M10 - Multiple Regression Flashcards

1
Q

Problem 1 in multiple regr
Omitted variables bias

“Bias of the estimations of b1, when regressor … is …. and there is positive/ negative …. of both regressors”

Positive bias:
Negative bias:

A

Problem 1 in multiple regr
Omitted variables bias

“Bias of the estimations of b1, when regressor X2 is OMITTED and there is positive/ negative CORRELATION of both regressors”

Positive bias: b2>0 and corr(x1,x2) > 0
Negative bias: b2 <0 and corr() <0

How well did you know this?
1
Not at all
2
3
4
5
Perfectly
2
Q

Prob 2: Multi-collinwarity

What is it?

Disadv
Which measures?

A

High degree of correlation between explanatory variables (correlations > .9)

  • inaccurate estimates
  • high standard errors

Test with VIF - Variance inflation factor
Or tolerance

How well did you know this?
1
Not at all
2
3
4
5
Perfectly
3
Q

Tolerance

A

Are there correlations with other regressors?

Yes, if tolerance < 0.2/0.1 and VIF > 10

How well did you know this?
1
Not at all
2
3
4
5
Perfectly
4
Q

VIF

A

Variance inflation factor

How much has the variance of an estimated coeff increased due to collinearity?

If totally uncorr:1
Rises with correlation

How well did you know this?
1
Not at all
2
3
4
5
Perfectly
5
Q

Solution for multi- collinearity

A
  • eliminate critical variables –> loose info
  • increase sample size –> not always possible
  • leave it as it is
  • aggregate the critival IV into 1 factor
How well did you know this?
1
Not at all
2
3
4
5
Perfectly
6
Q

Prob 3: too many regressors?

A

Better include too many variables than too less

How well did you know this?
1
Not at all
2
3
4
5
Perfectly
7
Q

Standardiuation

When?
For what?

Gleichung

A

To make coeff comparable

When they have different units

How well did you know this?
1
Not at all
2
3
4
5
Perfectly
8
Q

Can OLS also estimate non-linear relships?

A

Yes, if the relship is linear in the parameters.

E.g.:
Log transforation
Quadratic terms
Interaction terms

How well did you know this?
1
Not at all
2
3
4
5
Perfectly
9
Q

Logarithmic transformation

Model 1 -3

A

Log transf makes coeff linear

  • -> we can estimat it using OLS
  • -> test the restriction b1+b2 =1

Model1:
Lny = b0+b1 lnx + u
B1 is the % change in y when x is changed by 1% –> ELASTICITY

Model 2:
Lny = b0+b1x + u
B1 is the approx % change in y when x is chabged by 1 unit

Model 3:
Lny = b0+b1 lnx + u
B1 is the change in y resulting from a multiplication of x with e

How well did you know this?
1
Not at all
2
3
4
5
Perfectly
10
Q

Why determine elasticity rather than absolute effect size?

Elasticity is a …. quantity.
–> no …. of …. have to be taken into account

–> facilitates …. and improves …..

A

Why determine elasticity rather than absolute effect size?

Elasticity is a DIMENSIONLESS quantity.
–> no UNITS of MEASUREMENT have to be taken into account

–> facilitates INTERPRETATION and improves COMPARABILITY

How well did you know this?
1
Not at all
2
3
4
5
Perfectly
11
Q

Log transformation

What kinds of variables are included with transf?
Which are included withiut transf?

Adv:

A

Include with tranfs/ in log form:

  • strictly positive variables (money, income)
  • indication of sizes (population)

Include withiut transf?

  • percentage variables
  • time periods

A logarithmic transformation turns a right-skewed distribution into a normal distribution.

How well did you know this?
1
Not at all
2
3
4
5
Perfectly
12
Q

Rj² = 1 means what

A

means that the variable can be expressed as a linear combination of all other variables and is therefore not needed

How well did you know this?
1
Not at all
2
3
4
5
Perfectly
13
Q

Specification in multiple regression

  • problems with that
A
  • which variables are included/ignored?
  • whats their funtcional relship?
  • are they correlated among each other?
  • multi- collinearity
  • omitted variable bias
  • too many regressors
  • wrong functional form
How well did you know this?
1
Not at all
2
3
4
5
Perfectly
14
Q

Transformation

what does it mean when beta1 + beta 2 are

  • smaller than 1
  • equal to 1
  • bigger than 1
A

=1 constant economies of scale

How well did you know this?
1
Not at all
2
3
4
5
Perfectly