Deck 10: Regression With Time Series Data: Stationary Variables

Full screen (f)
exit full mode
Question
If you have a times series data set with 100 years worth of data that you use to estimate a distributed lag model of order 3,how many degrees of freedom will you have for hypothesis testing on estimated coefficients?

A)93
B)95
C)99
D)100
Use Space or
up arrow
down arrow
to flip the card.
Question
When a lagged dependent variable is included as a regressor,we must use a weaker form of assumption TSMR2 that allows the error term to be correlated with future values of explanatory variables,but not present or past values.What implications does this weaker assumption have for our regressors?

A)biased,but consistent
B)unbiased,but no longer BLUE
C)unbiased,but no longer linear
D)biased,but with minimum variance
Question
Which of the following is NOT a reason nonlinear least squares is used to estimate an AR(1)model?

A)linear least squares is not possible since the transformation that allows the new error term to be uncorrelated is no longer linear in parameters
B)using OLS to estimate the untransformed model provides incorrect standard errors
C)the algorithmic nonlinear optimization is less complicated to compute when error terms are correlated
D)minimizing the sum of squares of uncorrelated error terms produces an estimator that is unbiased and consistent
Question
When using the LM test for serial correlation,what is the null hypothesis?

A)it depends on the model specification
B)no serial correlation is present
C)statistically significant serial correlation with the first lag
D)statistically significant serial correlation with unspecified lag
Question
Using the notation ARDL(p,q)what does q represent?

A)the number of lagged dependent variables included as explanatory variables
B)the number of lagged explanatory variables included
C)the frequency of the time series
D)the degree or integration in the error term
Question
Which of the following is an example of an autoregressive distributed lag model?

A)yt = f(xt,xt-1,xt-2……. )
B)yt = f(yt-1,xt,xt-1,xt-2…)
C)yt = f(xt,x2t,x3t)
D)yt = f(xt)+ g(et-1)
Question
Which of the following is an AR(3)model?

A)yt = δ\delta + θ\theta 1yt-1+ θ\theta 2yt-2 + θ\theta 3yt-3 + δ\delta 0xt + δ\delta 1xt-1+ δ\delta 2xt-2+ δ\delta 3xt-3 + vt
B)yt = δ\delta + θ\theta 1yt-1+ δ\delta 0xt + δ\delta 1xt-1+ δ\delta 2xt-2+ δ\delta 3xt-3 + vt
C)yt = δ\delta + θ\theta 1yt-1+ θ\theta 2yt-2 + θ\theta 3yt-3 + δ\delta 0xt + δ\delta 1xt-1+ vt
D)yt = δ\delta + θ\theta 1yt-1+ θ\theta 2yt-2 + θ\theta 3yt-3 + vt
Question
Using the notation ARDL(p,q)what does p represent?

A)the number of lagged dependent variables included as explanatory variables
B)the number of lagged explanatory variables included
C)the frequency of the time series
D)the degree or integration in the error term
Question
Which of the following is an ARDL(3,3)model?

A)yt = δ\delta + θ\theta 1yt-1+ θ\theta 2yt-2 + θ\theta 3yt-3 + δ\delta 0xt + δ\delta 1xt-1+ δ\delta 2xt-2+ δ\delta 3xt-3 + vt
B)yt = δ\delta + θ\theta 1yt-1+ δ\delta 0xt + δ\delta 1xt-1+ δ\delta 2xt-2+ δ\delta 3xt-3 + vt
C)yt = δ\delta + θ\theta 1yt-1+ θ\theta 2yt-2 + θ\theta 3yt-3 + δ\delta 0xt + δ\delta 1xt-1+ vt
D)yt = δ\delta + θ\theta 1yt-1+ θ\theta 2yt-2 + θ\theta 3yt-3 + δ\delta 0xt + vt
Question
Which of the following is not a valid criterion for choosing p and q in an ARDL model?

A)fewest number of lags that eliminates serial correlation
B)statistical significance of coefficient estimates
C)minimization of AIC and SC
D)maximization of R2
Question
If you use a times series data set with 100 years worth of data to estimate a distributed lag model of order 5,how many observations will you have for estimation?

A)100
B)5
C)95
D)105
Question
Which model below has an autocorrelated error term?

A)yt = f(xt,xt-1,xt-2……. )
B)yt = f(yt-1,xt,xt-1,xt-2…)
C)yt = f(xt,x2t,x3t)
D)yt = f(xt)+ g(et-1)
Question
Which of the following is NOT true of Newey-West standard errors?

A)allows valid inference despite the presence of serial correlation
B)does not require knowledge of structure of serial correlation
C)valid when estimated using stationary data
D)always produce smaller standard error estimates,which makes them the BLUE estimator
Question
When autocorrelation is present,which assumption of the linear regression model is incorrect?

A)E(et)=0
B)var (et)= σ\sigma 2
C)cov(et,es)=0,t≠s
D)et N(0, σ\sigma 2)
Question
What are the consequences of ignoring or failing to recognize serial correlation?

A)biased,but consistent
B)unbiased,but no longer BLUE
C)unbiased,but no longer linear
D)biased,but with minimum variance
Question
Finite distributed lag models are most useful for

A)forecasting and economic policy analysis
B)testing hypotheses and measuring economic dynamics
C)measuring impacts and optimizing economic outcomes
D)measuring autocorrelation and autoregressive dynamics
Question
Which of the following is an ARDL (1,3)model?

A)yt = δ\delta + θ\theta 1yt-1+ θ\theta 2yt-2 + θ\theta 3yt-3 + δ\delta 0xt + δ\delta 1xt-1+ δ\delta 2xt-2+ δ\delta 3xt-3 + vt
B)yt = δ\delta + θ\theta 1yt-1+ δ\delta 0xt + δ\delta 1xt-1+ δ\delta 2xt-2+ δ\delta 3xt-3 + vt
C)yt = δ\delta + θ\theta 1yt-1+ θ\theta 2yt-2 + θ\theta 3yt-3 + δ\delta 0xt + δ\delta 1xt-1+ vt
D)yt = δ\delta + θ\theta 1yt-1+ θ\theta 2yt-2 + θ\theta 3yt-3 + δ\delta 0xt + vt
Question
Which assumption is most likely to be violated with times series data:

A)E(et)=0
B)var (et)= σ\sigma 2
C)cov(et,es)=0,t≠s
D)et N(0, σ\sigma 2)
Question
What is second order sample autocorrelation?

A)correlation between a mean and the second moment of the sample distribution
B)a test statistic distributed N(0, σ\sigma )
C)correlation between observations that are two time periods apart
D)correlation between the dependent variable and a squared explanatory variable
Question
When performing a LM test for serial correlation,how is the test statistic distributed when the null hypothesis is true?

A) χ\chi 2
B)tn-1
C)F
D)z
Question
AR models are primarily used for

A)forecasting
B)smoothing data over time
C)policy evaluation
D)hypothesis testing
Question
How are AR and exponential smoothing models similar?

A)both use only previous observations of the same variable for forecasting future values
B)both incorporate past information in the form of moving averages of multiple varaibles over time
C)both incorporate information on current values of all relevant variables
D)they generate forecasts with identically distributed expected values
Question
Which of the following is equivalent to L3yt?

A)y t-3
B)3L2 y t
C)Lyt L2yt
D)Ly3t
Question
Which of the following is an ARDL(2,0)model?

A)yt = δ\delta + θ\theta 1yt-1+ θ\theta 2yt-2 + θ\theta 3yt-3 + δ\delta 0xt + δ\delta 1xt-1+ δ\delta 2xt-2+ δ\delta 3xt-3 + vt
B)yt = δ\delta + θ\theta 1yt-1+ δ\delta 0xt + δ\delta 1xt-1+ δ\delta 2xt-2+ δ\delta 3xt-3 + vt
C)yt = δ\delta + θ\theta 1yt-1+ θ\theta 2yt-2 + θ\theta 3yt-3 + δ\delta 0xt + δ\delta 1xt-1+ vt
D)yt = δ\delta + θ\theta 1yt-1+ θ\theta 2yt-2 + θ\theta 3yt-3 + δ\delta 0xt + vt
Unlock Deck
Sign up to unlock the cards in this deck!
Unlock Deck
Unlock Deck
1/24
auto play flashcards
Play
simple tutorial
Full screen (f)
exit full mode
Deck 10: Regression With Time Series Data: Stationary Variables
1
If you have a times series data set with 100 years worth of data that you use to estimate a distributed lag model of order 3,how many degrees of freedom will you have for hypothesis testing on estimated coefficients?

A)93
B)95
C)99
D)100
A
2
When a lagged dependent variable is included as a regressor,we must use a weaker form of assumption TSMR2 that allows the error term to be correlated with future values of explanatory variables,but not present or past values.What implications does this weaker assumption have for our regressors?

A)biased,but consistent
B)unbiased,but no longer BLUE
C)unbiased,but no longer linear
D)biased,but with minimum variance
A
3
Which of the following is NOT a reason nonlinear least squares is used to estimate an AR(1)model?

A)linear least squares is not possible since the transformation that allows the new error term to be uncorrelated is no longer linear in parameters
B)using OLS to estimate the untransformed model provides incorrect standard errors
C)the algorithmic nonlinear optimization is less complicated to compute when error terms are correlated
D)minimizing the sum of squares of uncorrelated error terms produces an estimator that is unbiased and consistent
C
4
When using the LM test for serial correlation,what is the null hypothesis?

A)it depends on the model specification
B)no serial correlation is present
C)statistically significant serial correlation with the first lag
D)statistically significant serial correlation with unspecified lag
Unlock Deck
Unlock for access to all 24 flashcards in this deck.
Unlock Deck
k this deck
5
Using the notation ARDL(p,q)what does q represent?

A)the number of lagged dependent variables included as explanatory variables
B)the number of lagged explanatory variables included
C)the frequency of the time series
D)the degree or integration in the error term
Unlock Deck
Unlock for access to all 24 flashcards in this deck.
Unlock Deck
k this deck
6
Which of the following is an example of an autoregressive distributed lag model?

A)yt = f(xt,xt-1,xt-2……. )
B)yt = f(yt-1,xt,xt-1,xt-2…)
C)yt = f(xt,x2t,x3t)
D)yt = f(xt)+ g(et-1)
Unlock Deck
Unlock for access to all 24 flashcards in this deck.
Unlock Deck
k this deck
7
Which of the following is an AR(3)model?

A)yt = δ\delta + θ\theta 1yt-1+ θ\theta 2yt-2 + θ\theta 3yt-3 + δ\delta 0xt + δ\delta 1xt-1+ δ\delta 2xt-2+ δ\delta 3xt-3 + vt
B)yt = δ\delta + θ\theta 1yt-1+ δ\delta 0xt + δ\delta 1xt-1+ δ\delta 2xt-2+ δ\delta 3xt-3 + vt
C)yt = δ\delta + θ\theta 1yt-1+ θ\theta 2yt-2 + θ\theta 3yt-3 + δ\delta 0xt + δ\delta 1xt-1+ vt
D)yt = δ\delta + θ\theta 1yt-1+ θ\theta 2yt-2 + θ\theta 3yt-3 + vt
Unlock Deck
Unlock for access to all 24 flashcards in this deck.
Unlock Deck
k this deck
8
Using the notation ARDL(p,q)what does p represent?

A)the number of lagged dependent variables included as explanatory variables
B)the number of lagged explanatory variables included
C)the frequency of the time series
D)the degree or integration in the error term
Unlock Deck
Unlock for access to all 24 flashcards in this deck.
Unlock Deck
k this deck
9
Which of the following is an ARDL(3,3)model?

A)yt = δ\delta + θ\theta 1yt-1+ θ\theta 2yt-2 + θ\theta 3yt-3 + δ\delta 0xt + δ\delta 1xt-1+ δ\delta 2xt-2+ δ\delta 3xt-3 + vt
B)yt = δ\delta + θ\theta 1yt-1+ δ\delta 0xt + δ\delta 1xt-1+ δ\delta 2xt-2+ δ\delta 3xt-3 + vt
C)yt = δ\delta + θ\theta 1yt-1+ θ\theta 2yt-2 + θ\theta 3yt-3 + δ\delta 0xt + δ\delta 1xt-1+ vt
D)yt = δ\delta + θ\theta 1yt-1+ θ\theta 2yt-2 + θ\theta 3yt-3 + δ\delta 0xt + vt
Unlock Deck
Unlock for access to all 24 flashcards in this deck.
Unlock Deck
k this deck
10
Which of the following is not a valid criterion for choosing p and q in an ARDL model?

A)fewest number of lags that eliminates serial correlation
B)statistical significance of coefficient estimates
C)minimization of AIC and SC
D)maximization of R2
Unlock Deck
Unlock for access to all 24 flashcards in this deck.
Unlock Deck
k this deck
11
If you use a times series data set with 100 years worth of data to estimate a distributed lag model of order 5,how many observations will you have for estimation?

A)100
B)5
C)95
D)105
Unlock Deck
Unlock for access to all 24 flashcards in this deck.
Unlock Deck
k this deck
12
Which model below has an autocorrelated error term?

A)yt = f(xt,xt-1,xt-2……. )
B)yt = f(yt-1,xt,xt-1,xt-2…)
C)yt = f(xt,x2t,x3t)
D)yt = f(xt)+ g(et-1)
Unlock Deck
Unlock for access to all 24 flashcards in this deck.
Unlock Deck
k this deck
13
Which of the following is NOT true of Newey-West standard errors?

A)allows valid inference despite the presence of serial correlation
B)does not require knowledge of structure of serial correlation
C)valid when estimated using stationary data
D)always produce smaller standard error estimates,which makes them the BLUE estimator
Unlock Deck
Unlock for access to all 24 flashcards in this deck.
Unlock Deck
k this deck
14
When autocorrelation is present,which assumption of the linear regression model is incorrect?

A)E(et)=0
B)var (et)= σ\sigma 2
C)cov(et,es)=0,t≠s
D)et N(0, σ\sigma 2)
Unlock Deck
Unlock for access to all 24 flashcards in this deck.
Unlock Deck
k this deck
15
What are the consequences of ignoring or failing to recognize serial correlation?

A)biased,but consistent
B)unbiased,but no longer BLUE
C)unbiased,but no longer linear
D)biased,but with minimum variance
Unlock Deck
Unlock for access to all 24 flashcards in this deck.
Unlock Deck
k this deck
16
Finite distributed lag models are most useful for

A)forecasting and economic policy analysis
B)testing hypotheses and measuring economic dynamics
C)measuring impacts and optimizing economic outcomes
D)measuring autocorrelation and autoregressive dynamics
Unlock Deck
Unlock for access to all 24 flashcards in this deck.
Unlock Deck
k this deck
17
Which of the following is an ARDL (1,3)model?

A)yt = δ\delta + θ\theta 1yt-1+ θ\theta 2yt-2 + θ\theta 3yt-3 + δ\delta 0xt + δ\delta 1xt-1+ δ\delta 2xt-2+ δ\delta 3xt-3 + vt
B)yt = δ\delta + θ\theta 1yt-1+ δ\delta 0xt + δ\delta 1xt-1+ δ\delta 2xt-2+ δ\delta 3xt-3 + vt
C)yt = δ\delta + θ\theta 1yt-1+ θ\theta 2yt-2 + θ\theta 3yt-3 + δ\delta 0xt + δ\delta 1xt-1+ vt
D)yt = δ\delta + θ\theta 1yt-1+ θ\theta 2yt-2 + θ\theta 3yt-3 + δ\delta 0xt + vt
Unlock Deck
Unlock for access to all 24 flashcards in this deck.
Unlock Deck
k this deck
18
Which assumption is most likely to be violated with times series data:

A)E(et)=0
B)var (et)= σ\sigma 2
C)cov(et,es)=0,t≠s
D)et N(0, σ\sigma 2)
Unlock Deck
Unlock for access to all 24 flashcards in this deck.
Unlock Deck
k this deck
19
What is second order sample autocorrelation?

A)correlation between a mean and the second moment of the sample distribution
B)a test statistic distributed N(0, σ\sigma )
C)correlation between observations that are two time periods apart
D)correlation between the dependent variable and a squared explanatory variable
Unlock Deck
Unlock for access to all 24 flashcards in this deck.
Unlock Deck
k this deck
20
When performing a LM test for serial correlation,how is the test statistic distributed when the null hypothesis is true?

A) χ\chi 2
B)tn-1
C)F
D)z
Unlock Deck
Unlock for access to all 24 flashcards in this deck.
Unlock Deck
k this deck
21
AR models are primarily used for

A)forecasting
B)smoothing data over time
C)policy evaluation
D)hypothesis testing
Unlock Deck
Unlock for access to all 24 flashcards in this deck.
Unlock Deck
k this deck
22
How are AR and exponential smoothing models similar?

A)both use only previous observations of the same variable for forecasting future values
B)both incorporate past information in the form of moving averages of multiple varaibles over time
C)both incorporate information on current values of all relevant variables
D)they generate forecasts with identically distributed expected values
Unlock Deck
Unlock for access to all 24 flashcards in this deck.
Unlock Deck
k this deck
23
Which of the following is equivalent to L3yt?

A)y t-3
B)3L2 y t
C)Lyt L2yt
D)Ly3t
Unlock Deck
Unlock for access to all 24 flashcards in this deck.
Unlock Deck
k this deck
24
Which of the following is an ARDL(2,0)model?

A)yt = δ\delta + θ\theta 1yt-1+ θ\theta 2yt-2 + θ\theta 3yt-3 + δ\delta 0xt + δ\delta 1xt-1+ δ\delta 2xt-2+ δ\delta 3xt-3 + vt
B)yt = δ\delta + θ\theta 1yt-1+ δ\delta 0xt + δ\delta 1xt-1+ δ\delta 2xt-2+ δ\delta 3xt-3 + vt
C)yt = δ\delta + θ\theta 1yt-1+ θ\theta 2yt-2 + θ\theta 3yt-3 + δ\delta 0xt + δ\delta 1xt-1+ vt
D)yt = δ\delta + θ\theta 1yt-1+ θ\theta 2yt-2 + θ\theta 3yt-3 + δ\delta 0xt + vt
Unlock Deck
Unlock for access to all 24 flashcards in this deck.
Unlock Deck
k this deck
locked card icon
Unlock Deck
Unlock for access to all 24 flashcards in this deck.