Methodology Of Econometrics
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The methodology of econometrics is the study of the range of differing approaches to undertaking
econometric analysis 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 ...
. Commonly distinguished differing approaches that have been identified and studied include: * the
Cowles Commission The Cowles Foundation for Research in Economics is an economic research institute at Yale University. It was created as the Cowles Commission for Research in Economics at Colorado Springs in 1932 by businessman and economist Alfred Cowles. In 193 ...
approach * the
vector autoregression Vector autoregression (VAR) is a statistical model used to capture the relationship between multiple quantities as they change over time. VAR is a type of stochastic process model. VAR models generalize the single-variable (univariate) autoregres ...
approach * the
LSE approach to econometrics The LSE approach to econometrics, named for the London School of Economics, involves viewing econometric models as ''reductions'' from some unknown data generation process (DGP). A complex DGP is typically modelled as the starting point and this co ...
- originated with
Denis Sargan John Denis Sargan, FBA (23 August 1924 – 13 April 1996) was a British econometrician who specialized in the analysis of economic time-series. Sargan was born in Doncaster, Yorkshire in 1924, and was educated at Doncaster Grammar School and ...
now associated with David Hendry (and his general-to-specific modeling). Also associated this approach is the work on integrated and cointegrated systems originating on the work of Engle and
Granger Granger may refer to: People *Granger (name) *Hermione Granger, a fictional character in Harry Potter United States * Granger, Indiana * Granger, Iowa * Granger, Minnesota * Granger, Missouri * Granger, New York * Granger, Ohio * Granger, Texas ...
and
Johansen Johansen is a Scandinavian patronymic surname meaning ''"son of Johan (given name), Johan"''. It is most common in Denmark and Norway. The Sweden, Swedish variant is Johansson, while the most common spelling in the US is Johanson. There are still ...
and Juselius (Juselius 1999) * the use of calibration -
Finn Kydland Finn Erling Kydland (born 1 December 1943) is a Norwegian economist known for his contributions to business cycle theory. He is the Henley Professor of Economics at the University of California, Santa Barbara. He also holds the Richard P. Simmons ...
and Edward C. Prescott, Edward Prescott * the ''Experimentalist approach to econometrics, experimentalist'' or difference in differences approach - Joshua Angrist and Jörn-Steffen Pischke. In addition to these more clearly defined approaches, Kevin Hoover, Hoover identifies a range of ''heterogeneous'' or ''textbook approaches'' that those less, or even un-, concerned with methodology, tend to follow.


Methods

Econometrics may use standard statistical models to study economic questions, but most often they are with observational study, observational data, rather than in experiment, controlled experiments. In this, the design of observational studies in econometrics is similar to the design of studies in other observational disciplines, such as astronomy, epidemiology, sociology and political science. Analysis of data from an observational study is guided by the study protocol, although exploratory data analysis may by useful for generating new hypotheses. Economics often analyzes systems of equations and inequalities, such as supply and demand hypothesized to be in equilibrium (economics), equilibrium. Consequently, the field of econometrics has developed methods for parameter identification problem, identification and estimation theory, estimation of simultaneous equation methods (econometrics), simultaneous-equation models. These methods are analogous to methods used in other areas of science, such as the field of system identification in systems analysis and control theory. Such methods may allow researchers to estimate models and investigate their empirical consequences, without directly manipulating the system. One of the fundamental statistical methods used by econometricians is regression analysis. Regression methods are important in econometrics because economists typically cannot use Contrived experiment, controlled experiments. Econometricians often seek illuminating natural experiments in the absence of evidence from controlled experiments. Observational data may be subject to omitted-variable bias and a list of other problems that must be addressed using causal analysis of simultaneous-equation models.


Experimental economics

In recent decades, econometricians have increasingly turned to use of experimental economics, experiments to evaluate the often-contradictory conclusions of observational studies. Here, controlled and randomized experiments provide statistical inferences that may yield better empirical performance than do purely observational studies.


Data

Data sets to which econometric analyses are applied can be classified as time-series data, cross-sectional data, panel data, and multidimensional panel data. Time-series data sets contain observations over time; for example, inflation over the course of several years. Cross-sectional data sets contain observations at a single point in time; for example, many individuals' incomes in a given year. Panel data sets contain both time-series and cross-sectional observations. Multi-dimensional panel data sets contain observations across time, cross-sectionally, and across some third dimension. For example, the Survey of Professional Forecasters contains forecasts for many forecasters (cross-sectional observations), at many points in time (time series observations), and at multiple forecast horizons (a third dimension).


Instrumental variables

In many econometric contexts, the commonly used ordinary least squares method may not recover the theoretical relation desired or may produce estimates with poor statistical properties, because the assumptions for valid use of the method are violated. One widely used remedy is the method of instrumental variables (IV). For an economic model described by more than one equation, Simultaneous equations model, simultaneous-equation methods may be used to remedy similar problems, including two IV variants, Two-Stage Least Squares (2SLS), and Three-Stage Least Squares (3SLS).


Computational methods

Computational economics, Computational concerns are important for evaluating econometric methods and for use in decision making. Such concerns include mathematics, mathematical well-posed problem, well-posedness: the existence, uniqueness, and stability theory, stability of any solutions to econometric equations. Another concern is the numerical efficiency and accuracy of software. A third concern is also the usability of econometric software.


Structural econometrics

Structural econometrics extends the ability of researchers to analyze data by using economic models as the lens through which to view the data. The benefit of this approach is that, provided that counter-factual analyses take an agent's re-optimization into account, any policy recommendations will not be subject to the Lucas critique. Structural econometric analyses begin with an economic model that captures the salient features of the agents under investigation. The researcher then searches for parameters of the model that match the outputs of the model to the data. One example is dynamic discrete choice, where there are two common ways of doing this. The first requires the researcher to completely solve the model and then use maximum likelihood. The second bypasses the full solution of the model and estimates models in two stages, allowing the researcher to consider more complicated models with strategic interactions and multiple equilibria. Another example of structural econometrics is in the estimation of first-price sealed-bid auctions with independent private values. The key difficulty with bidding data from these auctions is that bids only partially reveal information on the underlying valuations, bids shade the underlying valuations. One would like to estimate these valuations in order to understand the magnitude of profits each bidder makes. More importantly, it is necessary to have the valuation distribution in hand to engage in mechanism design. In a first price sealed bid auction the expected payoff of a bidder is given by: : (v-b)\Pr(b\ \textrm) where v is the bidder valuation, b is the bid. The optimal bid b^* solves a first order condition: : (v-b^*)\frac-\Pr(b^*\ \textrm)=0 which can be re-arranged to yield the following equation for v : v=b^*+\frac Notice that the probability that a bid wins an auction can be estimated from a data set of completed auctions, where all bids are observed. This can be done using simple nonparametric estimators, such as kernel regression. If all bids are observed, it is then possible to use the above relation and the estimated probability function and its derivative to point wise estimate the underlying valuation. This will then allow the investigator to estimate the valuation distribution.


References


Other sources

*Darnell, Adrian C. and J. Lynne Evans. (1990) ''The Limits of Econometrics''. Aldershot: Edward Elgar. *Davis, George C. (2000) “A Semantic Conception of Haavelmo’s Structure of Econometrics”, ''Economics and Philosophy'', 16(2), 205–28. *Davis, George (2005) “Clarifying the ‘Puzzle’ Between Textbook and LSE Approaches to Econometrics: A Comment on Cook’s Kuhnian Perspective on Econometric Modelling”, ''Journal of Economic Methodology'' *Epstein, Roy J. (1987) ''A History of Econometrics''. Amsterdam: North-Holland. *Fisher, I. (1933) “Statistics in the Service of Economics,” ''Journal of the American Statistical Association'' 28(181), 1-13. *Gregory, Allan W. and Gregor W. Smith. (1991) “Calibration as Testing: Inference in Simulated Macroeconomic Models,” ''Journal of Business and Economic Statistics'' 9(3), 297-303. *Haavelmo, Trgyve. (1944) “The Probability Approach in Econometrics,” ''Econometrica'' 12 (supplement), July. 41 *Heckman, James J. (2000) “Causal Parameters and Policy Analysis in Economics: A Twentieth Century Retrospective,” ''Quarterly Journal of Economics'' 115(1), 45-97. *Hoover, Kevin D. (1995b) “Why Does Methodology Matter for Economics?” Economic Journal 105(430), 715-734. *Hoover, Kevin D. (ed.) (1995c) ''Macroeconometrics: Developments, Tensions, and Prospects''. Dordrecht: Kluwer. *Hoover, Kevin D. “The Methodology of Econometrics,” revised 15 February 2005 *Hoover, Kevin D. and Stephen J. Perez. (1999) “Data Mining Reconsidered: Encompassing and the General-to-Specific Approach to Specification Search,” Econometrics Journal 2(2), 167-191. 43 *Juselius, Katarina. (1999) “Models and Relations in Economics and Econometrics,” Journal of Economic Methodology 6(2), 259-290. *Leamer, Edward E. (1983) “Let’s Take the Con Out of Econometrics,” ''American Economic Review'' 73(1), 31-43. *Mizon, Grayham E. (1995) “Progressive Modelling of Economic Time Series: The LSE Methodology,” in Hoover (1995c), pp. 107–170. *{{cite book , last=Morgan , first=Mary S. , author-link=Mary S. Morgan , title=The History of Econometric Ideas , location=New York , publisher=Cambridge University Press , year=1990 , isbn=978-0-521-37398-2 , url=https://books.google.com/books?id=iUpDzJM9lq0C *Spanos, Aris. (1986) ''Statistical Foundations of Econometric Modelling''. Cambridge: Cambridge University Press. Econometrics Economic methodology