Title: Simultaneous Equations
1Simultaneous Equations
- Main Reading Chapter 18,19 20, Gujarati
2The goal of todays lecture
- To introduce simultaneity
- To discuss why the standard OLS model doesnt
work in the presence of simulaneity - To introduce identification issues
- To give empirical examples
3Introduction - 1
- Heteroscedasticity and Autocorrelation
- OLS coefficients are still unbiased though no
longer most efficient - A number of cases for which OLS returns biased
estimates - Measurement Error in the Regressors
- Omitted Variables
- Lagged Endogenous Variables with Autocorrelation
- Simultaneity
4Introduction - 2
- Most economic models are simultaneous i.e. At
least two relationships between the variables in
the regression. - Good to think of cause and effect.
- Macro example
- Micro example supply and demand
- Lesson simultaneity can appear anywhere
- OLS will mix up the two relationships
c ?1 ?2 y
5Macro Example
1. Consumption, c, is function of income,
y. c is endogenous b2 is MPC 2. y
consumption investment. y is
endogenous 3. Investment assumed independent of
income. i is exogenous
c ?1 ?2 y
y c i
6The Structural Formof the Statistical Model
ct ?1 ?2 ytet
yt ct it
Identity
et is a random disturbance term
7- The model is simultaneous because we cannot
determine C or Y without knowing the other - Jargon C and Y are
- endogenous
- jointly determined
- jointly endogenous
- But I (investment) is exogenous
- We rely on economic intuition to tell us whether
a variable is endogenous or exogenous -- not
really a statistical issue
8Single vs. Simultaneous Equations
Simultaneous Equations
Single Equation
9Reduced Form
- For use later, useful to re-write the system of
equations in their reduced form - Solve the model
- Reduced form each equation has only one
endogenous variable on the left - method substitute one equation into the other
- Easy for this simple Macro example, more
difficult in real world cases - Note the conceptual difference between structural
and reduced forms
10ct ?1 ?2 yt et
yt ct it
ct ?1 ?2(ct it) et
(1 ? ?2)ct ?1 ?2 it et
ct ?11 ?21 it ?t
11- We can do the same for the equation in Y
- We get the reduced form of the system
- Note the conceptual difference
ct ?11 ?21 it ?t
yt ?12 ?22 it ?t
12Failure of OLS
- OLS picks best fit --- a mixture of both
relationships - Will not yield correct estimate of MPC
13- OLS is biased and inconsistent because the right
hand side variable (y) is correlated with the
disturbance term. - 1. Any change in e, leads to a change in C via
consumption equation - 2. Change in consumption leads to a change in
income via the identity - 3. This change in income will feed back into a
change in consumption via the consumption
equation - Thus any time there is a change in e there is a
simultaneous change in Y
14ct ?1 ?2 yt et
yt ct it
15Fundamental Problem of OLS
- OLS will give credit to Y for changes in e
- i.e. the estimated effect of Y on C will
include also the effect of e on C - OLS will act as if a change in consumption
brought about by some random effect (e), was due
to a change in income - OLS will overstate the effect of income on
consumption i.e. the MPC - OLS will be biased and inconsistent
16The Failure of Least Squares
The least squares estimators of parameters in a
structural simul- taneous equation is biased
and inconsistent because of the cor- relation
between the random error and the endogenous
variables on the right-hand side of the equation.
17Formal Proof More detailed version next week
- We can see this explicitly, if we re-write the
system of equations in their reduced form and use
the formula for the OLS estimator - Reminder formula for OLS
18- First step show that the covariance of Y and e
is not zero i.e. calculate how they move together
(see p 725 Gujarati).
19- OLS formula is
- Taking expectations we get
20Examples (from Wooldridge)
- Murder Rates and the Size of the Police Force
21Examples (from Wooldridge)
- Romer (1993) Inflation and Openness
22Identification
- Biggest issue in simultaneous equations, biggest
issue in econometrics - OLS cannot distinguish between effect of Y and
effect of e - Problem is to separate these two effects or
literally identify the effect of Y on C
23Micro Example
- Book uses a micro economic example i.e. Supply
and Demand model - Structural model
- Demand
- Supply
- Price and quantity are endogenous (jointly
determined) and income is exogenous
24- The model is simultaneous because
- q is a function of p (demand curve)
- p is a function of q (supply curve)
- OLS estimation of the demand equation will be
biased and inconsistent - The OLS estimate of a1 will pick up the effect of
the supply curve also - Cov(p,ed) is not equal to zero
- Problem of identification is to separate the
effect of the supply curve from that of the
demand curve - Have to do this to have hope of estimating
25Illustrating the Identification Problem
- Suppose we observe the following data
- Is this a supply curve or a demand curve?
- It looks like a supply curve
.
.
.
.
.
26- It could be a supply curve, i.e data is generated
by movements of the demand curve along a supply
curve -- so trace out the supply curve
27- Or it could be movement in both
28- It turns out that we can estimate b consistently,
but cannot estimate the demand curve - The reason for this is that y income is in the
demand curve but excluded from the supply curve - As income changes we know the demand curve will
shift but the supply curve will be fixed - Therefore if we can concentrate on those changes
in p and q that are caused by changes in income,
we can trace out the supply curve
29Exclusion Restrictions
- We can identify (trace out) the supply curve only
because y is in the demand curve equation but not
in the supply curve - It is because y is excluded from the supply curve
that we can be sure that changes in y move the
demand curve only - If y was in the supply curve we could not do this
30- We cannot identify (trace out) the demand curve,
because there is no variable in the supply curve
that is not in the demand curve - exclusion restrictions
31General Condition for Identification of an
equation
An equation containing M endogenous variables
must exclude at least M?1 exogenous variables
from a given equation in order for the parameters
of that equation to be identified and to be
consistently estimated.
32Importance of Identification
- Must check identification before trying to
estimate - If equation is unidentified, will not be able to
get consistent estimates of the structural
parameters - Always try to design models so that the equations
are identified - Note necessary vs. sufficient condition
33Beware of Artificial Restrictions
- Must justify exclusion restrictions using
economic intuition. - For example is it reasonable that income affects
demand but not supply? - Most cases are not so obvious.
- If a restriction is wrong -- no hope of getting
correct answers. - Most arguments in applied economic papers are
over the validity of these restrictions.
34Indirect Least Squares
- One way to estimate is to do OLS on the reduced
form - This works because no endogenous variable on the
right hand side i.e. unbiased and consistent
ct ?11 ?21 it ?t
yt ?12 ?22 it ?t
35- We can then use the formulae that link the
parameters of the reduced and structural forms to
calculate the estimates of b
36- In practice, this method is not used because
usually the link between the reduced form and
structural form is very complicated in more
realistic models - Several different structural forms may have the
same reduced form. - Difficult to get standard errors on b
- Indirect Least Squares linked to the notion of
Exact Identification
37Estimation- 2SLS
- Two stage least squares
- 1. Estimate the reduced form using OLS.
- 2. Do OLS on the structural form with the
actual values replaced by the fitted values
from the first stage
38- Why this works for the supply equation
- The fitted values from the first stage are by
definition the part of the variation in p and q
that is due to changes in income - Therefore we are sure that the fitted values lie
along the supply curve --- so we just do OLS on
these values - More formally the fitted value of p is
uncorrelated with e because it is a function
solely of y which is uncorrelated with e (i.e.
exogenous)
39- Why does it not work on the demand equation?
- Computer will generate an error at second stage
estimation of demand equation because effectively
the income variable will appear twice
40General 2SLS Procedure
- The 2SLS procedure can be used for a system of
any degree of complication - M equations
- M endogenous variables (y1 .... yM)
- K exogenous variables (x1 .... xk)
- Remember can only estimate those equations that
pass the identification condition
41- Suppose one of the equations you want to estimate
is - First check that it is identified i.e. are enough
x variables excluded from the equation - Estimate the reduced form for the entire model
42- Replace the endogenous variables in the
structural equations with their fitted values and
do OLS - Note Possible problem with standard errors in
some computer programs
43Properties of 2SLS
- Estimates are consistent
- Estimates are biased
- Estimates are asymptotically normal
- Standard errors are not same formula as OLS --
usually built into software - Also known as Instrumental Variables (IV)
- Beware of false restrictions
44Example Market for Truffles
- Structural model
- Demand
- Supply
- ps price of substitute,
- pfrent of pig (i.e. cost of production)
- di per capita disposable income
45Identification
- P and Q are endogenous
- pf, ps and di are exogenous ? Plausible?
- Is supply identified? Why?
- Is demand identified? Why?
- Are the restrictions plausible? ---- very
important - Can we use 2SLS?
- N.B two subjective judgements
- reasonable to say variable is exogenous
- reasonable to exclude it
46Stage 1 Estimate Reduced Form
- Endogenous on left, all exogenous on right
- See the results note exogenous variables are
significant , R2 is high - this is close to being the sufficient
condition - a.k.a rank condition
- what happens if insignificant?
47Stage 2 Estimate Structural Form
- Calculate the fitted values for p and q
- Do OLS on
- Note the signs and significance of the coef.
48Macro Example Klein Model
- A simple macro model
- What is endogenous?
49- What is exogenous?
- What are the valid instruments?
- Exogenous variables gov, tax, time
- predetermined variables lagged wages, profits,
GDP - reasonable?
- What equations are identified?
- Are exclusions reasonable?
- NB two subjective judgements
- reasonable to say variable is exogenous
- reasonable to exclude it