2016
DOI: 10.1186/s12918-016-0342-8
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Generalized method of moments for estimating parameters of stochastic reaction networks

Abstract: BackgroundDiscrete-state stochastic models have become a well-established approach to describe biochemical reaction networks that are influenced by the inherent randomness of cellular events. In the last years several methods for accurately approximating the statistical moments of such models have become very popular since they allow an efficient analysis of complex networks.ResultsWe propose a generalized method of moments approach for inferring the parameters of reaction networks based on a sophisticated mat… Show more

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Cited by 29 publications
(19 citation statements)
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References 55 publications
(86 reference statements)
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“…Of course, this estimator can also be extended to include information about higher-order moments than two by changing the upper limit of the sum over k . The MLE estimator here used can be seen as a special case of the generalized method of moments estimator used in [42].…”
Section: Methodsmentioning
confidence: 99%
“…Of course, this estimator can also be extended to include information about higher-order moments than two by changing the upper limit of the sum over k . The MLE estimator here used can be seen as a special case of the generalized method of moments estimator used in [42].…”
Section: Methodsmentioning
confidence: 99%
“…Bootstrap filter can outperform EKF (Gordon et al, 1993). Generalized method of moments with empirical sample moments is performed in (Kügler, 2012;Lück and Wolf, 2016) whereas moment based methods for parameters inference and optimum experiment design are considered in (Ruess and Lygeros, 2015). Expectation propagation (EP) for approximate Bayesian inference is studied in (Cseke et al, 2016).…”
Section: Other Statistical Methodsmentioning
confidence: 99%
“…(cont.) Kulikov and Kulikova (2015a) Cited by Kulikov and Kulikova (2017) Cited by Kutalik et al (2007) Cited by Kuwahara et al (2013) Cited by Lakatos et al (2015) Cited by Lang and Stelling (2016) Cited by Li and Vu (2013) Cited by Li and Vu (2015) Cited by Liao et al (2015a) Cited by Liao et al (2015b) Cited by Liepe et al (2014) Cited by Lillacci and Khammash (2010a) Cited by Lillacci and Khammash (2010b) Cited by Lillacci and Khammash (2012) Cited by Lindera and Rempala (2015) Cited by Liu et al (2006) Cited by Liu and Wang (2008b) Cited by Liu and Wang (2008a) Cited by Liu and Wang (2009) Cited by Liu et al (2012) Cited by Liu and Gunawan (2014) Cited by Loos et al (2016) Cited by Lück and Wolf (2016) Cited by Mancini et al (2015) Cited by Mannakee et al (2016) Cited by Mansouri et al (2014) Cited by Mansouri et al (2015) Cited by Matsubara et al (2006) Cited by Mazur (2012) Cited by Mazur and Kaderali (2013) Cited by McGoff et al (2015) Cited by Meskin et al (2011) Cited by Meskin et al (2013) Cited by Meyer et al (2014) Cited by Michailidis and dAlché Buc (2013) Cited by Michalik et al (2009) Cited by Mihaylova et al (2011) Cited by Mihaylova et al (2012) Cited by…”
Section: Abdullah Et Al (2013b)mentioning
confidence: 99%
“…From its original application in the modeling of capital asset pricing [5], its use has grown to make it one of the central methods of econometric analysis [11]. In spite of its broad applicability, its use in the natural sciences has been quite limited, although it has been applied recently to the analysis of simulated stochastic chemical reaction networks [12]. In the GMM, the population moments of a random variable, as calculated from a suitable model, are compared to the sample moments as calculated from the measured data.…”
Section: Introductionmentioning
confidence: 99%