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Econometrics

Econometrics is an application of statistical methods to economic data in order to give empirical content to economic relationships.[1] More precisely, it is "the quantitative analysis of actual economic phenomena based on the concurrent development of theory and observation, related by appropriate methods of inference".[2] An introductory economics textbook describes econometrics as allowing economists "to sift through mountains of data to extract simple relationships".[3] Jan Tinbergen is one of the two founding fathers of econometrics.[4][5][6] The other, Ragnar Frisch, also coined the term in the sense in which it is used today.[7]

A basic tool for econometrics is the multiple linear regression model.[8] Econometric theory uses statistical theory and mathematical statistics to evaluate and develop econometric methods.[9][10] Econometricians try to find estimators that have desirable statistical properties including unbiasedness, efficiency, and consistency. Applied econometrics uses theoretical econometrics and real-world data for assessing economic theories, developing econometric models, analysing economic history, and forecasting.

Basic models: linear regression

A basic tool for econometrics is the multiple linear regression model.[8] In modern econometrics, other statistical tools are frequently used, but linear regression is still the most frequently used starting point for an analysis.[8] Estimating a linear regression on two variables can be visualised as fitting a line through data points representing paired values of the independent and dependent variables.

 
Okun's law representing the relationship between GDP growth and the unemployment rate. The fitted line is found using regression analysis.

For example, consider Okun's law, which relates GDP growth to the unemployment rate. This relationship is represented in a linear regression where the change in unemployment rate ( ) is a function of an intercept ( ), a given value of GDP growth multiplied by a slope coefficient   and an error term,  :

 

The unknown parameters   and   can be estimated. Here   is estimated to be 0.83 and   is estimated to be -1.77. This means that if GDP growth increased by one percentage point, the unemployment rate would be predicted to drop by 1.77 * 1 points, other things held constant. The model could then be tested for statistical significance as to whether an increase in GDP growth is associated with a decrease in the unemployment, as hypothesized. If the estimate of   were not significantly different from 0, the test would fail to find evidence that changes in the growth rate and unemployment rate were related. The variance in a prediction of the dependent variable (unemployment) as a function of the independent variable (GDP growth) is given in polynomial least squares.

Theory

Econometric theory uses statistical theory and mathematical statistics to evaluate and develop econometric methods.[9][10] Econometricians try to find estimators that have desirable statistical properties including unbiasedness, efficiency, and consistency. An estimator is unbiased if its expected value is the true value of the parameter; it is consistent if it converges to the true value as the sample size gets larger, and it is efficient if the estimator has lower standard error than other unbiased estimators for a given sample size. Ordinary least squares (OLS) is often used for estimation since it provides the BLUE or "best linear unbiased estimator" (where "best" means most efficient, unbiased estimator) given the Gauss-Markov assumptions. When these assumptions are violated or other statistical properties are desired, other estimation techniques such as maximum likelihood estimation, generalized method of moments, or generalized least squares are used. Estimators that incorporate prior beliefs are advocated by those who favour Bayesian statistics over traditional, classical or "frequentist" approaches.

Methods

Applied econometrics uses theoretical econometrics and real-world data for assessing economic theories, developing econometric models, analysing economic history, and forecasting.[11]

Econometrics may use standard statistical models to study economic questions, but most often they are with observational data, rather than in controlled experiments.[12] 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 be useful for generating new hypotheses.[13] Economics often analyses 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 equations 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.[14] Regression methods are important in econometrics because economists typically cannot use controlled experiments. Typically, the most readily available data is retrospective. However, retrospective analysis of observational data may be subject to omitted-variable bias, reverse causality, or other limitations that cast doubt on causal interpretation of the correlations.[15]

In the absence of evidence from controlled experiments, econometricians often seek illuminating natural experiments or apply quasi-experimental methods to draw credible causal inference.[16] The methods include regression discontinuity designs, instrumental variables, and difference-in-differences.

Example

A simple example of a relationship in econometrics from the field of labour economics is:

 

This example assumes that the natural logarithm of a person's wage is a linear function of the number of years of education that person has acquired. The parameter   measures the increase in the natural log of the wage attributable to one more year of education. The term   is a random variable representing all other factors that may have direct influence on wage. The econometric goal is to estimate the parameters,   under specific assumptions about the random variable  . For example, if   is uncorrelated with years of education, then the equation can be estimated with ordinary least squares.

If the researcher could randomly assign people to different levels of education, the data set thus generated would allow estimation of the effect of changes in years of education on wages. In reality, those experiments cannot be conducted. Instead, the econometrician observes the years of education of and the wages paid to people who differ along many dimensions. Given this kind of data, the estimated coefficient on Years of Education in the equation above reflects both the effect of education on wages and the effect of other variables on wages, if those other variables were correlated with education. For example, people born in certain places may have higher wages and higher levels of education. Unless the econometrician controls for place of birth in the above equation, the effect of birthplace on wages may be falsely attributed to the effect of education on wages.

The most obvious way to control for birthplace is to include a measure of the effect of birthplace in the equation above. Exclusion of birthplace, together with the assumption that   is uncorrelated with education produces a misspecified model. Another technique is to include in the equation additional set of measured covariates which are not instrumental variables, yet render   identifiable.[17] An overview of econometric methods used to study this problem were provided by Card (1999).[18]

Journals

The main journals that publish work in econometrics are Econometrica, the Journal of Econometrics, The Review of Economics and Statistics, Econometric Theory, the Journal of Applied Econometrics, Econometric Reviews, The Econometrics Journal,[19] and the Journal of Business & Economic Statistics.

Limitations and criticisms

Like other forms of statistical analysis, badly specified econometric models may show a spurious relationship where two variables are correlated but causally unrelated. In a study of the use of econometrics in major economics journals, McCloskey concluded that some economists report p-values (following the Fisherian tradition of tests of significance of point null-hypotheses) and neglect concerns of type II errors; some economists fail to report estimates of the size of effects (apart from statistical significance) and to discuss their economic importance. She also argues that some economists also fail to use economic reasoning for model selection, especially for deciding which variables to include in a regression.[20][21]

In some cases, economic variables cannot be experimentally manipulated as treatments randomly assigned to subjects.[22] In such cases, economists rely on observational studies, often using data sets with many strongly associated covariates, resulting in enormous numbers of models with similar explanatory ability but different covariates and regression estimates. Regarding the plurality of models compatible with observational data-sets, Edward Leamer urged that "professionals ... properly withhold belief until an inference can be shown to be adequately insensitive to the choice of assumptions".[22]

See also

Further reading

  • Econometric Theory book on Wikibooks
  • Giovannini, Enrico Understanding Economic Statistics, OECD Publishing, 2008, ISBN 978-92-64-03312-2

References

  1. ^ M. Hashem Pesaran (1987). "Econometrics," The New Palgrave: A Dictionary of Economics, v. 2, p. 8 [pp. 8–22]. Reprinted in J. Eatwell et al., eds. (1990). Econometrics: The New Palgrave, p. 1 [pp. 1–34]. Abstract 18 May 2012 at the Wayback Machine (2008 revision by J. Geweke, J. Horowitz, and H. P. Pesaran).
  2. ^ P. A. Samuelson, T. C. Koopmans, and J. R. N. Stone (1954). "Report of the Evaluative Committee for Econometrica," Econometrica 22(2), p. 142. [p p. 141-146], as described and cited in Pesaran (1987) above.
  3. ^ Paul A. Samuelson and William D. Nordhaus, 2004. Economics. 18th ed., McGraw-Hill, p. 5.
  4. ^ "1969 - Jan Tinbergen: Nobelprijs economie - Elsevierweekblad.nl". elsevierweekblad.nl. 12 October 2015. from the original on 1 May 2018. Retrieved 1 May 2018.
  5. ^ Magnus, Jan & Mary S. Morgan (1987) The ET Interview: Professor J. Tinbergen in: 'Econometric Theory 3, 1987, 117–142.
  6. ^ Willlekens, Frans (2008) International Migration in Europe: Data, Models and Estimates. New Jersey. John Wiley & Sons: 117.
  7. ^ • H. P. Pesaran (1990), "Econometrics," Econometrics: The New Palgrave, p. 2, citing Ragnar Frisch (1936), "A Note on the Term 'Econometrics'," Econometrica, 4(1), p. 95.
       • Aris Spanos (2008), "statistics and economics," The New Palgrave Dictionary of Economics, 2nd Edition. Abstract. 18 May 2012 at the Wayback Machine
  8. ^ a b c Greene, William (2012). "Chapter 1: Econometrics". Econometric Analysis (7th ed.). Pearson Education. pp. 47–48. ISBN 9780273753568. Ultimately, all of these will require a common set of tools, including, for example, the multiple regression model, the use of moment conditions for estimation, instrumental variables (IV) and maximum likelihood estimation. With that in mind, the organization of this book is as follows: The first half of the text develops fundamental results that are common to all the applications. The concept of multiple regression and the linear regression model in particular constitutes the underlying platform of most modeling, even if the linear model itself is not ultimately used as the empirical specification.
  9. ^ a b Greene, William (2012). Econometric Analysis (7th ed.). Pearson Education. pp. 34, 41–42. ISBN 9780273753568.
  10. ^ a b Wooldridge, Jeffrey (2012). "Chapter 1: The Nature of Econometrics and Economic Data". Introductory Econometrics: A Modern Approach (5th ed.). South-Western Cengage Learning. p. 2. ISBN 9781111531041.
  11. ^ Clive Granger (2008). "forecasting," The New Palgrave Dictionary of Economics, 2nd Edition. Abstract. 18 May 2012 at the Wayback Machine
  12. ^ Wooldridge, Jeffrey (2013). Introductory Econometrics, A modern approach. South-Western, Cengage learning. ISBN 978-1-111-53104-1.
  13. ^ Herman O. Wold (1969). "Econometrics as Pioneering in Nonexperimental Model Building," Econometrica, 37(3), pp. 369-381.
  14. ^ For an overview of a linear implementation of this framework, see linear regression.
  15. ^ Edward E. Leamer (2008). "specification problems in econometrics," The New Palgrave Dictionary of Economics. Abstract. 23 September 2015 at the Wayback Machine
  16. ^ Angrist, Joshua D.; Pischke, Jörn-Steffen (May 2010). "The Credibility Revolution in Empirical Economics: How Better Research Design is Taking the Con out of Econometrics". Journal of Economic Perspectives. 24 (2): 3–30. doi:10.1257/jep.24.2.3. ISSN 0895-3309.
  17. ^ Pearl, Judea (2000). Causality: Model, Reasoning, and Inference. Cambridge University Press. ISBN 978-0521773621.
  18. ^ Card, David (1999). "The Causal Effect of Education on Earning". In Ashenfelter, O.; Card, D. (eds.). Handbook of Labor Economics. Amsterdam: Elsevier. pp. 1801–1863. ISBN 978-0444822895.
  19. ^ "The Econometrics Journal". Wiley.com. Retrieved 8 October 2013.
  20. ^ McCloskey (May 1985). "The Loss Function has been mislaid: the Rhetoric of Significance Tests". American Economic Review. 75 (2).
  21. ^ Stephen T. Ziliak and Deirdre N. McCloskey (2004). "Size Matters: The Standard Error of Regressions in the American Economic Review," Journal of Socio-Economics, 33(5), pp. 527-46 25 June 2010 at the Wayback Machine (press +).
  22. ^ a b Leamer, Edward (March 1983). "Let's Take the Con out of Econometrics". American Economic Review. 73 (1): 31–43. JSTOR 1803924.

External links

  • Journal of Financial Econometrics
  • Econometric Society
  • The Econometrics Journal
  • Econometric Links
  • Teaching Econometrics (Index by the Economics Network (UK))
  • The Society for Financial Econometrics
  • The interview with Clive Granger – Nobel winner in 2003, about econometrics

econometrics, broader, coverage, this, topic, mathematical, economics, application, statistical, methods, economic, data, order, give, empirical, content, economic, relationships, more, precisely, quantitative, analysis, actual, economic, phenomena, based, con. For broader coverage of this topic see Mathematical economics Econometrics is an application of statistical methods to economic data in order to give empirical content to economic relationships 1 More precisely it is the quantitative analysis of actual economic phenomena based on the concurrent development of theory and observation related by appropriate methods of inference 2 An introductory economics textbook describes econometrics as allowing economists to sift through mountains of data to extract simple relationships 3 Jan Tinbergen is one of the two founding fathers of econometrics 4 5 6 The other Ragnar Frisch also coined the term in the sense in which it is used today 7 A basic tool for econometrics is the multiple linear regression model 8 Econometric theory uses statistical theory and mathematical statistics to evaluate and develop econometric methods 9 10 Econometricians try to find estimators that have desirable statistical properties including unbiasedness efficiency and consistency Applied econometrics uses theoretical econometrics and real world data for assessing economic theories developing econometric models analysing economic history and forecasting Contents 1 Basic models linear regression 2 Theory 3 Methods 4 Example 5 Journals 6 Limitations and criticisms 7 See also 8 Further reading 9 References 10 External linksBasic models linear regression EditA basic tool for econometrics is the multiple linear regression model 8 In modern econometrics other statistical tools are frequently used but linear regression is still the most frequently used starting point for an analysis 8 Estimating a linear regression on two variables can be visualised as fitting a line through data points representing paired values of the independent and dependent variables Okun s law representing the relationship between GDP growth and the unemployment rate The fitted line is found using regression analysis For example consider Okun s law which relates GDP growth to the unemployment rate This relationship is represented in a linear regression where the change in unemployment rate D Unemployment displaystyle Delta text Unemployment is a function of an intercept b 0 displaystyle beta 0 a given value of GDP growth multiplied by a slope coefficient b 1 displaystyle beta 1 and an error term e displaystyle varepsilon D Unemployment b 0 b 1 Growth e displaystyle Delta text Unemployment beta 0 beta 1 text Growth varepsilon The unknown parameters b 0 displaystyle beta 0 and b 1 displaystyle beta 1 can be estimated Here b 0 displaystyle beta 0 is estimated to be 0 83 and b 1 displaystyle beta 1 is estimated to be 1 77 This means that if GDP growth increased by one percentage point the unemployment rate would be predicted to drop by 1 77 1 points other things held constant The model could then be tested for statistical significance as to whether an increase in GDP growth is associated with a decrease in the unemployment as hypothesized If the estimate of b 1 displaystyle beta 1 were not significantly different from 0 the test would fail to find evidence that changes in the growth rate and unemployment rate were related The variance in a prediction of the dependent variable unemployment as a function of the independent variable GDP growth is given in polynomial least squares Theory EditSee also Estimation theory Econometric theory uses statistical theory and mathematical statistics to evaluate and develop econometric methods 9 10 Econometricians try to find estimators that have desirable statistical properties including unbiasedness efficiency and consistency An estimator is unbiased if its expected value is the true value of the parameter it is consistent if it converges to the true value as the sample size gets larger and it is efficient if the estimator has lower standard error than other unbiased estimators for a given sample size Ordinary least squares OLS is often used for estimation since it provides the BLUE or best linear unbiased estimator where best means most efficient unbiased estimator given the Gauss Markov assumptions When these assumptions are violated or other statistical properties are desired other estimation techniques such as maximum likelihood estimation generalized method of moments or generalized least squares are used Estimators that incorporate prior beliefs are advocated by those who favour Bayesian statistics over traditional classical or frequentist approaches Methods EditMain article Methodology of econometrics Applied econometrics uses theoretical econometrics and real world data for assessing economic theories developing econometric models analysing economic history and forecasting 11 Econometrics may use standard statistical models to study economic questions but most often they are with observational data rather than in controlled experiments 12 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 be useful for generating new hypotheses 13 Economics often analyses 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 equations 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 14 Regression methods are important in econometrics because economists typically cannot use controlled experiments Typically the most readily available data is retrospective However retrospective analysis of observational data may be subject to omitted variable bias reverse causality or other limitations that cast doubt on causal interpretation of the correlations 15 In the absence of evidence from controlled experiments econometricians often seek illuminating natural experiments or apply quasi experimental methods to draw credible causal inference 16 The methods include regression discontinuity designs instrumental variables and difference in differences Example EditA simple example of a relationship in econometrics from the field of labour economics is ln wage b 0 b 1 years of education e displaystyle ln text wage beta 0 beta 1 text years of education varepsilon This example assumes that the natural logarithm of a person s wage is a linear function of the number of years of education that person has acquired The parameter b 1 displaystyle beta 1 measures the increase in the natural log of the wage attributable to one more year of education The term e displaystyle varepsilon is a random variable representing all other factors that may have direct influence on wage The econometric goal is to estimate the parameters b 0 and b 1 displaystyle beta 0 mbox and beta 1 under specific assumptions about the random variable e displaystyle varepsilon For example if e displaystyle varepsilon is uncorrelated with years of education then the equation can be estimated with ordinary least squares If the researcher could randomly assign people to different levels of education the data set thus generated would allow estimation of the effect of changes in years of education on wages In reality those experiments cannot be conducted Instead the econometrician observes the years of education of and the wages paid to people who differ along many dimensions Given this kind of data the estimated coefficient on Years of Education in the equation above reflects both the effect of education on wages and the effect of other variables on wages if those other variables were correlated with education For example people born in certain places may have higher wages and higher levels of education Unless the econometrician controls for place of birth in the above equation the effect of birthplace on wages may be falsely attributed to the effect of education on wages The most obvious way to control for birthplace is to include a measure of the effect of birthplace in the equation above Exclusion of birthplace together with the assumption that ϵ displaystyle epsilon is uncorrelated with education produces a misspecified model Another technique is to include in the equation additional set of measured covariates which are not instrumental variables yet render b 1 displaystyle beta 1 identifiable 17 An overview of econometric methods used to study this problem were provided by Card 1999 18 Journals EditThe main journals that publish work in econometrics are Econometrica the Journal of Econometrics The Review of Economics and Statistics Econometric Theory the Journal of Applied Econometrics Econometric Reviews The Econometrics Journal 19 and the Journal of Business amp Economic Statistics Limitations and criticisms EditSee also Criticisms of econometrics Like other forms of statistical analysis badly specified econometric models may show a spurious relationship where two variables are correlated but causally unrelated In a study of the use of econometrics in major economics journals McCloskey concluded that some economists report p values following the Fisherian tradition of tests of significance of point null hypotheses and neglect concerns of type II errors some economists fail to report estimates of the size of effects apart from statistical significance and to discuss their economic importance She also argues that some economists also fail to use economic reasoning for model selection especially for deciding which variables to include in a regression 20 21 In some cases economic variables cannot be experimentally manipulated as treatments randomly assigned to subjects 22 In such cases economists rely on observational studies often using data sets with many strongly associated covariates resulting in enormous numbers of models with similar explanatory ability but different covariates and regression estimates Regarding the plurality of models compatible with observational data sets Edward Leamer urged that professionals properly withhold belief until an inference can be shown to be adequately insensitive to the choice of assumptions 22 See also Edit Wikimedia Commons has media related to Econometrics Augmented Dickey Fuller test Choice modelling Cowles Foundation Econometric software Financial econometrics Financial modeling Granger causality Important publications in econometrics Macroeconomic model Methodological individualism Predetermined variables Single equation methods econometrics Spatial econometrics Unit rootFurther reading EditEconometric Theory book on Wikibooks Giovannini Enrico Understanding Economic Statistics OECD Publishing 2008 ISBN 978 92 64 03312 2References Edit M Hashem Pesaran 1987 Econometrics The New Palgrave A Dictionary of Economics v 2 p 8 pp 8 22 Reprinted in J Eatwell et al eds 1990 Econometrics The New Palgrave p 1 pp 1 34 Abstract Archived 18 May 2012 at the Wayback Machine 2008 revision by J Geweke J Horowitz and H P Pesaran P A Samuelson T C Koopmans and J R N Stone 1954 Report of the Evaluative Committee for Econometrica Econometrica 22 2 p 142 p p 141 146 as described and cited in Pesaran 1987 above Paul A Samuelson and William D Nordhaus 2004 Economics 18th ed McGraw Hill p 5 1969 Jan Tinbergen Nobelprijs economie Elsevierweekblad nl elsevierweekblad nl 12 October 2015 Archived from the original on 1 May 2018 Retrieved 1 May 2018 Magnus Jan amp Mary S Morgan 1987 The ET Interview Professor J Tinbergen in Econometric Theory 3 1987 117 142 Willlekens Frans 2008 International Migration in Europe Data Models and Estimates New Jersey John Wiley amp Sons 117 H P Pesaran 1990 Econometrics Econometrics The New Palgrave p 2 citing Ragnar Frisch 1936 A Note on the Term Econometrics Econometrica 4 1 p 95 Aris Spanos 2008 statistics and economics The New Palgrave Dictionary of Economics 2nd Edition Abstract Archived 18 May 2012 at the Wayback Machine a b c Greene William 2012 Chapter 1 Econometrics Econometric Analysis 7th ed Pearson Education pp 47 48 ISBN 9780273753568 Ultimately all of these will require a common set of tools including for example the multiple regression model the use of moment conditions for estimation instrumental variables IV and maximum likelihood estimation With that in mind the organization of this book is as follows The first half of the text develops fundamental results that are common to all the applications The concept of multiple regression and the linear regression model in particular constitutes the underlying platform of most modeling even if the linear model itself is not ultimately used as the empirical specification a b Greene William 2012 Econometric Analysis 7th ed Pearson Education pp 34 41 42 ISBN 9780273753568 a b Wooldridge Jeffrey 2012 Chapter 1 The Nature of Econometrics and Economic Data Introductory Econometrics A Modern Approach 5th ed South Western Cengage Learning p 2 ISBN 9781111531041 Clive Granger 2008 forecasting The New Palgrave Dictionary of Economics 2nd Edition Abstract Archived 18 May 2012 at the Wayback Machine Wooldridge Jeffrey 2013 Introductory Econometrics A modern approach South Western Cengage learning ISBN 978 1 111 53104 1 Herman O Wold 1969 Econometrics as Pioneering in Nonexperimental Model Building Econometrica 37 3 pp 369 381 For an overview of a linear implementation of this framework see linear regression Edward E Leamer 2008 specification problems in econometrics The New Palgrave Dictionary of Economics Abstract Archived 23 September 2015 at the Wayback Machine Angrist Joshua D Pischke Jorn Steffen May 2010 The Credibility Revolution in Empirical Economics How Better Research Design is Taking the Con out of Econometrics Journal of Economic Perspectives 24 2 3 30 doi 10 1257 jep 24 2 3 ISSN 0895 3309 Pearl Judea 2000 Causality Model Reasoning and Inference Cambridge University Press ISBN 978 0521773621 Card David 1999 The Causal Effect of Education on Earning In Ashenfelter O Card D eds Handbook of Labor Economics Amsterdam Elsevier pp 1801 1863 ISBN 978 0444822895 The Econometrics Journal Wiley com Retrieved 8 October 2013 McCloskey May 1985 The Loss Function has been mislaid the Rhetoric of Significance Tests American Economic Review 75 2 Stephen T Ziliak and Deirdre N McCloskey 2004 Size Matters The Standard Error of Regressions in the American Economic Review Journal of Socio Economics 33 5 pp 527 46 Archived 25 June 2010 at the Wayback Machine press a b Leamer Edward March 1983 Let s Take the Con out of Econometrics American Economic Review 73 1 31 43 JSTOR 1803924 External links Edit Wikimedia Commons has media related to Econometrics Look up econometrics in Wiktionary the free dictionary Journal of Financial Econometrics Econometric Society The Econometrics Journal Econometric Links Teaching Econometrics Index by the Economics Network UK Applied Econometric Association The Society for Financial Econometrics The interview with Clive Granger Nobel winner in 2003 about econometrics Retrieved from https en wikipedia org w index php title Econometrics amp oldid 1133400336, wikipedia, wiki, book, books, library,

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