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Dive into the research topics where Konstantinos Kalogeropoulos is active.

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Featured researches published by Konstantinos Kalogeropoulos.


Biostatistics | 2013

Capturing the time-varying drivers of an epidemic using stochastic dynamical systems

Joseph Dureau; Konstantinos Kalogeropoulos; Marc Baguelin

Epidemics are often modeled using non-linear dynamical systems observed through partial and noisy data. In this paper, we consider stochastic extensions in order to capture unknown influences (changing behaviors, public interventions, seasonal effects, etc.). These models assign diffusion processes to the time-varying parameters, and our inferential procedure is based on a suitably adjusted adaptive particle Markov chain Monte Carlo algorithm. The performance of the proposed computational methods is validated on simulated data and the adopted model is applied to the 2009 H1N1 pandemic in England. In addition to estimating the effective contact rate trajectories, the methodology is applied in real time to provide evidence in related public health decisions. Diffusion-driven susceptible exposed infected retired-type models with age structure are also introduced.


Annals of Statistics | 2010

Inference for stochastic volatility models using time change transformations

Konstantinos Kalogeropoulos; Gareth O. Roberts; Petros Dellaportas

We address the problem of parameter estimation for diffusion driven stochastic volatility models through Markov chain Monte Carlo (MCMC). To avoid degeneracy issues we introduce an innovative reparametrisation defined through transformations that operate on the time scale of the diffusion. A novel MCMC scheme which overcomes the inherent difficulties of time change transformations is also presented. The algorithm is fast to implement and applies to models with stochastic volatility. The methodology is tested through simulation based experiments and illustrated on data consisting of US treasury bill rates.


Statistics in Medicine | 2017

Bayesian epidemic models for spatially aggregated count data

Chrisovalantis Malesios; Nikolaos Demiris; Konstantinos Kalogeropoulos; Ioannis Ntzoufras

Epidemic data often possess certain characteristics, such as the presence of many zeros, the spatial nature of the disease spread mechanism, environmental noise, serial correlation and dependence on time-varying factors. This paper addresses these issues via suitable Bayesian modelling. In doing so, we utilize a general class of stochastic regression models appropriate for spatio-temporal count data with an excess number of zeros. The developed regression framework does incorporate serial correlation and time-varying covariates through an Ornstein-Uhlenbeck process formulation. In addition, we explore the effect of different priors, including default options and variations of mixtures of g-priors. The effect of different distance kernels for the epidemic model component is investigated. We proceed by developing branching process-based methods for testing scenarios for disease control, thus linking traditional epidemiological models with stochastic epidemic processes, useful in policy-focused decision making. The approach is illustrated with an application to a sheep pox dataset from the Evros region, Greece. Copyright


Journal of The Royal Statistical Society Series C-applied Statistics | 2016

A Bayesian approach to estimate changes in condom use from limited human immunodeficiency virus prevalence data.

Joseph Dureau; Konstantinos Kalogeropoulos; Peter Vickerman; Michael Pickles; Marie-Claude Boily

Summary Evaluation of large‐scale intervention programmes against human immunodeficiency virus (HIV) is becoming increasingly important, but impact estimates frequently hinge on knowledge of changes in behaviour such as the frequency of condom use over time, or other self‐reported behaviour changes, for which we generally have limited or potentially biased data. We employ a Bayesian inference methodology that incorporates an HIV transmission dynamics model to estimate condom use time trends from HIV prevalence data. Estimation is implemented via particle Markov chain Monte Carlo methods, applied for the first time in this context. The preliminary choice of the formulation for the time varying parameter reflecting the proportion of condom use is critical in the context studied, because of the very limited amount of condom use and HIV data available. We consider various novel formulations to explore the trajectory of condom use over time, based on diffusion‐driven trajectories and smooth sigmoid curves. Numerical simulations indicate that informative results can be obtained regarding the amplitude of the increase in condom use during an intervention, with good levels of sensitivity and specificity performance in effectively detecting changes. The application of this method to a real life problem demonstrates how it can help in evaluating HIV interventions based on a small number of prevalence estimates, and it opens the way to similar applications in different contexts.


Stochastic Processes and their Applications | 2013

Advanced MCMC Methods for Sampling on Diffusion Pathspace

Alexandros Beskos; Konstantinos Kalogeropoulos; Erik Pazos


Canadian Journal of Statistics-revue Canadienne De Statistique | 2011

Likelihood-based inference for correlated diffusions

Konstantinos Kalogeropoulos; Petros Dellaportas; Gareth O. Roberts


Biometrika | 2015

Bayesian inference for partially observed stochastic differential equations driven by fractional Brownian motion

Alexandros Beskos; Joseph Dureau; Konstantinos Kalogeropoulos


arXiv: Methodology | 2013

Bayesian Inference for partially observed SDEs Driven by Fractional Brownian Motion

Alexandros Beskos; Joseph Dureau; Konstantinos Kalogeropoulos


LSE Research Online Documents on Economics | 2016

A Bayesian approach to estimate changes in condom use from limited human immunodeficiency virus prevalence data

Joseph Dureau; Konstantinos Kalogeropoulos; Peter Vickerman; Michael Pickles; Marie-Claude Boily


LSE Research Online Documents on Economics | 2013

Advanced MCMC methods for sampling on diffusion pathspace

Alexandros Beskos; Konstantinos Kalogeropoulos; Erik Pazos

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Joseph Dureau

London School of Economics and Political Science

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Petros Dellaportas

Athens University of Economics and Business

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Gareth Roberts

Athens University of Economics and Business

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Erik Pazos

University College London

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