代写Analyzing Time Series:Basic Regression Analysis
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代写Analyzing Time Series:Basic Regression Analysis
From Chapter 10 you will learn
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The nature of time series data
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Finite sample properties of OLS under classical assumptions
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Functional forms and dummy variables
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Trends and seasonality
The nature of time series data
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Temporal ordering of observations; may not be arbitrarily reordered
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Typical features: serial correlation/nonindependence of observations
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How should we think about the randomness in time series data?
•The outcome of economic variables (e.g. GNP, Dow Jones) is uncertain; they should therefore be modeled as random variables
•Time series are sequences of r.v. (= stochastic processes)
•Randomness does not come from sampling from a population
•“Sample“ = the one realized path of the time series out of the many possible paths the stochastic process could have taken
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Example: US inflation and unemployment rates 1948-2003
Examples of time series regression models
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Static models
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In static time series models, the current value of one variable is modeled as the result of the current values of explanatory variables
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Examples for static models
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Finite distributed lag models
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In finite distributed lag models, the explanatory variables are allowed to influence the dependent variable with a time lag
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Example for a finite distributed lag model
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The fertility rate may depend on the tax value of a child, but for biological and behavioral reasons, the effect may have a lag
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Interpretation of the effects in finite distributed lag models
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Effect of a past shock on the current value of the dep. variable
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Graphical illustration of lagged effects
Finite sample properties of OLS under classical assumptions
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Assumption TS.1 (Linear in parameters)
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Assumption TS.2 (No perfect collinearity)
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Notation
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Assumption TS.3 (Zero conditional mean)
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Discussion of assumption TS.3
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Strict exogeneity is stronger than contemporaneous exogeneity
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TS.3 rules out
feedback from the dep. variable on future values of the explanatory variables; this is often questionable esp. if explanatory variables „adjust“ to past changes in the dependent variable
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If the error term is related to past values of the explanatory variables, one should include these values as contemporaneous regressors
Theorem 10.1 (Unbiasedness of OLS)
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Assumption TS.4 (Homoscedasticity)
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A sufficient condition is that the volatility of the error is independent of the explanatory variables and that it is constant over time
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In the time series context, homoscedasticity may also be easily violated, e.g. if the volatility of the dep. variable depends on regime changes
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Assumption TS.5 (No serial correlation)
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Discussion of assumption TS.5
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Why was such an assumption not made in the cross-sectional case?
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The assumption may easily be violated if, conditional on knowing the values of the indep. variables, omitted factors are correlated over time
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The assumption may also serve as substitute for the random sampling assumption if sampling a cross-section is not done completely randomly
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In this case, given the values of the explanatory variables, errors have to be uncorrelated across cross-sectional units (e.g. states)
Theorem 10.2 (OLS sampling variances)
Theorem 10.3 (Unbiased estimation of the error variance)
Theorem 10.4 (Gauss-Markov Theorem)
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Under assumptions TS.1 – TS.5, the OLS estimators have the minimal variance of all linear unbiased estimators of the regression coefficients
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This holds conditional as well as unconditional on the regressors
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Assumption TS.6 (Normality)
Theorem 10.5 (Normal sampling distributions)
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Under assumptions TS.1 – TS.6, the OLS estimators have the usual nor-mal distribution (conditional on ). The usual F- and t-tests are valid.
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Example: Static Phillips curve
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Discussion of CLM assumptions
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Discussion of CLM assumptions (cont.)
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Example: Effects of inflation and deficits on interest rates
代写Analyzing Time Series:Basic Regression Analysis
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Discussion of CLM assumptions
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Discussion of CLM assumptions (cont.)
Using logarithmic functional forms
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Interpretation
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A higher (US) mimium wage lowers the employment rate.
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US GNP does not seem to be important.
Using dummy explanatory variables in time series
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Interpretation
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During World War II, the fertility rate was temporarily lower
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It has been permanently lower since the introduction of the pill in 1963
Time series with trends
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Modelling a linear time trend
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Modelling an exponential time trend
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Example for a time series with an exponential trend
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Using trending variables in regression analysis
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If trending variables are regressed on each other, a spurious re- lationship may arise if the variables are driven by a common trend
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In this case, it is important to include a trend in the regression
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Example: Housing investment and prices
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Example: Housing investment and prices (cont.)
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When should a trend be included?
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If the dependent variable displays an obvious trending behaviour
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If both the dependent and some independent variables have trends
If only some of the independent variables have trends; their effect on the dep. var. may only be visible after a trend has been substracted
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A Detrending interpretation of regressions with a time trend
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It turns out that the OLS coefficients in a regression including a trend are the same as the coefficients in a regression without a trend but where all the variables have been detrended before the regression
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This follows from the general interpretation of multiple regressions
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Computing R-squared when the dependent variable is trending
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Due to the trend, the variance of the dep. var. will be overstated
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It is better to first detrend the dep. var. and then run the regression on all the indep. variables (plus a trend if they are trending as well)
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The R-squared of this regression is a more adequate measure of fit
Modelling seasonality in time series
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A simple method is to include a set of seasonal dummies:
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Similar remarks apply as in the case of deterministic time trends
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The regression coefficients on the explanatory variables can be seen as the result of first deseasonalizing the dep. and the explanat. variables
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An R-squared that is based on first deseasonalizing the dep. var. may better reflect the explanatory power of the explanatory variables
代写Analyzing Time Series:Basic Regression Analysis