100% satisfaction guarantee Immediately available after payment Both online and in PDF No strings attached 4.2 TrustPilot
logo-home
Class notes

Term 2 Lecture notes EC226 Econometrics Mastering 'Metrics - Score a first too

Rating
-
Sold
-
Pages
12
Uploaded on
02-03-2024
Written in
2023/2024

Pass your exams with a first!!! Providing an in-depth and comprehensive review of the EC226: Econometrics course from Warwick Economics. The revision notes were written by a student who scored a solid first in the module and final exams. Revision notes include content from all the weeks from term 2. For the full year, buy the combo or term one packs.

Show more Read less
Institution
Course









Whoops! We can’t load your doc right now. Try again or contact support.

Connected book

Written for

Institution
Study
Unknown
Course

Document information

Uploaded on
March 2, 2024
Number of pages
12
Written in
2023/2024
Type
Class notes
Professor(s)
Jeremy smith
Contains
All classes

Subjects

Content preview

Wat Serial Correlation
Distribution
of Coefficient in
Dynamic Time Series Models .
(vs) I :




Estimation of time sevel serial condation
of form of linear dependence
:
Presence over
Ols model of Yo
some




Recap T, - time
for some series
, zz

The autocorrelation Pictoral representation of which
this lineor
dependency, is
:


Function (ACF)
of C againstj) form of
I plots values
measured in the a correlation between Ez and Exx




Moving
to
T S .




for different 12 .




correlation
model
1) O
zen I Vk
--

cor(zz
(2
Co
that is : cor r za
=
Et , -
n
-


li I

-



O
-
-


+, -




v(zz)V(te -

k
I v(zi) -
y




It Bo B YE1 from lag of f=1 191 ju
-
+ +
Ef aise dependent variable where and l
=
, issues ·
, .




,




(i)
E(Et/yt 1) = 0 =
t(dely y ,
,
. .




+
ye 1 ,
ye
...

y 0
ez ,
2
+ n =
-o as h get
bigger ; fo =
)(z +, 7) :









&
!
strict
enogeneity is
r possible
Consider A&F in P
if
types Models :




4
(V(((y 1) +
=
0 t 1) White Noise
Ptypes of Model

MA ARMA
Autoregresive (AR) AR ;
Wil Cor (Ez , Es (y) = 0 Ets
:
;

roite
/0 04 (MA)
White
proce
(iv) Et 14 + 3)
Honing Average
-
N

large
,




d
enogeneity
las we
4) Autoregrenie Moving average
(ARMA) .




Samlim
* ~
- As
enogeneity
·
strict isn't possible -o
we replace (i) / :
Autocorrelation Function & White Noise Process (vi)
Ii) assumption of temporaneom enogeneity : [(dily , Yo , Ys .
. . .




.y .)
) =0 White Noise Process :



in words -
expectation of er ror

term is unconditional/unrelated on all value
of Y that happened up model :
Ex
=

Ex
-
(E) = 0 ↳
(4 k ,
= 0 to
until the previous va l u e ·




VIEl :
83 EWN(0 04 ,




station see



Straitlas umption o wedevel
vie


if ze E
-
E(zy E(4y) 0 constant
·


= = =
Mear
all

-
came for
↳adchen E(zz) Elke
-
z+ M+ 4 M+
= =




Mean


② v(y)) 5y V(z) = constant
->
+ t nuance
·
= -




③ (yt ytn) Un ((z 2)
>
-
ou
,
=
,
= 0 to
4 *
whet rol voe
previous
.

some




>
-
graph indicates :
if the Mocen in
"shocked" today ,
100 % of the


(W NI shoch remains
today but in a l l
future perod
WEAA
-




-ACF
. ,




DEPENDENCY .
There is to the shoch whatsoever -




no
memory

condition :
Corlyt Yen) Un - 0 =
as h get bigges

,







Lov
we
between
t a ke Gobs
observations
.
must
get smaller
,
the further it on

Each , dissipated
immediately is
- rent food .




creater similar condition to
sampling
a random
.

(1) Find Mat : 1 , N (p V (b , 1)
older 1 Model in which
cr of proces was
determined
by for.
val u e of
-of
,

: He
-



.
process



E AR (1) Model (vi) i
I'll
Hypother's Austing should also not i nv i l l e fitats ,
but the Xtat .




an add assumpt ou
·




the
-(i
ou
v(Ge & Could i e


*
ill
small a re


fol
a


PEz1
ols is bione
coefficien long is
large Et
conditions
of as the +
·
a re as
sanes him .




>
-
for I t to be stationor .




where it in a WN
process an d 10/11 (and have process in
stationary) -




Notes.
p
=

0 - Le derivation in Lecture


Note :
useful for proofs in to know it is a
purely random pocen & mated to all
including
past value of Ez

, continued
.




III
- -




Diagrammatically
-




·

p ,
10 ,
Gro

Diag i to



# Torammatical
goin decay zuo
9 0 20
·


. ·
, ,



f ·

if the proces is shocked today ,
100 % of the short is remembered

today
,
at period I
, of is remembered
,
ther
for every find pl ·
4. + & = complex roots
.

3
for
= 1 2 s
j , , ....,




O
Lautoregrenine
parameter
& o

back
low sucoil you agent shocked
①reces been GENERALIZATION AR(3) :


path Given joule
2 :



E to es.

of the path
.




out


= 47 ,
+
Pret +
-3 +
Et



& o
process

autoregressive parameter/coefficient .

ARP - E =

4, e + -2 +... +
Ptp + -C.N
27




Defining the
lag operator 1 ,
s .
A (z =
E -,
and 1'z ,
=
zej we
in this c a re -y
talked written as :




can write th Model as : VIze =
Vo =
Divi+ UntPatz . . .

&POP Note-Make sure

what each
to understand

of the

letters
V .
=
4 , 80
+
Prk +
&K +... +
PUP-1
Mear




=
=

P(Ez +
Ex
=
12 (l PH) -
= 4
+
=
ze =
I- PLT'Et 82 0, 8 =

.
+
aro +
934 +... +
%000-m


(PL)" &L P2
+
PL+ in which
. . .




Now : =
1 + + case :
...,




024 03 )Et E 94 + En P E 928j2 + Pojp ja Pt
°
+ + =
+ + +
Vi
=
&Vie + . .

>
+ ...
- - .




-




this in a MAIO)

be solved back substitution or in the first part Yule-walker MOVING MALI) MA(L) MALG)
by MODELS
can like AVERAGE ,
:

, ,

EQ
. weighted a r.
of new. random shocks
.
(4) =
0


MA(1) "E+=
G 08 Et
-
this
&
+
,
in case :
v(Et) =




cor(42 4) 0
jf0
=




Auto Regressive (AR2) ; AR(3) ; AR(p) Models Ot(4+ ) + E(at)
,


2 -


(E(7t
=
E(04 + ,
+ Ex) =

,
=
0/


(V(zd) =
Vo
=
(1 + 8462
Ex in
stationary
-
18 ,
+
02/
ARLI -
zz =
P ,
z
+ + $277- +
Et (((zt =zi) ,
=
y
=
062


WiN is to be (4) (zz 2) 0
and the assumed
stationary Lov d
in zt
=
where
Et
=
a
proces process ,




%
E(e) E(zz j) V(ze V(zz j) deine
AY
ht to
yield = /184 44 Lives O
=
equations : So =

f
=
;
=
so and = :
e =
,
-




E
E(z) (1 4, q)t(t)
=
- =
0
joll
V (z) d =
.
=


difl Pek + s Wote : the MA(1) can be written as an
infinite AR frocess to knows as
atibility
i



Ywell
Cor ( +) ,
=
0 .
=

06 +
Put
.




Co(z + K Pik ,
z = =

Pik MA(2) >
-
En
= 0 4 , .,
+
02 & 2
+ Ex
,




((zz ,
7 z- 3)
=

Us
=


Pik +
P28 simlor
yules-walked equation -




Diagrammatically :



Scen
By for
3

Puls the shoch
on

P6 (1) 2
-
extension MA(z) remembers
periods
- =

i
-




.
.
. >
- MA : When shocked remembers
the shock for I period
. MA(4) remembers shorth for q peroch length of M .
Al -




/ +0
3-Wf =
Ivonance .
-C- Piet Pulju joz
.

Get to know the seller

Seller avatar
Reputation scores are based on the amount of documents a seller has sold for a fee and the reviews they have received for those documents. There are three levels: Bronze, Silver and Gold. The better the reputation, the more your can rely on the quality of the sellers work.
joebloggs123 The University of Warwick
Follow You need to be logged in order to follow users or courses
Sold
7
Member since
3 year
Number of followers
4
Documents
11
Last sold
1 year ago

4.3

4 reviews

5
1
4
3
3
0
2
0
1
0

Recently viewed by you

Why students choose Stuvia

Created by fellow students, verified by reviews

Quality you can trust: written by students who passed their tests and reviewed by others who've used these notes.

Didn't get what you expected? Choose another document

No worries! You can instantly pick a different document that better fits what you're looking for.

Pay as you like, start learning right away

No subscription, no commitments. Pay the way you're used to via credit card and download your PDF document instantly.

Student with book image

“Bought, downloaded, and aced it. It really can be that simple.”

Alisha Student

Frequently asked questions