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stokastiska

Stokastiska is a term used in Swedish to describe phenomena, models or processes that involve randomness and probability. In statistics and probability theory, a stokastisk modell or stokastisk process describes systems whose evolution is not completely determined by initial conditions but is influenced by random variation. A stokastisk process is a family of random variables indexed by time or another parameter, describing the state of a system at each moment. Unlike deterministic models, stokastiska modeller yield different outcomes under the same starting conditions, and their results are described using probability distributions, expectations and variances.

Key concepts in stokastiska modeller include sources of randomness, dependence and independence between variables, and the

Applications of stokastiska modeller are wide-ranging. In finance, stokastiska models underpin option pricing and risk management.

idea
of
information
flow
over
time,
such
as
filtrations
and
adapted
processes
in
continuous
time.
Important
classes
of
stokastiska
processer
include
Markov
chains
(memoryless
processes),
Brownian
motion
(Wiener
process),
and
Poisson
processes
(random
events
in
time).
Stokastisk
calculus,
particularly
Itô
calculus,
provides
mathematical
tools
to
integrate
with
respect
to
stokastiska
processer
and
to
formulate
stochastic
differential
equations
that
model
systems
under
random
influence.
In
physics
and
engineering,
they
describe
diffusion
and
noise-driven
dynamics.
In
operations
research,
queueing
theory
uses
stochastic
models
to
analyze
service
systems.
In
ecology
and
epidemiology,
randomness
is
essential
for
modelling
population
dynamics
and
the
spread
of
diseases.
Practically,
stokastiska
modelling
is
often
complemented
by
numerical
methods
such
as
Monte
Carlo
simulation
to
estimate
distributions
and
expectations
when
analytical
solutions
are
not
available.