(PM) Statistics - Method Selection Flashcards

1
Q

Testing one mean and the standard deviation of the population is given.

A

One-Sample Z-test

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2
Q

Testing one mean and the standard deviation of the population is NOT given.

A

One-Sample T-test

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3
Q

Testing one proportion

A

One-Sample Proportion test

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4
Q

Testing one variance

A

One-Sample Variance test

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5
Q

Comparing two independent means, with equal variances

A

Independent Sample T-test. T~(N1+N2-2)

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6
Q

Comparing two independent means, with UNequal variances

A

Independent Sample T-test. T~(m)

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7
Q

T~(m)

A

Value of the smallest sample size minus 1

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8
Q

Comparing two dependent means on equality

A

Matched Pairs T-test. H0: P1 - P2 = 0

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9
Q

Comparing two dependent means with hinge

A

Matched Pairs T-test. H0: P1 - P2 = h

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10
Q

Comparing two variances on equality

A

Two-Sample Variance test. H0: Variance(1) / Variance(2) = 1

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11
Q

Comparing to variances with hinge

A

Two-Sample Variance test. H0: Variance(1) / Variance(2) = h

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12
Q

… Model with one independent variable

A

Simpel lineair regression model

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13
Q

… Model with two or more independent variables

A

Multiple lineair regression model

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14
Q

What are the four regression assumptions?

A
  1. The residuals are 0 on average
  2. The residuals are normally distributed
  3. The residuals are independent from each other
  4. The residuals are equally spread, they are homoscedastic
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15
Q

What is the first regression assumption?

A

The residuals are zero on average, their expectation (E) is zero (0).

This assumption is violated if a strong lineair correlation (collinearity) between the independent variables is observed. You can detect this by seeing if there’s a 0.8 or higher correlation between independent variables

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16
Q

What is the second regression assumption?

A

The residuals are distributed normally.

This assumption is violated if the residuals are not normally distributed. You can detect this using a residual plot or a histogram and check for normal distribution or for outliers

17
Q

What is the third regression assumption?

A

The residuals are independent from each other.

This assumption has two violations.

1 - This assumption is violated if the value of the residuals is dependent on the value of previous residuals. You can test for this by performing a Durbin Watson test for autocorrelation.

2- This assumption is violated if the relation between dependent and independent variables is not lineair. You can check this by plotting the residuals and predicted values on a graph. If the resulting graph has a curve, a rounding or other form this assumption is violated

18
Q

What is the fourth regression assumption?

A

The residuals have equal spreading, they are homoscedastic.

This assumption is violated of the residuals differ, if they are is heteroscedastic. You can detect this by plotting the residuals and predicted variables on a graph. Here, you have to check whether the spread from left to right is the same.

19
Q

How to determine the rejection region for the positive autocorrelation?

A

If D ≤ D(a,L), then: conclude H1
If D(a,U) < D < D(a,L), then: ‘no conclusion’
If D ≥ D(a,U), then: conclude H0

20
Q

How to determine the rejection region for the negative autocorrelation?

A

If D ≥ 4 - D(a,L), then: conclude H1
If 4 - D(a,L) < D < 4 - D(a,U), then: ‘no conclusion’
If D ≤ 4 - D(a,U), then: conclude H0

21
Q

How to determine the rejection region for omnidirectional autocorrelation?

A

If D ≤ D(a/2,L) OR if D ≥ 4 - D(a/2,L), then: conclude H1

If D(a/2,L) < D < D(a/2,U), OF if 4 - D(a/2,U) < D < 4 - D(a/2,L), then: ‘no conclusion’

If D ≥ D(a/2,U) OR if D ≤ 4 - D(a/2,U), then: conclude H0

22
Q

What are the conditions for a function to be a probability density function?

A
  1. The chance of X is not below 0 for the entire range of X.

2. The sum of the probabilities for x are 1.

23
Q

What to write when asked to fill the basic assumption?

A

Write down the formula and fill in the variable names, not it’s values

E.g. Y = B0 + B1 * D(age) + e(residuals), with E(e) = 0

24
Q

What to write when asked to fill the sample regression equation?

A

Write down the formula and fill in the variables, not variable names.

E.g. ŷ = 0.8345 - 0.3451 * X

25
Q

How should you generally treat the left side of a test?

A

Use the negative of the value from the table. Except for the F-test.

26
Q

What is the order of the positive Durbin Watson outcomes spread?

A

Left: H1, there is positive autocorrelation
Middle: Inconclusive
Right: H0, no positive autocorrelation

27
Q

What is the order of the negative Durbin Watson outcomes spread?

A

Left: H0, no negative autocorrelation
Middle: Inconclusive
Right: H1, there is negative autocorrelation

28
Q

What is the order of the two-sided Durbin Watson outcomes spread?

A

Left: H1, there is autocorrelation
Second to left: Inconclusive

Middle: H0, there is no autocorrelation

Second to right: Inconclusive
Right: H1, there is autocorrelation

29
Q

Give a couple options on to solve the issue of autocorelation

A
  1. Include time itself in the model. Meaning, regress Y on X1, X2, etc, and on X(t)
  2. Use the differences between the values of Y and X(i) over time, instead of using the absolute values themselves.
30
Q

How to calculate X-bar rejection?

A

Mu + Z(a) * Standard error

With Standard error is the calculation below the divider

31
Q

How to determine type II error?

A
  1. Calculate the X-bar for the rejection region
  2. Fill the X-bar in the Z formula
  3. Find the P-value in the Z-table