User talk:Thomasmeeks/Rough draft5
Methods
[edit]- See also Methodology of econometrics
Theoretical econometrics examines the statistical properties of econometric methods. Such properties include the power of hypothesis tests and efficiency of estimators and of survey-sampling methods.[1] Applied econometrics uses theoretical econometrics and real-world data for assessing economic theories, developing econometric models, analyzing aspects of economic history, and forecasting.[2]
One of the fundamental statistical methods used by econometricians is regression analysis, which commonly uses linear regression. Single-equation methods model one variable (the dependent variable) as a function of one or more explanatory (independent) variables. A regression equation with one explanatory variable is called a simple regression, distinguished from multiple regression with more than one explanatory variable. Ordinary least squares is the most common such method.
Out of necessity, most applied analysis uses observational data, say from official or business sources rather than from controlled experiments. Regression methods allow estimation of statistical relationships even in the absence of controlled experiments. Econometricians often seek illuminating natural or quasi-natural experiments in the absence of evidence from controlled experiments. Analysis using observational data may be subject to spurious correlation, including from omitted-variable bias, and a list of other problems that appropriate methods may be able to address.[3]
Data sets to which econometric analyses are applied can be classified in different ways. Time-series data have observations for one or more series, such as GDP and government spending in successive periods for a given country. Time-series analysis comprises methods for analyzing time-series data in order to extract meaningful economic relationships from the data.[4] Cross-section data are data collected from multiple subjects (such as households or countries), for example family size and income, possibly in the same period. Such data differences may call for different techniques or interpretations. For example, the ARMA model applies to time-series analysis. Cross-country analysis may estimate long-run relationships, unlike short-run relationships estimated from time-series analysis for a given country.[5]
In many econometric contexts, ordinary least squares may not recover the approriate theoretical relation 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).[6] For an economic model described by more than one equation, 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).[7]
Econometrics in its use of observational rather than experimental data has been described earlier as a pioneer in nonexperimental model building.[8] Analysis of data from an observational studies is guided by the study protocol, although exploratory data analysis may by useful for generating new hypotheses. In these aspects, it is similar to methods of such other disciplines as astronomy, epidemiology, and political science. Economics often analyzes systems of equations and inequalities, such as supply and demand hypothesized to be in equilibrium. Consequently, the field of econometrics has developed methods for identification and estimation of 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.
Other important unifying or distinguishing methods include the Method of Moments, Generalized Method of Moments (GMM),[9] and Bayesian methods.[10]
panel data,Gary Chamberlain, 1984. "Panel data," Handbook of Econometrics, v. 2, pp. 1247-1318. Outline. 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).
Computational concerns are important for evaluating econometric methods and for use in decision making.[11] Such concerns include mathematical well-posedness: the existence, uniqueness, and 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.[12]
Still, in recent decades, econometricians have increasingly turned to development of experimental methods 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.[13]
Cheng Hsiao, 2008. "longitudinal data analysis," The New Palgrave Dictionary of Economics, 2nd Edition. Abstract.
field experimentJohn A. List and David Reiley, 2008. "field experiments," The New Palgrave Dictionary of Economics, 2nd Edition. Abstract.
treatment effect. Joshua D. Angrist, 2008. "treatment effect," The New Palgrave Dictionary of Economics, 2nd Edition. Abstract.
An example is the econometric evaluation of social programs,James J. Heckman et al., 2007. "Econometric Evaluation of Social Programs: ...," Handbook of Econometrics, Elsevier v. 6B, ch. 70, 71, and 72.
Keisuke Hirano, 2008. "decision theory in econometrics," The New Palgrave Dictionary of Economics, 2nd Edition. Abstract.
• James O. Berger, 2008. "statistical decision theory," The New Palgrave Dictionary of Economics, 2nd Edition. Abstract.
index numbers W. Erwin Diewert, 2008. "index numbers," The New Palgrave Dictionary of Economics, 2nd Edition. Abstract.
Zvi Griliches, 1986. "Economic Data Issues," ch. 25, in Handbook of Econometrics, v. 3, pp. 1465-1514. Outline.
dirty data and flawed modelsWilliam S. Krasker, Edwin Kuh, Roy E. Welsch, 1983. ch. 11, "Estimation for Dirty Data and Flawed models," in Handbook of Econometrics, v. 1, , pp. 651-698. Outline.
Notes
[edit]- ^ • Jeffrey M. Wooldridge (2008). "stratified and cluster sampling,"The New Palgrave Dictionary of Economics, 2nd Edition. Abstract.
• Jeff Dominitz and Arthur van Soest (2008). "survey data, analysis of," The New Palgrave Dictionary of Economics, 2nd Edition. Abstract. - ^ Clive Granger (2008). "forecasting," The New Palgrave Dictionary of Economics, 2nd Edition. Abstract.
- ^ • Edward E. Leamer (2008). "specification problems in econometrics," The New Palgrave Dictionary of Economics. Abstract.
• C. W. J. Granger and P. Newbold, 1974. "Spurious Regressions in Econometrics," Journal of Econometrics, 2(2), pp. 111-120. - ^ • Francis X. Diebold, Lutz Kilian, and Marc Nerlove (2008) time series analysis," The New Palgrave Dictionary of Economics, Abstract.
• James D. Hamilton (1994, 1st ed.) Time Series Analysis, Princeton University Press. Description and preview. - ^ Peter Kennedy (2003). A Guide to Econometrics, MIT Press, 5th ed. p. 211.
- ^ Charles E. Bates (2008). "instrumental variables," abstract.
- ^ Peter Kennedy (2003). A Guide to Econometrics, 5th ed. Description, preview, and TOC, ch. 9, 10, 13, and 18.
- ^ Herman O. Wold (1969). "Econometrics as Pioneering in Nonexperimental Model Building," Econometrica, 37(3), pp. 369-381.
- ^ • Fumio Hayashi. (2000) Econometrics, Princeton University Press. ISBN 0691010188 Description and contents links.
• Russell Davidson and James G. MacKinnon (2004). Econometric Theory and Methods. New York: Oxford University Press. Description. - ^ Peter Kennedy (2003). A Guide to Econometrics, 5th ed. TOC, ch. 13.
- ^ Keisuke Hirano (2008). "decision theory in econometrics," The New Palgrave Dictionary of Economics, 2nd Edition. Abstract.
- ^ • Vassilis A. Hajivassiliou (2008). "computational methods in econometrics," The New Palgrave Dictionary of Economics, 2nd Edition. Abstract.
• Richard E. Quandt (1983). "Computational Problems and Methods," ch. 12, in Handbook of Econometrics, v. 1, pp. 699-764.
• Ray C. Fair (1996). "Computational Methods for Macroeconometric Models," Handbook of Computational Economics, v. 1, pp. [1]-169. - ^ • H. Wold 1954. "Causality and Econometrics," Econometrica, 22(2), pp. 162-177.
• Kevin D. Hoover (2008). "causality in economics and econometrics," The New Palgrave Dictionary of Economics, 2nd Edition. Abstract and galley proof. - ^ Charles R. Hulten, 2008. "Divisia index" The New Palgrave Dictionary of Economics, 2nd Edition. Abstract.
Notes
[edit]Economics is the social science that analyzes the production, distribution, and consumption of goods and services[1]. The term economics comes from the Ancient Greek οἰκονομία (oikonomia, "management of a household, administration") from οἶκος (oikos, "house") + νόμος (nomos, "custom" or "law"), hence "rules of the house(hold)".[2] Political economy was the earlier name for the subject, but proponents in the latter 19th century suggested 'economics' as similar in word form to 'mathematics', 'ethics', and other fields of study and as a shorter term for 'economic science' that also avoided a narrower political-interest connotation.[3][4]
Economics aims to explain how economies work and how economic agents interact. Economic analysis is applied throughout society, in business, finance and government, but also in crime,[5] education,[6] the family, health, law, politics, religion,[7] social institutions, war,[8] and science.[9] At the turn of the 21st century, the expanding domain of economics in the social sciences has been described as economic imperialism.[10]
Common distinctions are drawn between various dimensions of economics. The primary textbook distinction is between microeconomics, which examines the behavior of basic elements in the economy, including individual markets and agents (such as consumers and firms, buyers and sellers), and macroeconomics, which addresses issues affecting an entire economy, including unemployment, inflation, economic growth, and monetary and fiscal policy. Other distinctions include: between positive economics (describing "what is") and normative economics (advocating "what ought to be"); between economic theory and applied economics; between mainstream economics (more "orthodox" dealing with the "rationality-individualism-equilibrium nexus") and heterodox economics (more "radical" dealing with the "institutions-history-social structure nexus");[11] and between rational and behavioral economics.
Notes
[edit]- ^ There are a wide variety of different definitions of economics - a popular alternative - is 'Economics is the study of how and why agents make decisions about the use of scarce resources' (from Field, Barry (1994), "Environmental economics: an introduction" McGraw-Hill, p. 3).
- ^ Harper, Douglas (2001). "Online Etymology Dictionary – Economy". Retrieved October 27, 2007.
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ignored (help) - ^ Alfred Marshall and Mary Paley Marshall (1879). The Economics of Industry, Macmillan, p. 2.
- ^ Clark, B. (1998). Political-economy: A comparative approach. Westport, CT: Praeger.
- ^ Friedman, David D. (2002). "Crime," The Concise Encyclopedia of Economics.'.' Retrieved October 21, 2007.
- ^ The World Bank (2007). "Economics of Education.". Retrieved October 21, 2007.
- ^ Iannaccone, Laurence R. (1998). "Introduction to the Economics of Religion," Journal of Economic Literature, 36(3), pp. 1465–1495..
- ^ Nordhaus, William D. (2002). "The Economic Consequences of a War with Iraq", in War with Iraq: Costs, Consequences, and Alternatives, pp. 51–85. American Academy of Arts and Sciences. Cambridge, MA. Retrieved October 21, 2007.
- ^ Arthur M. Diamond, Jr. (2008). "science, economics of," The New Palgrave Dictionary of Economics, 2nd Edition, Basingstoke and New York: Palgrave Macmillan. Pre-publication cached ccpy.
- ^ • Lazear, Edward P. (2000|. "Economic Imperialism," Quarterly Journal Economics, 115(1)|, p p. 99–146. Cached copy. Pre-publication copy(larger print.)
• Becker, Gary S. (1976). The Economic Approach to Human Behavior. Links to arrow-page viewable chapter. University of Chicago Press. - ^ Davis, John B. (2006). "Heterodox Economics, the Fragmentation of the Mainstream, and Embedded Individual Analysis,” in Future Directions in Heterodox Economics. Ann Arbor: University of Michigan Press.