Applied Econometrics I
Assignment #1
I- Download the quarterly data on CPI for the period 2004.1-2009.4, find the following estimates and do the following tests.
1. Plot the variable over time. Explain the movements in your variable and mark the outliers and structural break, if any. Comment on the existence of time trend, seasonal trend, cyclical trend, and randomness in the variable.
2. Do the histogram of the CPI data and comment on the distribution of data.
3. Plot the natural logarithm of the variable. Explain movements in the natural log of the variable and mark the outliers and structural breaks.
4. Plot the histogram of the log of the variable and comment on its distribution.
5. Comment on the differences between the behavior of the variable and the natural log of the variable.
6. Find the summary statistics of the CPI variable.
7. Do a hypothesis test that the mean CPI during the 2004.1-2006.12 is statistically no different from the mean CPI during the 2007.1-2009.12.
8. Do a hypothesis test that the variation of CPI during the 2004.1-2006.12 is statistically no different from the mean CPI during the 2007.1-2009.12.
9. Create the lag of the CPI variable and use it as a naive forecast of your variable. Find the mean absolute deviation (MAD), mean absolute percentage error (MAPE), and mean squared error (MSE)for your forecast.
12. Divide the CPI data to three equal-size periods. Find the means and the variances of the first and the last periods.
13. Do a hypothesis test that the mean of the first period is the same as the mean of the third period.
14. Do a hypothesis testing that the variance of the first period is the same as the variance of the Third period.
15. Find the correlation coefficient between the first period and the third period data. Comment on the correlation coefficient.
16. Take time as an explanatory variable. Find the correlation between the CPI and the time. Comment on the correlation.
II- For the CPI variable find the following estimates and do the following tests.
1. Plot a scatter diagram of the variable and comment on the time trend of the variable.
2. Run a regression of the CPI variable on time and analyze the relationship (Comment on the significance of the coefficients and overall explaining power of the regression).
3. Find the estimated value of the dependent variable (y-hat) .
4. Graph the dependent variable (y) and the estimated y, (y-hat), on the same coordinate system and comment on the relationship between the two.
5. Find the histogram of the regression error. Comment on the distribution of the residuals.
6. Run a regression of the variable on a polynomial function on time and analyze the relationship. Fit the best model and decide on the degree of the polynomial.
7. Find the estimated value of the dependent variable (y-hat).
8. Graph the dependent variable (y) and the estimated y, (y-hat), on the same coordinate system and comment on the relationship between the two.
9. Find the MAD, MAPE, and RMSSE of the regression error.
10. Compare the MAD, MAPE, and RMSE of the two models.
11. Do a three period forecasting based on your best regression on time.
12. Find an explanatory variable based on economic theory. Run a regression of the dependent variable on time and other explanatory variable.
13. Decide on the significance and efficiency of the best model.
14. Find the MAD, MAPE, and RMSE of the regression error.
III
1. Convert the CPI variable to inflation. Define economic variables that would best explain inflation. Download data for those variables.
2. Write a regression model explaining inflation.
3. Run a regression of the dependent variable (inflation) on the independent variables and estimate the model. Comment on the significance of the coefficients, statistical output, and the overall explaining power of the regression.
4. Check whether the classical regression assumptions are satisfied or not. Do proper corrections to meet the required conditions.
5. Find the estimated value of the dependent variable (y-hat). Plot the actual value of the dependent variable y, estimated y, (y-hat), and the residuals. Comment on the relationship among the variables.
6. Find the MAD, MAPE, and RMSE of the regression error.
7. Plot the error of the regression. Comment on the randomness of the error term. Test for the existence of outliers, heteroscedasticity, and/or serial correlation.
8. Make the necessary adjustments for heteroscedasticity or serial correlation.
9. Find the MAD, MAPE, and RMSE of the new regression error. Compare the MAD, MAPE, and RMSE to the MAD, MAPE, and SE in item 6.
10. Do a three period forecasting of the dependent variable assuming that independent variables will be increasing by 10% each period for the next three periods.
11. Test your dependent variable (inflation) for time trend. If trend exists, detrend the variable.
12. Test your dependent variable (inflation) for the existence of seasonality. If seasonality exists, deseasonalize the variable.
IIII
1- Check your model in assignment #3 for the significance of using lagged dependent variable as an independent variable (argue for theoretical and application properties).
2- Extend the argument on using lagged dependent variable to polynomial distributed lag.
3- Assume one of the independent variables in your model is correlated with the error of the regression, (EUX) =/=
0. Find an instrumental variable and run an instrumental variable estimate of your model.
4- Compare the efficiency of the instrumental variable estimate with the OLS estimate.
5- Use all you data except the last five observations. Run your best model (include all the corrections for stationarity, serial correlation, multicolinearity …..). Use the model for an ex-post forecasting of the last five periods. Find the MA, Mean, MAPE, and RMSE of the forecast. Comment on the efficiency of your forecast.
6- Write a 95% confidence interval for the estimated forecast values.
7- Use all of your data, run the best estimate of the model, and do a five period ex-ante forecasting.
8- Write a 95% confidence interval for the forecasted values.

Title: Consumer Price Index for All Urban Consumers: All Items
Series ID: CPIAUCSL
Source: U.S. Department of Labor: Bureau of Labor Statistics
Release: Consumer Price Index
Seasonal Adjustment: Seasonally Adjusted
Frequency: Monthly
Units: Index 1982-84=100
Date Range: 2004-01-01 to 2010-09-01
Last Updated: 2010-10-15 8:01 AM CDT
Notes: Handbook of Methods –
(http://stats.bls.gov:80/opub/hom/homch17_itc.htm) Understanding the
CPI: Frequently Asked Questions –
(http://stats.bls.gov:80/cpi/cpifaq.htm)
DATE VALUE
2004-01-01 186.300
2004-02-01 186.700
2004-03-01 187.100
2004-04-01 187.400
2004-05-01 188.200
2004-06-01 188.900
2004-07-01 189.100
2004-08-01 189.200
2004-09-01 189.800
2004-10-01 190.800
2004-11-01 191.700
2004-12-01 191.700
2005-01-01 191.600
2005-02-01 192.400
2005-03-01 193.100
2005-04-01 193.700
2005-05-01 193.600
2005-06-01 193.700
2005-07-01 194.900
2005-08-01 196.100
2005-09-01 198.800
2005-10-01 199.100
2005-11-01 198.100
2005-12-01 198.100
2006-01-01 199.200
2006-02-01 199.400
2006-03-01 199.700
2006-04-01 200.600
2006-05-01 201.400
2006-06-01 201.900
2006-07-01 202.900
2006-08-01 203.700
2006-09-01 202.900
2006-10-01 201.800
2006-11-01 202.000
2006-12-01 203.100
2007-01-01 203.372
2007-02-01 204.258
2007-03-01 205.312
2007-04-01 205.959
2007-05-01 206.850
2007-06-01 207.202
2007-07-01 207.651
2007-08-01 207.671
2007-09-01 208.503
2007-10-01 209.073
2007-11-01 210.740
2007-12-01 211.434
2008-01-01 212.225
2008-02-01 212.703
2008-03-01 213.543
2008-04-01 214.106
2008-05-01 215.287
2008-06-01 217.279
2008-07-01 219.102
2008-08-01 218.779
2008-09-01 218.846
2008-10-01 216.832
2008-11-01 212.923
2008-12-01 211.339
2009-01-01 211.959
2009-02-01 212.877
2009-03-01 212.643
2009-04-01 212.810
2009-05-01 213.050
2009-06-01 214.558
2009-07-01 214.774
2009-08-01 215.566
2009-09-01 215.911
2009-10-01 216.357
2009-11-01 216.859
2009-12-01 217.224
2010-01-01 217.587
2010-02-01 217.591
2010-03-01 217.729
2010-04-01 217.579
2010-05-01 217.224
2010-06-01 216.929
2010-07-01 217.597
2010-08-01 218.150
2010-09-01 218.372

 

 


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