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The homogeneous Poisson process (HPP) is the most useful and popular counting process.
HPP is used for example to model the arrivals/departures in queuing theory, arrivals of
jumps in various jump-di usion models, number of customers at service stations and
number of claims to an insurance company in a particular time period etc. However, the
number of arrivals in many real-life phenomena may not be governed by HPP. In many
real life scenario, there could be burst arrivals, the intensity may be time dependent, the
inter-arrival times may be heavy tailed, the arrival rate may be stochastic in nature or
the counting needs to be done over a space rather than over a time interval. To overcome
these limitations the Poisson process is generalized in several directions for example nonhomogeneous
poison process, time-fractional Poisson process (TFPP), space-fractional
Poisson process (SFPP), Poisson process of order k, doubly stochastic Poisson process
(or Cox process) and Poisson random elds etc. In this thesis work, we extend these
models in several directions. We introduce the tempered space fractional Poisson process
(TSFPP) by taking the tempered fractional shift operator in place of ordinary fractional
shift operator in governing di erential-di erence equation of SFPP. Moreover, we also
provide the subordination representation of this process. Further, using the same idea
a large class of fractional Poisson processes is introduced, namely, tempered time-space
fractional Poisson processes (TTSFPP) which may give more
exibility in modeling of
counting types real world data. Many insurance models generally use Poisson process to
model the arrival of claims which has a limitation of not having more than one claim in
small time intervals. However, in many extreme scenarios like natural disaster, terrorists
attack etc, the claim arrivals may be in groups and which may contain arbitrary number of
claims in small time intervals. To overcome this di culty a variant of the standard Poisson
process known as Poisson process of order k (PPoK) is introduced in literature, where the
number of arrivals in a small time interval is a discrete uniform random variable taking
values in [0; k]. This process can model the claims arrival in groups of size k. We extend
PPoK to time-changed PPoK in one dimensional space, which has stochastic intensity.
We further extend PPoK in higher dimensional space called Poisson elds of order k which
can be used to model random points in space representing distributions of mobile phones
or TV units in a geographic location.
In tick-by-tick high frequency trading data to model the number of positive and negative
jumps (also called up-ticks and down-ticks) the Skellam process is used in literature
which is the di erence of two independent Poisson processes. However, Skellam process has limitation, as it allows only -1, 0 and 1 jump sizes in small time period. To allow
arbitrary jump size, we introduce Skellam process of order k (SPoK) where number of
jumps can vary between k and k in small time intervals. The arrival time between the
positive and negative jumps are exponentially distributed in SP and SPoK.
We also introduce fractional Poisson elds of order k in n-dimensional Euclidean space
Rn
+. We also work on time-fractional Poisson process of order k, space-fractional Poisson
process of order k and tempered version of time-space fractional Poisson process of order
k. These processes are de ned in terms of fractional compound Poisson processes. Timefractional
Poisson process of order k naturally generalizes the Poisson process and Poisson
process of order k to a heavy tailed waiting times counting process. The space-fractional
Poisson process of order k, allows on average in nite number of arrivals in any interval.
We derive the marginal probabilities, governing di erence-di erential equations of the
introduced processes. We also provide Watanabe martingale characterization for some
time-changed Poisson processes.
Moreover, the stable subordinator, inverse stable subordinator, tempered stable subordinator,
inverse tempered stable subordinator, compositions of tempered stable subordinators
and compositions of inverse tempered stable subordinators are central elements
in time-changed Poisson processes or generalized Poisson processes. Hence, we discuss the
distributional properties of these subordinators and inverse subordinators. The in nite
series form of the probability densities of tempered stable and inverse tempered stable
subordinators are obtained using Mellin transform. Further, the densities of the products
and quotients of stable and inverse stable subordinators are worked out. The asymptotic
behaviours of these densities are obtained as x ! 0+. Similar results for tempered
and inverse tempered stable subordinators are discussed. Our results provide alternative
methods to nd the densities of these subordinators and complement the results available
in literature. We further introduce mixtures of tempered stable subordinators. These
mixtures de ne a class of subordinators which generalize tempered stable subordinators
(TSS). The main properties like the probability density function (pdf), L evy density, moments,
governing Fokker-Planck-Kolmogorov (FPK) type equations and the asymptotic
form of potential density are derived. Further, the governing FPK type equation and
the asymptotic form of the renewal function for the corresponding inverse subordinator
are discussed. We generalize these results to n-th order mixtures of TSS. The governing
fractional di erence and di erential equations of the time-changed Poisson process and
Brownian motion are also discussed. |
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