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In
statistics Statistics (from German: ''Statistik'', "description of a state, a country") is the discipline that concerns the collection, organization, analysis, interpretation, and presentation of data. In applying statistics to a scientific, industri ...
, and particularly in
econometrics Econometrics is the application of statistical methods to economic data in order to give empirical content to economic relationships.M. Hashem Pesaran (1987). "Econometrics," '' The New Palgrave: A Dictionary of Economics'', v. 2, p. 8 p. 8� ...
, the reduced form of a
system of equations In mathematics, a set of simultaneous equations, also known as a system of equations or an equation system, is a finite set of equations for which common solutions are sought. An equation system is usually classified in the same manner as single ...
is the result of solving the system for the endogenous variables. This gives the latter as functions of the
exogenous In a variety of contexts, exogeny or exogeneity () is the fact of an action or object originating externally. It contrasts with endogeneity or endogeny, the fact of being influenced within a system. Economics In an economic model, an exogeno ...
variables, if any. In econometrics, the equations of a structural form model are estimated in their theoretically given form, while an alternative approach to estimation is to first solve the theoretical equations for the endogenous variables to obtain reduced form equations, and then to estimate the reduced form equations. Let ''Y'' be the vector of the variables to be explained (endogeneous variables) by a
statistical model A statistical model is a mathematical model that embodies a set of statistical assumptions concerning the generation of sample data (and similar data from a larger population). A statistical model represents, often in considerably idealized form, ...
and ''X'' be the vector of explanatory (exogeneous) variables. In addition let \varepsilon be a vector of error terms. Then the general expression of a structural form is f(Y, X, \varepsilon) = 0 , where ''f'' is a function, possibly from vectors to vectors in the case of a multiple-equation model. The reduced form of this model is given by Y = g(X, \varepsilon) , with ''g'' a function.


Structural and reduced forms

Exogenous variables are variables which are not determined by the system. If we assume that demand is influenced not only by price, but also by an exogenous variable, ''Z'', we can consider the structural
supply and demand In microeconomics, supply and demand is an economic model of price determination in a market. It postulates that, holding all else equal, in a competitive market, the unit price for a particular good, or other traded item such as labor or ...
model : supply:    Q = a_S + b_S P + u_S, : demand:   Q = a_D + b_D P + c Z + u_D, where the terms u_i are random errors (deviations of the quantities supplied and demanded from those implied by the rest of each equation). By solving for the unknowns (endogenous variables) ''P'' and ''Q'', this structural model can be rewritten in the reduced form: : Q = \pi_ + \pi_ Z + e_Q, : P = \pi_ + \pi_ Z + e_P, where the parameters \pi_ depend on the parameters a_i , b_i, c of the structural model, and where the reduced form errors e_i each depend on the structural parameters and on both structural errors. Note that both endogenous variables depend on the exogenous variable ''Z''. If the reduced form model is estimated using empirical data, obtaining estimated values for the coefficients \pi_, some of the structural parameters can be recovered: By combining the two reduced form equations to eliminate ''Z'', the structural coefficients of the supply side model (a_S and b_S) can be derived: : a_S = (\pi_\pi_ - \pi_\pi_) / \pi_ , : b_S = \pi_ / \pi_ . Note however, that this still does not allow us to identify the structural parameters of the demand equation. For that, we would need an exogenous variable which is included in the supply equation of the structural model, but not in the demand equation.


The general linear case

Let ''y'' be a
column vector In linear algebra, a column vector with m elements is an m \times 1 matrix consisting of a single column of m entries, for example, \boldsymbol = \begin x_1 \\ x_2 \\ \vdots \\ x_m \end. Similarly, a row vector is a 1 \times n matrix for some n, c ...
of ''M'' endogenous variables. In the case above with ''Q'' and ''P'', we had ''M'' = 2. Let ''z'' be a column vector of ''K'' exogenous variables; in the case above ''z'' consisted only of ''Z''. The structural linear model is : A y = B z + v, where v is a vector of structural shocks, and ''A'' and ''B'' are
matrices Matrix most commonly refers to: * ''The Matrix'' (franchise), an American media franchise ** ''The Matrix'', a 1999 science-fiction action film ** "The Matrix", a fictional setting, a virtual reality environment, within ''The Matrix'' (franchis ...
; ''A'' is a square ''M''  × ''M'' matrix, while ''B'' is ''M'' × ''K''. The reduced form of the system is: : y = A^Bz+ A^v = \Pi z + w, with vector w of reduced form errors that each depends on all structural errors, where the matrix ''A'' must be
nonsingular In linear algebra, an -by- square matrix is called invertible (also nonsingular or nondegenerate), if there exists an -by- square matrix such that :\mathbf = \mathbf = \mathbf_n \ where denotes the -by- identity matrix and the multiplicati ...
for the reduced form to exist and be unique. Again, each endogenous variable depends on potentially each exogenous variable. Without restrictions on the ''A'' and ''B'', the coefficients of ''A'' and ''B'' cannot be identified from data on ''y'' and ''z'': each row of the structural model is just a linear relation between ''y'' and ''z'' with unknown coefficients. (This is again the
parameter identification problem In economics and econometrics, the parameter identification problem arises when the value of one or more parameters in an economic model cannot be determined from observable variables. It is closely related to non-identifiability in statistics and ...
.) The ''M'' reduced form equations (the rows of the matrix equation ''y'' = Π ''z'' above) can be identified from the data because each of them contains only one endogenous variable.


See also

* Simultaneous equations model#Structural and reduced form *
System of linear equations In mathematics, a system of linear equations (or linear system) is a collection of one or more linear equations involving the same variables. For example, :\begin 3x+2y-z=1\\ 2x-2y+4z=-2\\ -x+\fracy-z=0 \end is a system of three equations in t ...
*
Simultaneous equations In mathematics, a set of simultaneous equations, also known as a system of equations or an equation system, is a finite set of equations for which common solutions are sought. An equation system is usually classified in the same manner as single ...
*"Reduced form" is also an approach to credit spread-modelling; see under
Jarrow–Turnbull model The Jarrow–Turnbull model is a widely used "reduced-form" credit risk model. It was published in 1995 by Robert A. Jarrow and Stuart Turnbull. Under the model, which returns the corporate's probability of default, bankruptcy is modeled as a st ...
.


Further reading

* * * * *


External links

* {{DEFAULTSORT:Reduced Form Econometric modeling