iid.
MVUB and MLE estimator. Now suppose that we have prior knowledge that
. We might incorporate this by forming a new estimator
This is called a
truncated sample mean
estimator of
. Is
a better estimator of
than the sample mean
?
Let
denote the density of
. Since
,
. The density of
is given by
Now consider the MSE of the sample mean
.
Note
is biased (
).
Although
is MVUB,
is better in the MSE sense.
Prior information is aptly described by regarding
as a random variable with a
prior distribution
, which implies that we know
, but otherwise
is
abitrary.
The bayesian approach to statistical modeling
Prior distribution allows us to incorporate prior information
regarding unknown paremter--probable values of parameter aresupported by prior. Basically, the prior reflects what we
believe "Nature" will probably throw at us.
Elements of bayesian analysis
(a)
joint distribution
(b)
marginal distributions
where
is a
prior .
(c)
posterior distribution
which is the Binomial likelihood.
which is the Beta prior distriubtion and
Joint density
Marginal density
Posterior density
where
is the Beta density with parameters
and
Selecting an informative prior
Clearly, the most important objective is to choose
the prior
that best reflects the prior knowledge available to
us. In general, however, our prior knowledge is imprecise andany number of prior densities may aptly capture this
information. Moreover, usually the optimal estimator can't beobtained in closed-form.
Therefore, sometimes it is desirable to choose a
prior density that models prior knowledge
and is nicely matched in functional form to
so that the optimal esitmator (and posterior density)
can be expressed in a simple fashion.
Choosing a prior
1. informative priors
design/choose priors that are compatible with prior
knowledge of unknown parameters
2. non-informative priors
attempt to remove subjectiveness from Bayesian
procedures
designs are often based on invariance arguments
Suppose we want to estimate the variance
of a process, incorporating a prior that is amplitude-scaleinvariant (so that we are invariant to arbitrary amplitude
rescaling of data).
satisifies this condition.
where
is non-informative since it is invariant to
amplitude-scale.
Conjugate priors
Idea
Given
, choose
so that
has a simple functional form.
Conjugate priors
Choose
, where
is a family of densities (
e.g. ,
Gaussian family) so that the posterior density also belongsto that family.
conjugate prior
is a
conjugate prior for
if
iid. Rather than modeling
(which did not yield a closed-form estimator) consider
With
and
this Gaussian prior also reflects prior knowledge that it is
unlikely for
.
The Gaussian prior is also conjugate to the
Gaussian likelihood
so that the resulting posterior density is also a simple
Gaussian, as shown next.
First note that
where
.
where
.
Now let
Then by "completing the square" we have
Hence,
where
is the "unnormalized" Gaussian density and
is a constant, independent of
. This implies that
where
.
Now
Where
Interpretation
When there is little data
is small
and
.
When there is a lot of data
,
and
.
Interplay between data and prior knowledge
Small
favors prior.
Large
favors data.
The multivariate gaussian model
The multivariate Gaussian model is the most
important Bayesian tool in signal processing. It leads directly tothe celebrated Wiener and Kalman filters.
Assume that we are dealing with random vectors
and
. We will regard
as a signal vector that is to be
estimated from an observation vector
.
plays the same role as
did in earlier
discussions. We will assume that
is p1 and
is N1. Furthermore,
assume that
and
are
jointly Gaussian distributed
,
,
,
,
,
.
,
which is independent of
.
,
,
.
From our Bayesian perpsective, we are interested in
.
In this formula we are faced with
The inverse of this covariance matrix can be written as
where
. (Verify this formula by applying the right hand
side above to
to
get
.)
Questions & Answers
A golfer on a fairway is 70 m away from the green, which sits below the level of the fairway by 20 m. If the golfer hits the ball at an angle of 40° with an initial speed of 20 m/s, how close to the green does she come?
A mouse of mass 200 g falls 100 m down a vertical mine shaft and lands at the bottom with a speed of 8.0 m/s. During its fall, how much work is done on the mouse by air resistance
Chemistry is a branch of science that deals with the study of matter,it composition,it structure and the changes it undergoes
Adjei
please, I'm a physics student and I need help in physics
Adjanou
chemistry could also be understood like the sexual attraction/repulsion of the male and female elements. the reaction varies depending on the energy differences of each given gender. + masculine -female.
Pedro
A ball is thrown straight up.it passes a 2.0m high window 7.50 m off the ground on it path up and takes 1.30 s to go past the window.what was the ball initial velocity
2. A sled plus passenger with total mass 50 kg is pulled 20 m across the snow (0.20) at constant velocity by a force directed 25° above the horizontal. Calculate (a) the work of the applied force, (b) the work of friction, and (c) the total work.
you have been hired as an espert witness in a court case involving an automobile accident. the accident involved car A of mass 1500kg which crashed into stationary car B of mass 1100kg. the driver of car A applied his brakes 15 m before he skidded and crashed into car B. after the collision, car A s
can someone explain to me, an ignorant high school student, why the trend of the graph doesn't follow the fact that the higher frequency a sound wave is, the more power it is, hence, making me think the phons output would follow this general trend?
Nevermind i just realied that the graph is the phons output for a person with normal hearing and not just the phons output of the sound waves power, I should read the entire thing next time
Joseph
Follow up question, does anyone know where I can find a graph that accuretly depicts the actual relative "power" output of sound over its frequency instead of just humans hearing
Joseph
"Generation of electrical energy from sound energy | IEEE Conference Publication | IEEE Xplore" ***ieeexplore.ieee.org/document/7150687?reload=true
A string is 3.00 m long with a mass of 5.00 g. The string is held taut with a tension of 500.00 N applied to the string. A pulse is sent down the string. How long does it take the pulse to travel the 3.00 m of the string?