Survey
* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project
* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project
Econometrics 1 Lecture 1 • Syllabus • Introduction of Econometrics: Why we study econometrics? 2 Introduction • What is Econometrics? • Econometrics consists of the application of mathematical statistics to economic data to lend empirical support to the models constructed by mathematical economics and to obtain numerical results. • Econometrics may be defined as the quantitative analysis of actual economic phenomena based on the concurrent development of theory and observation, related by appropriate methods of inference. 3 What is Econometrics? Econometrics Economics Statistics Mathematics 4 Why do we study econometrics? • Rare in economics (and many other areas without labs!) to have experimental data • Need to use nonexperimental, or observational data to make inferences • Important to be able to apply economic theory to real world data 5 Why it is so important? • An empirical analysis uses data to test a theory or to estimate a relationship • A formal economic model can be tested • Theory may be ambiguous as to the effect of some policy change – can use econometrics to evaluate the program 6 The Question of Causality • Simply establishing a relationship between variables is rarely sufficient • Want to get the effect to be considered causal • If we’ve truly controlled for enough other variables, then the estimated effect can often be considered to be causal • Can be difficult to establish causality 7 Purpose of Econometrics • Structural Analysis • Policy Evaluation • Economical Prediction • Empirical Analysis 8 Methodology of Econometrics • 1. Statement of theory or hypothesis. • 2. Specification of the mathematical model of the theory. • 3. Specification of the statistical, or econometric model. • 4. Obtaining the data. • 5. Estimation of the parameters of the econometric model. • 6. Hypothesis testing. • 7. Forecasting or prediction. • 8. Using the model for control or policy purposes. 9 Example:Kynesian theory of consumption •1. Statement of theory or hypothesis. Keynes stated: The fundamental psychological law is that men/women are disposed, as a rule and on average, to increase their consumption as their income increases, but not as much as the increase in their income. In short, Keynes postulated that the marginal propensity to consume (MPC)边际消费倾向, the rate of change of consumption for a unit change in income, is greater than zero but less than 1 10 2.Specification of the mathematical model of the theory • A mathematical economist might suggest the following form of the Keynesian consumption function: Y 0 1 X 0 1 1 Consumption expenditure Income 11 3. Specification of the statistical, or econometric model. • To allow for the inexact relationships between economic variables, the econometrician would modify the deterministic consumption function as follows: Y 0 1 X u U, known as disturbance, or error term • This is called an econometric model. 12 4. Obtaining the data. year Y 1982 1983 1984 1985 1986 1987 1988 1989 1990 1991 1992 1993 1994 1995 1996 X 3081.5 3240.6 3407.6 3566.5 3708.7 3822.3 3972.7 4064.6 4132.2 4105.8 4219.8 4343.6 4486 4595.3 4714.1 4620.3 4803.7 5140.1 5323.5 5487.7 5649.5 5865.2 6062 6136.3 6079.4 6244.4 6389.6 6610.7 6742.1 6928.4 Sourse: Data on Y (Personal Consumption Expenditure) and X (Gross Domestic Product),1982-1996) all in 1992 billions of dollars 13 5. Estimation of the parameters of the econometric model. • reg y x • • • • • • • • • • • • • Source | SS df MS Number of obs = 15 -------------+-----------------------------F( 1, 13) = 8144.59 Model | 3351406.23 1 3351406.23 Prob > F = 0.0000 Residual | 5349.35306 13 411.488697 R-squared = 0.9984 -------------+-----------------------------Adj R-squared = 0.9983 Total | 3356755.58 14 239768.256 Root MSE = 20.285 -----------------------------------------------------------------------------y | Coef. Std. Err. t P>|t| [95% Conf. Interval] -------------+---------------------------------------------------------------x | .706408 .0078275 90.25 0.000 .6894978 .7233182 _cons | -184.0779 46.26183 -3.98 0.002 -284.0205 -84.13525 -----------------------------------------------------------------------------14 6. Hypothesis testing. As noted earlier, Keynes expected the MPC to be positive but less than 1. In our example we found it is about 0.70. Then, is 0.70 statistically less than 1? If it is, it may support keynes’s theory. Such confirmation or refutation of econometric theories on the basis of sample evidence is based on a branch of statistical theory know as statistical inference (hypothesis testing) 15 7.Forecasting or prediction. • To illustrate, suppose we want to predict the mean consumption expenditure for 1997. The GDP value for 1997 was 7269.8 billion dollars. Putting this value on the right-hand of the model, we obtain 4951.3 billion dollars. • But the actual value of the consumption expenditure reported in 1997 was 4913.5 billion dollars. The estimated model thus overpredicted. • The forecast error is about 37.82 billion dollars. 16 Using the model for control or policy purposes. • This is on the opposite way of forecasting. 17 Example: Returns to Education A model of human capital investment implies getting more education should lead to higher earnings • In the simplest case, this implies an equation like • Earnings 0 1education u 18 Example: (continued) • The estimate of b1, is the return to education, but can it be considered causal? • While the error term, u, includes other factors affecting earnings, want to control for as much as possible • Some things are still unobserved, which can be problematic 19 Types of Data Sets 20 21 22 23 Distribution, Densities and Moments Random Variable Discrete r.v.: Binary data; Count data. Probability Distribution p x 1 i 1 Continuous r.v. i Cumulative Distribution Function F ( x) Pr( X x) Probability Density Function : : f ( x)dx F ( x)dx 1 24 25 26 27 Normal Distribution • PDF: 1 f ( x) exp[( x ) 2 / 2 2 ] 2 1 2 ( x) (2 x) exp( x ) 2 ( x ) ( y ) dy 1/ 2 • CDF: 28 29 Monments of Random Variables • Expectation/Population Mean: • Discrete r.v: • Continous r.v.: • Monment: m E ( X ) p( xi ) xi i 1 E ( X ) xf ( x)dx mk ( X ) x k f ( x)dx The expectation of a random variable is often referred to as its first moment. 30 Calculations • (Mean) Expected value of : • M (0) • Variance of : ' E( X ) 2 2 2 2 M '' (0) [M ' (0)] 2 31