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Decks in this class (20)

Lecture 1
What is econometrics 1,
What type of relationships is eco...,
What do econometric methods allow...
18  cards
Lecture 2
What two things can regression an...,
What is y in the simple linear re...,
What is x in the linear regressio...
28  cards
Lecture 3
What is the systematic and stocha...,
Recap of the prf with diagram and...,
What does b1represent 2
20  cards
Lecture 4
Under reasonable assumptions what...,
What is this property of efficien...,
Why is an estimator with the mini...
22  cards
Lecture 5
What does the mutiple regression ...,
Example of a multiple regression ...,
In the education experience examp...
20  cards
Lecture 6
What is assumption 1 for multiple...,
Assumption 2 for mlr mlr2 2,
Assumption mlr3 no perfect collin...
21  cards
Lecture 7
Example hypothesis demand theory 1,
Example mlr for demand theory 2,
What needs to be done to test the...
30  cards
Lecture 8-will be in exam
How to test the two tailed hypoth...,
How to decide wther to reject or ...,
Test statistic equation 3
15  cards
Lecture 9
What is the chance that we incorr...,
How many types of errors can be m...,
What is a type i error 3
32  cards
Lecture 10- up to slide 8, f test in exam
What are f tests used to test 1,
What conditions are required to u...,
Simply what is an f test 3
36  cards
Lecture 11-complete
What does linear in parameters me...,
Do variables have to linear to ab...,
What can definitely not be accomo...
29  cards
Lecture 12- last 3 slides dummy variables in exam
When the qualitative information ...,
Suppose we are interested in the ...,
In econometrics such binary varia...
16  cards
Lecture 13
What does over specification mean 1,
What does under specification mean 2,
Suppose that the true model is 3
15  cards
Lecture 14- Revision
For an ols estimator to be unbias...,
In contrast what is the only thin...,
Based on the requirements what do...
17  cards
Lecture 16
Gauss markov assumption mlr5 homo...,
Under mlr1 to mlr5 what is the eq...,
What do we use the for 3
15  cards
Lecture 17 look over
What are the two tests that can b...,
The white test hypotheses 2,
Test statistic for white test 3
6  cards
Lecture 19
What is required to investigate c...,
How are many panel data sets crea...,
What is the relationship between ...
15  cards
Lecture 20
If the explanatory variable s of ...,
Why is having data from more time...,
When working with more than 2 tim...
16  cards
Lecture 21
0  cards
Exam Paper Stuff
Section a 1,
Section b 2
2  cards

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Applied Econometrics

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