46 research outputs found
A Family of non-Gaussian Martingales with Gaussian Marginals
We construct a family of non-Gaussian martingales the marginals of which are
all Gaussian. We give the predictable quadratic variation of these processes
and show they do not have continuous paths. These processes are Markovian and
inhomogeneous in time, and we give their infinitesimal generators. Within this
family we find a class of piecewise deterministic pure jump processes and
describe the laws of jumps and times between the jumps.Comment: 16 pages, 2 figure
Prediction of missing observations by a control method
Consider a time series with missing observations but a known final point.
Using control theory ideas we estimate/predict these missing observations. We
obtain recurrence equations which minimize sum of squares of a control
sequence. An advantage of this method is in easily computable formulae and
flexibility of its application to different structures of missing data.Comment: revised and resubmitte
On the renewal measure for Gaussian sequences
A form for U(t), the expected number of times a Gaussian sequence falls below a level of t, is given in terms of the mean M(x) and the variance V2(x) functions. It is shown that under general conditions U(t) ~ M(-1)(t), t --> [infinity]. Moreover, if M and V are regularly varying at infinity functions, then U(t) - M(-1)(t) is also regularly varying at infinity. A renewal theorem for stationary Gaussian sequences is given, where it is shown that the asymptotic behavior of U(t) - t/[mu] is determined by the asymptotic behavior of V2(t)/t.Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/26146/1/0000223.pd
Convergence of the age structure of general schemes of population processes
We consider a family of general branching processes with reproduction
parameters depending on the age of the individual as well as the population age
structure and a parameter , which may represent the carrying capacity. These
processes are Markovian in the age structure. In a previous paper the Law of
Large Numbers as was derived. Here we prove the Central Limit
Theorem, namely the weak convergence of the fluctuation processes in an
appropriate Skorokhod space. We also show that the limit is driven by a
stochastic partial differential equation
Limit theorems for multi-type general branching processes with population dependence
A general multi-type population model is considered, where individuals live
and reproduce according to their age and type, but also under the influence of
the size and composition of the entire population. We describe the dynamics of
the population density as a measure-valued process and obtain its asymptotics,
as the population grows with the environmental carrying capacity. "Density" in
this paper generally refers to the population size as compared to the carrying
capacity. Thus, a deterministic approximation is given, in the form of a Law of
Large Numbers, as well as a Central Limit Theorem. Migration can also be
incorporated. This general framework is then adapted to model sexual
reproduction, with a special section on serial monogamic mating systems
Populations with interaction and environmental dependence: From few, (almost) independent, members into deterministic evolution of high densities
Many populations, e.g. not only of cells, bacteria, viruses, or replicating DNA molecules, but also of species invading a habitat, or physical systems of elements generating new elements, start small, from a few lndividuals, and grow large into a noticeable fraction of the environmental carrying capacity K or some corresponding regulating or system scale unit. Typically, the elements of the initiating, sparse set will not be hampering each other and their number will grow from Z0 = z0 in a branching process or Malthusian like, roughly exponential fashion, Zt ~atW, where Z t is the size at discrete time t â â, a > 1 is the offspring mean per individual (at the low starting density of elements, and large K), and W a sum of z0 i.i.d. random variables. It will, thus, become detectable (i.e. of the same order as K) only after around K generations, when its density Xt := Z t /K will tend to be strictly positive. Typically, this entity will be random, even if the very beginning was not at all stochastic, as indicated by lower case z0 , due to variations during the early development. However, from that time onwards, law of large numbers effects will render the process deterministic, though inititiated by the random density at time log K, expressed through the variable W. Thus, W acts both as a random veil concealing the start and a stochastic initial value for later, deterministic population density development. We make such arguments precise, studying general density and also system-size dependent, processes, as K â â. As an intrinsic size parameter, K may also be chosen to be the time unit. The fundamental ideas are to couple the initial system to a branching process and to show that late densities develop very much like iterates of a conditional expectation operator. The ârandom veilâ, hiding the start, was first observed in the very concrete special case of finding the initial copy number in quantitative PCR under Michaelis-Menten enzyme kinetics, where the initial individual replication variance is nil if and only if the efficiency is one, i.e. all molecules replicate
Stochasticity in the adaptive dynamics of evolution: The bare bones
First a population model with one single type of individuals is considered. Individuals reproduce asexually by splitting into two, with a population-size-dependent probability. Population extinction, growth and persistence are studied. Subsequently the results are extended to such a population with two competing morphs and are applied to a simple model, where morphs arise through mutation. The movement in the trait space of a monomorphic population and its possible branching into polymorphism are discussed. This is a first report. It purports to display the basic conceptual structure of a simple exact probabilistic formulation of adaptive dynamics