* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project
Download Quant_Chapter_06_hyp
Survey
Document related concepts
Transcript
In This Chapter We Will Cover
Deductions we can make about even though it is not observed. These include
Confidence Intervals
Hypotheses of the form H0: i = c
Hypotheses of the form H0: i c
Hypotheses of the form H0: a′ = c
Hypotheses of the form A = c
We also cover deductions when V(e) 2I (Generalized Least Squares)
Mathematical
Marketing
Slide 6.1
Linear Hypotheses
The Variance of the Estimator
From these two raw ingredients and a theorem:
βˆ ( XX) 1 Xy.
V(y) = V(X + e) = V(e) = 2I
we conclude
V(βˆ ) [( XX) 1 X] 2I [( XX) 1 X]
2 ( XX) 1 XIX( XX) 1
2 ( XX) 1
Mathematical
Marketing
Slide 6.2
Linear Hypotheses
What of the Distribution of the Estimator?
As n
1
bn n a1 normal
Central Limit Property of Linear Combinations
Mathematical
Marketing
Slide 6.3
Linear Hypotheses
So What Can We Conclude About the Estimator?
From the V(linear combo) +
assumptions about e
From the Central Limit Theorem
βˆ ( XX) 1 Xy ~ N[β, 2 ( XX) 1 ]
From Ch 5- E(linear combo)
Mathematical
Marketing
Slide 6.4
Linear Hypotheses
Steps Towards Inference About
In general
q E (q )
V̂ (q )
~ t df
In particular
(X′X)-1X′y
ˆ i i
~ t n k
ˆ
V̂ ( )
But note the
hat on the V!
i
Mathematical
Marketing
Slide 6.5
Linear Hypotheses
Lets Think About the Denominator
V(ˆ i ) 2 d ii
where dii are diagonal elements of
D = (XX)-1 = {dij}
n
e i2
SS
ˆ 2 s 2 Error i
nk nk
so that
V̂(ˆ i ) s 2 d ii
Mathematical
Marketing
Slide 6.6
Linear Hypotheses
Putting It All Together
ˆ i i
ŝ 2 d ii
~ t n k
Now that we have a t, we can use it for two types of inference about :
Confidence Intervals
Hypothesis Testing
Mathematical
Marketing
Slide 6.7
Linear Hypotheses
A Confidence Interval for i
A 1 - confidence interval for i is given by
ˆ i t / 2,n k s 2 d ii
which simply means that
Pr ˆ i t / 2,n k s 2 d ii i ˆ i t / 2, n k s 2 d ii 1
Mathematical
Marketing
Slide 6.8
Linear Hypotheses
Graphic of Confidence Interval
1-
1.0
Pr(ˆ i )
0
ˆ i t / 2,n k s 2 d ii
Mathematical
Marketing
i
ˆ i t / 2,n k s 2 d ii
Slide 6.9
Linear Hypotheses
Statistical Hypothesis Testing: Step One
Generate two mutually exclusive hypotheses:
H0: i = c
HA: i ≠ c
Mathematical
Marketing
Slide 6.10
Linear Hypotheses
Statistical Hypothesis Testing Step Two
Summarize the evidence with respect to H0:
ˆ
ˆ
ˆt i i i c
s 2 d ii
V̂(ˆ i )
Mathematical
Marketing
Slide 6.11
Linear Hypotheses
Statistical Hypothesis Testing Step Three
reject H0 if the probability of the evidence given H0 is small
| tˆ| t /2,n-k ,
Mathematical
Marketing
Slide 6.12
Linear Hypotheses
One Tailed Hypotheses
Our theories should give us a sign for Step One in which case we might have
H0: i c
HA: i < c
In that case we reject H0 if
tˆ t , n-k
Mathematical
Marketing
Slide 6.13
Linear Hypotheses
A More General Formulation
Consider a hypothesis of the form
H0: a´ = c
so if c = 0…
a 0 1 1 0 0
a 0 1 1 0 0
1 1
a 0
1 0
2
2
Mathematical
Marketing
tests H0: 1= 2
tests H0: 1 + 2 = 0
tests H0:
1 2
3
2
Slide 6.14
Linear Hypotheses
A t test for This More Complex Hypothesis
We need to derive the denominator of the t using the variance of a linear combination
V(aβˆ ) aV(βˆ ) a
2a( XX) 1 a
which leads to
tˆ
Mathematical
Marketing
aβˆ c
.
s 2a( XX) 1 a
Slide 6.15
Linear Hypotheses
Multiple Degree of Freedom Hypotheses
H 0 : Aβ q c1
a1.
c1
a
c
2.
2
H0 :
β
aq .
cq
Mathematical
Marketing
Slide 6.16
Linear Hypotheses
Examples of Multiple df Hypotheses
Mathematical
Marketing
0 0 1 0
H0 :
0 0 0 1
0
0
1
2 0
3
tests H0: 2 = 3 = 0
0 1 1 0
H0 :
0 1 0 1
0
0
1
2 0
3
tests H0: 1 = 2 = 3
Slide 6.17
Linear Hypotheses
Testing Multiple df Hypotheses
1
SSH ( Aβˆ c)A( XX) 1 A ( Aβˆ c)
SSH / q
~ Fq ,n k
SSError / n k
SSError yy yX( XX) 1 Xy
Mathematical
Marketing
Slide 6.18
Linear Hypotheses
Another Way to Think About SSH
Assume we have an A matrix as below:
0 0 1 0
H0 :
0 0 0 1
0
0
1
2 0
3
We could calculate the SSH by running two versions of the model: the full model
and a model restricted to just 1
SSH = SSError (Restricted Model) – SSError (Full Model)
so F is
F̂
Mathematical
Marketing
SSError (Restricted ) SSError (Full ) / 2
SSError (Full ) / n k
Slide 6.19
Linear Hypotheses
A Hypothesis That All ’s Are Zero
If our hypothesis is
H 0 : 1 2 k* 0
Then the F would be
F̂
SSError (Restricted to 0 ) SSError (Full) / k*
SSError (Full) / n k
Which suggests a summary for the model
R2
Mathematical
Marketing
SSError (Re stricted to 0 ) SSError (Full )
SSError (Re stricted to 0 )
Slide 6.20
Linear Hypotheses
Generalized Least Squares
When we cannot make the Gauss-Markov Assumption that V(e) = 2I
Suppose that V(e) = 2V. Our objective function becomes
f = eV-1e
βˆ [ XV 1 X]1 XV 1y
Mathematical
Marketing
Slide 6.21
Linear Hypotheses
SSError for GLS
s2
SSError
nk
with
SSError (y Xβˆ )V1 (y Xβˆ )
Mathematical
Marketing
Slide 6.22
Linear Hypotheses
GLS Hypothesis Testing
H0: i = 0
H0: a = c
H0: A - c = 0
Mathematical
Marketing
t̂
tˆ
ˆ i c
s 2d
ii
where dii is the ith diagonal element of (XV-1X)-1
aβˆ c
s 2a( XV 1 X) 1 a
SSH / q
~ Fq ,n k
SSError / n k
SS H ( Aβˆ c)[ A( XV 1 X) 1 A]1 ( Aβˆ c)
SS Error (y Xβˆ )(y Xβˆ )
Slide 6.23
Linear Hypotheses
Accounting for the Sum of Squares of the Dependent Variable
e′e = y′y - y′X(X′X)-1X′y
SSError = SSTotal - SSPredictable
y′y = y′X(X′X)-1X′y + e′e
SSTotal = SSPredictable + SSError
Mathematical
Marketing
Slide 6.24
Linear Hypotheses
SSPredicted and SSTotal Are a Quadratic Forms
SSPredicted is
And SSTotal
yX(XX) 1 Xy yPy
yy = yIy
Here we have defined P = X(X′X)-1X′
Mathematical
Marketing
Slide 6.25
Linear Hypotheses
The SSError is a Quadratic Form
Having defined P = X(XX)-1 X, now define M = I – P, i. e. I - X(XX)-1X.
The formula for SSError then becomes
ee y y y X( XX) 1 Xy
y Iy y Py
y [I P] y
y My.
Mathematical
Marketing
Slide 6.26
Linear Hypotheses
Putting These Three Quadratic Forms Together
SSTotal = SSPredictable + SSError
yIy = yPy + yMy
here we note that
I=P+M
Mathematical
Marketing
Slide 6.27
Linear Hypotheses
M and P Are Linear Transforms of y
ŷ = Py and
e = My
so looking at the linear model:
y yˆ e
Iy = Py + My
and again we see that
I=P+M
Mathematical
Marketing
Slide 6.28
Linear Hypotheses
The Amazing M and P Matrices
ŷ = Py and yˆ yˆ = SSPredicted = y′Py
What does this imply about M and P?
e = My and = SSError = y′My
Mathematical
Marketing
Slide 6.29
Linear Hypotheses
The Amazing M and P Matrices
Mathematical
Marketing
ŷ = Py and yˆ yˆ = SSPredicted = y′Py
PP = P
e = My and = SSError = y′My
MM = M
Slide 6.30
Linear Hypotheses
In Addition to Being Idempotent…
1
1n n M n 1 0n
1
1n n Pn 1 0n
PM n 0 n.
Mathematical
Marketing
Slide 6.31
Linear Hypotheses