlo methods is more efficient than the traditional techniques. In this thesis, we study multi-level Monte Carlo (MLMC) schemes for a reliable and effective simulation of stochastic models of biochemical kinetics. The advantages of these MLMC strategies are illustrated on several biochemical models arising in applications.

2021 ◽  
Author(s):  
Priyabrata Senapati

Stochastic mathematical models are essential for an accurate description of biochemical processes at the cellular level. The effect of random fluctuations may be significant when some species have low molecular counts. While exact stochastic simulation methods exist, they are typically expensive on systems arising in applications. Thus more effective strategies are required for simulating complex stochastic models of biochemical system. Often, the expected value of some function of the final time solution of the stochastic model is of interest. Then, the approach employing multi-level Monte Carlo methods is more efficient than the traditional techniques. In this thesis, we study multi-level Monte Carlo (MLMC) schemes for a reliable and effective simulation of stochastic models of biochemical kinetics. The advantages of these MLMC strategies are illustrated on several biochemical models arising in applications.


2008 ◽  
Vol 40 (02) ◽  
pp. 293-320 ◽  
Author(s):  
Charles Bordenave ◽  
Giovanni Luca Torrisi

We extend a result due to Zazanis (1992) on the analyticity of the expectation of suitable functionals of homogeneous Poisson processes with respect to the intensity of the process. As our main result, we provide Monte Carlo estimators for the derivatives. We apply our results to stochastic models which are of interest in stochastic geometry and insurance.


2008 ◽  
Vol 40 (2) ◽  
pp. 293-320
Author(s):  
Charles Bordenave ◽  
Giovanni Luca Torrisi

We extend a result due to Zazanis (1992) on the analyticity of the expectation of suitable functionals of homogeneous Poisson processes with respect to the intensity of the process. As our main result, we provide Monte Carlo estimators for the derivatives. We apply our results to stochastic models which are of interest in stochastic geometry and insurance.


Author(s):  
Ranjan S. Mehta ◽  
Anquan Wang ◽  
Michael F. Modest ◽  
Daniel C. Haworth

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