Publications

Working Paper
Karkalakis P, Hermange G, Trevezas S, Cournède P-H. Revisiting the Generalized Gamma Model - An application to the first division time of hematopoietic stem cells. Working Paper.
In Preparation
Oikonomidis I, Trevezas S. Closed-Form Estimators for the Dirichlet and Matrix Gamma Distributions. In Preparation.
Kordalis L, Trevezas S. Limit Theorems for Time Multidimensional Markov Renewal Chains. In Preparation.
Koutsis P, Trevezas S. Posterior Asymptotics for the Semi-Markov Beta-Stacy Process. In Preparation.
Gavrilopoulos G, Trevezas S, Votsi I. Representations of asymptotic distributions in nonparametric mle for finite Markov models. In Preparation.
Kordalis L, Trevezas S. Time Multidimensional Markov Renewal Chains - An Algebraic Approach. In Preparation.
Forthcoming
Florakis K, Trevezas S, Letort V. Predicting tomato water consumption in a hydroponic greenhouse: contribution of light interception models. Frontiers in Plant Science. Forthcoming.
2023
Oikonomidis I, Trevezas S. Cumulative Link Mixed-Effects Models in the Service of Remote Sensing Crop Progress Monitoring. arXiv preprint arXiv:2308.14520. 2023. Publisher's VersionAbstract
This study introduces an innovative Cumulative Link Modeling approach to monitor crop progress over large areas using remote sensing data. The models utilize the predictive attributes of calendar time, thermal time, and the Normalized Difference Vegetation Index (NDVI). Two distinct issues are tackled: real-time crop progress prediction, and completed season fitting. In the context of prediction, the study presents two model variations, the standard one based on the Multinomial distribution and a novel one based on the Multivariate Binomial distribution. In the context of fitting, random effects are incorporated to capture the inherent inter-seasonal variability, allowing the estimation of biological parameters that govern crop development and determine stage completion requirements. Theoretical properties in terms of consistency, asymptotic normality, and distribution-misspecification are reviewed. Model performance was evaluated on eight crops, namely corn, oats, sorghum, soybeans, winter wheat, alfalfa, dry beans, and millet, using in-situ data from Nebraska, USA, spanning a 20-year period. The results demonstrate the wide applicability of this approach to different crops, providing real-time predictions of crop progress worldwide, solely utilizing open-access data. To facilitate implementation, an ecosystem of R packages has been developed and made publicly accessible under the name Ages of Man.
2021
Logothetis D, Malefaki S, Trevezas S, Cournède P-H. Bayesian Estimation For the GreenLab Plant Growth Model with Deterministic Organogenesis. Journal of Agricultural, Biological, and Environmental Statistics. 2021. Publisher's Version
2018
C. B, A. M, A. J, S. T, P.-H. C. Mixed-effects estimation in dynamic models of plant growth for the assessment of inter individual variability. Journal of Agricultural, Biological, and Environmental Statistics. 2018;23(2):208-232. Publisher's Version
2016
C. B, S. T, P.-H. C. A nonlinear mixed effects model of plant growth and estimation via stochastic variants of the EM algorithm. Communications in Statistics – Theory and Methods. 2016;45(6):1643-1669. isher's Version
2015
Chen Y, S. T, P.-H. C. A regularized particle filter EM algorithm based on Gaussian randomization with an application to plant growth modeling. Methodology & Computing in Applied Probability. 2015;17(4):847-870. Publisher's Version
2014
S. T, Malefaki S, P.-H. C. Parameter estimation via stochastic variants of the ECM algorithm with applications to plant growth modeling. Computational Statistics & Data Analysis. 2014;78:82–99. Publisher's Version
2013
Chen Y, Trevezas S, Gupta A, P.-H. C. Iterative convolution particle filtering for nonlinear parameter estimation and data assimilation with application to crop yield prediction. In: SIAM Conference on Control and its Applications. San Diego, California, USA: Society for Industrial and Applied Mathematics; 2013:67-74. hal.archives-ouvertes.fr
S. T, P.-H. C. A sequential Monte Carlo approach for MLE in a plant growth model. Journal of Agricultural, Biological, and Environmental Statistics. 2013;18(2):250-270. Publisher's Version
2011
Loi C, Cournède P-H, Trevezas S. Bayesian estimation in Functional-Structural Plant Models with stochastic organogenesis. In: 14th ASMDA International Conference. Rome, Italy; 2011. hal.inria.fr
S. T, N. L. Exact MLE and asymptotic properties for nonparametric Semi-Markov models. Journal of Nonparametric Statistics. 2011;23(3):719-739. Publisher's Version
P.-H. C, V. L, A. M, et al. Some parameter Estimation Issues in Functional-Structural Plant Modeling. Mathematical Modeling of Natural Phenomena. 2011;6(2):133-159. Publisher's Version
2010
Malefaki S, S. T, N. L. An EM and a Stochastic Version of the EM algorithm for non-parametric Hidden semi-Markov models. Communications in Statistics, Simulation & Computation. 2010;32(2):240-261. Publisher's Version
2009
S. T, N. L. Maximum likelihood Estimation for general hidden semi-Markov processes with backward recurrence time dependence. Journal of Mathematical Sciences. 2009;163(3):262-274. Publisher's Version
S. T, N. L. Variance Estimation in the Central Limit Theorem for Markov chains. Journal of Statistical Planning and Inference. 2009;139(7):2242-2253. Publisher's Version