Basic model least to estimate P
regressies squares
'
b)
'
( g- ✗ b) (
'
zei ✗
13 Pz 13h
min
✗ i. 2 c- e. e
= = -
+
yi
= + + +
X k Ei =
1 n
-
,
.
, .
. . .
.
,
.
is
'
b
' ' '
'
✗ b- ✗
b b. ✗ ✗
'
+
g. y y
= -
row
of ✗ Xi column of ✗ Xj
'
: :
,
/ '
yty ✗b ✗ ✗b
'
b.
=
z +
-
✗ b
fitted values : =
.
'
✗ ✗ Jb
' ' '
s zei =
0 -
2 ✗
y + [ ✗ ✗ +
=
✗b →
e
y
.
- =
y
-
'
✗b
'
✗
y ✗
=
-
+ =
o
estimated model =
✗ b. te
y
'
:
{
'
{
( ✗ b- g)
' '
✗ ✗ ✗ b ✗
y
=
'
'
# ✗5
'
× D= ✗
Differentiatie
e
y
sáx
dG AÏ
→ = =
Projecten matrix
j ' ' '
(✗ )
-
we have ✗ b and D= × ✗
y
=
,
→ SAI =
a
'
'
✗ (✗ × )
H
' -
then ✗ His
2X =
y
=
.
project ion
[A
'
] columns of X
Jxjxtx
→ = -1A × matrix on .
Then
y
=
Û te =
H + (l -
1-1)
y
=
H +
M
ijijijijijij
ij ij S. Veeling