Source of this block unknown and lost from the net:
definition 1: There exist some such that
has all positive entries
definition 2: A regular finite chain is one which is irreducible and aperiodic
Notice that this means regular chain has NO transient states.
A M.C. which contains one and only one closed set of states. Note that for finite MC, this means all the states are recurrent. In otherwords, its state space contains no proper subset that is closed.
This is the state vector which contains the probability of each state that the MC could be in
the long term. For an irreducible MC, this is independent of the starting
, however,
for a reducible MC, the Stationary distribution will be different for different initial
A recurrent state where the expected number of steps to return back to the state is finite.
A recurrent state where the expected number of steps to return back to the state is infinite.
GCD of the integers such that
. In otherwords, find all the steps MC will
take to return back to the same state, then find the GCD of these values. If the
GCD is
, then the period is
and the state is called Aperiodic (does not have a
period).
A state which is Aperiodic and positive recurrent. i.e. a recurrent state (with finite number of steps to return) but it has no period.
The number of steps needed to reach state (first time) starting from transient state
This is the probability that it will take steps to first reach state
starting from transient
state
. i..e
This is the probability of reaching state (for first time) when starting from transient state
. Hence
A set of states, where if MC enters one of them, it can’t reach a state outside this set. i.e.
whenever
and
, then set
is called closed set.
All none-transient states are absorbing states. Hence the matrix looks like
i.e.
Properties of a matrix are: There is at least one row which sums to less than 1. And there is
a way to reach such row(s) from other others. and
as
This is the probability it will take steps to first reach state
from state
. In Below
means the closed set which contains the state
and
means the transient
set
|
use formula (1) below | ||
|
|
||
| Calculate |
||
|
|
||
We can use . Notice the subtle difference between
and
.
gives the probability of needing
steps to first reach
from
, while
gives
the probability of being in state
after
steps leaving
. So with
could
have reached state
before
steps, but left state
and moved around, then
came back, as long as after
steps exactly MC will be in state
. With
this
is not allowed. The chain must reach state
the very first time in
steps from
leaving
. So in a sense,
is a more strict probability. Using the recursive
formula
| (1) |
We can calculate . We see that
and so
and
also
and
etc...
Hence knowing just the matrix, we can always obtain values of the
for any
powers
However, using the following formula, from lecture notes 6.2 is easier
the entry of
gives the probability of taking
steps to first reaching
when
starting from transient state
So use this formula. Just note this formula works only when
is transient.
: If is NOT transient, and we asked to find what is the prob. it will take
steps to first
reach state
from state
. Then use (1). right?
This is the probability that chain will eventually reach state given it starts in state
|
|
||||
|
|
||||
|
|
||||
|
|
||||
|
We know eventually |
||||
Here, and
Then
The above gives the average number of visits to state (also transient) before chain is
absorbed for first time.
question: Note that if chain is regular, then all states communicates with each others and then
and so
can be found from the stationary distribution
,
right?
|
|
|
does not make sense to ask this here? |
Number of visits to transient state is a geometric distribution.
The expected number of visits to transient state is
where is the probability of visiting state
if chain starts in state
The above says that for a regular finite MC, where a stationary probability exist (and is
unique), then it is inverse of the mean number of steps between visits to state
in steady
state.
The above says that for a regular M.C. there exist a stationary probability distribution
is number of events that occur over some period of time.
is a Poisson random variable if
Where is the average number of events that occur over the same period that we are asking
for the probability of this number of events to occur. Hence remember to adjust
accordingly
if we are given
as rate (i.e. per unit time).
is a Poisson random variable if
Where is the average number of events that occur in one unit time. So
is
random variable which is the number of events that occur during interval of length
This can be seen by setting in the definition and using series expansion for
and
then letting
Expected value of Poisson random variable: . For a process,
where
is the rate.
is random variable which is the time between events where the number of events occur as
Poisson distribution,
pdf:
Probability that the waiting time for events to occur
is a GAMMA distribution.
is the parameter (rate) for the exponential distributed random variable which represents the
time in that state. Hence The probability that system remains in state
for time larger than
is given by
Jump probability
for
. This is the probability of going from state
to
state
(once the process leaves state
)
FOrward Komogolv equation
, let
, hence
hence
therefore
Balance equations
This is ’flow out’ = ’flow in’.
This equation can also be obtaind more easily I think from Where
is the matrix
made up from the
and the
on the diagonal. Just write then down, and at the end add
to find