Identification (parameter)
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In
economics Economics () is the social science that studies the production, distribution, and consumption of goods and services. Economics focuses on the behaviour and interactions of economic agents and how economies work. Microeconomics analyzes ...
and
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 parameter identification problem arises when the value of one or more
parameter A parameter (), generally, is any characteristic that can help in defining or classifying a particular system (meaning an event, project, object, situation, etc.). That is, a parameter is an element of a system that is useful, or critical, when ...
s in an
economic model In economics, a model is a theoretical construct representing economic processes by a set of variables and a set of logical and/or quantitative relationships between them. The economic model is a simplified, often mathematical, framework desi ...
cannot be determined from observable variables. It is closely related to non-identifiability in statistics and econometrics, which occurs when a statistical model has more than one set of parameters that generate the same distribution of observations, meaning that multiple parameterizations are observationally equivalent. For example, this problem can occur in the estimation of multiple-equation econometric models where the equations have variables in common.


In simultaneous equations models


Standard example, with two equations

Consider a linear model for the supply and demand of some specific good. The quantity demanded varies negatively with the price: a higher price decreases the quantity demanded. The quantity supplied varies directly with the price: a higher price increases the quantity supplied. Assume that, say for several years, we have data on both the price and the traded quantity of this good. Unfortunately this is not enough to identify the two equations (demand and supply) using
regression analysis In statistical modeling, regression analysis is a set of statistical processes for estimating the relationships between a dependent variable (often called the 'outcome' or 'response' variable, or a 'label' in machine learning parlance) and one ...
on observations of ''Q'' and ''P'': one cannot estimate a downward slope ''and'' an upward slope with one linear regression line involving only two variables. Additional variables can make it possible to identify the individual relations. In the graph shown here, the supply curve (red line, upward sloping) shows the quantity supplied depending positively on the price, while the demand curve (black lines, downward sloping) shows quantity depending negatively on the price and also on some additional variable ''Z'', which affects the location of the demand curve in quantity-price space. This ''Z'' might be consumers' income, with a rise in income shifting the demand curve outwards. This is symbolically indicated with the values 1, 2 and 3 for ''Z''. With the quantities supplied and demanded being equal, the observations on quantity and price are the three white points in the graph: they reveal the supply curve. Hence the effect of ''Z'' on ''demand'' makes it possible to identify the (positive) slope of the ''supply'' equation. The (negative) slope parameter of the demand equation cannot be identified in this case. In other words, the parameters of an equation can be identified if it is known that some variable does ''not'' enter into the equation, while it does enter the other equation. A situation in which both the supply and the demand equation are identified arises if there is not only a variable ''Z'' entering the demand equation but not the supply equation, but also a variable ''X'' entering the supply equation but not the demand equation: : supply:    Q = a_S + b_S P + cX \, : demand:   Q = a_D + b_D P + d Z \, with positive ''bS'' and negative ''bD''. Here both equations are identified if ''c'' and ''d'' are nonzero. Note that this is the structural form of the model, showing the relations between the ''Q'' and ''P''. The
reduced form In statistics, and particularly in econometrics, the reduced form of a system of equations is the result of solving the system for the endogenous variables. This gives the latter as functions of the exogenous variables, if any. In econometrics, the ...
however can be identified easily. Fisher points out that this problem is fundamental to the model, and not a matter of statistical estimation:


More equations

More generally, consider a linear system of ''M'' equations, with ''M'' > 1. An equation cannot be identified from the data if less than ''M'' − 1 variables are excluded from that equation. This is a particular form of the order condition for identification. (The general form of the order condition deals also with restrictions other than exclusions.) The order condition is necessary but not sufficient for identification. The rank condition is a
necessary and sufficient In logic and mathematics, necessity and sufficiency are terms used to describe a conditional or implicational relationship between two statements. For example, in the conditional statement: "If then ", is necessary for , because the truth of ...
condition for identification. In the case of only exclusion restrictions, it must "be possible to form at least one nonvanishing determinant of order ''M'' − 1 from the columns of ''A'' corresponding to the variables excluded a priori from that equation" (Fisher 1966, p. 40), where ''A'' is the matrix of coefficients of the equations. This is the generalization in matrix algebra of the requirement "while it does enter the other equation" mentioned above (in the line above the formulas).


See also

*
Identifiability In statistics, identifiability is a property which a model must satisfy for precise inference to be possible. A model is identifiable if it is theoretically possible to learn the true values of this model's underlying parameters after obtaining ...
, the related problem in statistics * Errors-in-variables model#Linear model * Instrumental variable#Identification * Set identification


References

* * * * * * ("A classic and masterful exposition of the subject", , p. 31)


Further reading

* * * *


External links

* {{YouTube, id=WlOtUA8Rqw8&index=14&list=PLD15D38DC7AA3B737#t=57m47s, title=Lecture on the identification problem by
Mark Thoma Mark Allen Thoma (born December 15, 1956) is a macroeconomist and econometrician and a professor of economics at the Department of Economics of the University of Oregon. Thoma is best known as a regular columnist for ''The Fiscal Times'' throug ...
Estimation theory