72 research outputs found
Compound Markov counting processes and their applications to modeling infinitesimally over-dispersed systems
We propose an infinitesimal dispersion index for Markov counting processes. We show that, under standard moment existence conditions, a process is infinitesimally (over-) equi-dispersed if, and only if, it is simple (compound), i.e. it increases in jumps of one (or more) unit(s), even though infinitesimally equi-dispersed processes might be under-, equi- or over-dispersed using previously studied indices. Compound processes arise, for example, when introducing continuous-time white noise to the rates of simple processes resulting in LĂ©vy-driven SDEs. We construct multivariate infinitesimally over dispersed compartment models and queuing networks, suitable for applications where moment constraints inherent to simple processes do not hold.Continuous time, Counting Markov process, Birth-death process, Environmental stochasticity, Infinitesimal over-dispersion, Simultaneous events
Statistical Inference for Partially Observed Markov Processes via the R Package pomp
Partially observed Markov process (POMP) models, also known as hidden Markov
models or state space models, are ubiquitous tools for time series analysis.
The R package pomp provides a very flexible framework for Monte Carlo
statistical investigations using nonlinear, non-Gaussian POMP models. A range
of modern statistical methods for POMP models have been implemented in this
framework including sequential Monte Carlo, iterated filtering, particle Markov
chain Monte Carlo, approximate Bayesian computation, maximum synthetic
likelihood estimation, nonlinear forecasting, and trajectory matching. In this
paper, we demonstrate the application of these methodologies using some simple
toy problems. We also illustrate the specification of more complex POMP models,
using a nonlinear epidemiological model with a discrete population,
seasonality, and extra-demographic stochasticity. We discuss the specification
of user-defined models and the development of additional methods within the
programming environment provided by pomp.Comment: In press at the Journal of Statistical Software. A version of this
paper is provided at the pomp package website: http://kingaa.github.io/pom
Systemic Infinitesimal Over-dispersion on General Stochastic Graphical Models
Stochastic models of interacting populations have crucial roles in scientific
fields such as epidemiology and ecology, yet the standard approach to extending
an ordinary differential equation model to a Markov chain does not have
sufficient flexibility in the mean-variance relationship to match data (e.g.
\cite{bjornstad2001noisy}). A previous theory on time-homogeneous dynamics over
a single arrow by \cite{breto2011compound} showed how gamma white noise could
be used to construct certain over-dispersed Markov chains, leading to widely
used models (e.g. \cite{breto2009time,he2010plug}). In this paper, we define
systemic infinitesimal over-dispersion, developing theory and methodology for
general time-inhomogeneous stochastic graphical models. Our approach, based on
Dirichlet noise, leads to a new class of Markov models over general direct
graphs. It is compatible with modern likelihood-based inference methodologies
(e.g. \cite{ionides2006inference,ionides2015inference,king2008inapparent}) and
therefore we can assess how well the new models fit data. We demonstrate our
methodology on a widely analyzed measles dataset, adding Dirichlet noise to a
classical SEIR (Susceptible-Exposed-Infected-Recovered) model. We find that the
proposed methodology has higher log-likelihood than the gamma white noise
approach, and the resulting parameter estimations provide new insights into the
over-dispersion of this biological system.Comment: 47 page
An iterated block particle filter for inference on coupled dynamic systems with shared and unit-specific parameters
We consider inference for a collection of partially observed, stochastic,
interacting, nonlinear dynamic processes. Each process is identified with a
label called its unit, and our primary motivation arises in biological
metapopulation systems where a unit corresponds to a spatially distinct
sub-population. Metapopulation systems are characterized by strong dependence
through time within a single unit and relatively weak interactions between
units, and these properties make block particle filters an effective tool for
simulation-based likelihood evaluation. Iterated filtering algorithms can
facilitate likelihood maximization for simulation-based filters. We introduce
an iterated block particle filter applicable when parameters are unit-specific
or shared between units. We demonstrate this algorithm by performing inference
on a coupled epidemiological model describing spatiotemporal measles case
report data for twenty towns
Long-run determinants of atmospheric CO2: Granger-causality and cointegration analysis
Atmospheric concentrations of CO2 grew annually 1.12 +- 0.48 parts per million (ppm) in 1958-1984, and 1.72 +- 0.54 ppm (mean +- standard deviation) in 1985-2009, so that the rate growth is growing itself. Natural phenomena that influence short-run changes in CO2 atmospheric levels (through their influence on CO2 emissions and sinks) are stationary processes that cannot explain the growth of CO2 levels at an increasing rate. Cointegration tests show at a high level of statistical significance that the
annual increase of CO2 concentrations is roughly proportional to “human activities” as measured by the money value of the world economy and the size of the world population. We find that population and
world GDP help to predict CO2 concentrations, but CO2 concentrations do not help to predict the othervariables; that is, there is Ganger causality from population and world economic output to CO2. Though the smallness of the time series involved and the theoretical and practical issues posed by cointegration allow only for a limited confidence in these results, they have obvious major implications. For business-as-usual conditions and a world economy growing annually 3.5%—the mean annual growth of the world economy since 1960—the required world population to maintain or reduce CO2 levels would be 1.3 billion or less. For a world population of 7 billion as the present one, CO2 atmospheric levels would decrease if the global economy contracted annually 24.5% or more.http://deepblue.lib.umich.edu/bitstream/2027.42/88162/1/Long-run determinants of CO2 - A3- Dec 2011+refs.pd
Macroeconomic effects on mortality revealed by panel analysis with nonlinear trends
Many investigations have used panel methods to study the relationships
between fluctuations in economic activity and mortality. A broad consensus has
emerged on the overall procyclical nature of mortality: perhaps
counter-intuitively, mortality typically rises above its trend during
expansions. This consensus has been tarnished by inconsistent reports on the
specific age groups and mortality causes involved. We show that these
inconsistencies result, in part, from the trend specifications used in previous
panel models. Standard econometric panel analysis involves fitting regression
models using ordinary least squares, employing standard errors which are robust
to temporal autocorrelation. The model specifications include a fixed effect,
and possibly a linear trend, for each time series in the panel. We propose
alternative methodology based on nonlinear detrending. Applying our methodology
on data for the 50 US states from 1980 to 2006, we obtain more precise and
consistent results than previous studies. We find procyclical mortality in all
age groups. We find clear procyclical mortality due to respiratory disease and
traffic injuries. Predominantly procyclical cardiovascular disease mortality
and countercyclical suicide are subject to substantial state-to-state
variation. Neither cancer nor homicide have significant macroeconomic
association.Comment: Published in at http://dx.doi.org/10.1214/12-AOAS624 the Annals of
Applied Statistics (http://www.imstat.org/aoas/) by the Institute of
Mathematical Statistics (http://www.imstat.org
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