Question
The null hypothesis of Levene’s test is that this quantity is equal across multiple groups. The Gauss–Markov theorem establishes when ordinary least squares minimizes this quantity among all linear unbiased estimators. In regression, heteroscedasticity arises when this quantity for the error term depends on an explanatory variable. In the typical estimator of this quantity, an “n plus one” term divides the sum of squared distances from the mean in order to eliminate bias. This quantity for an estimator can be approximated by the square of the standard error, which is denoted “s.” For 10 points, name this quantity equal to standard deviation squared. ■END■
ANSWER: variance [accept sampling variance; accept standard deviation before “standard error” is read; prompt on sigma squared; prompt on sigma before “standard error” is read]
<Science - Other Science>
= Average correct buzz position
Buzzes
Player | Team | Opponent | Buzz Position | Value |
---|---|---|---|---|
Geoffrey Wu (UG) | Columbia A | Princeton | 32 | -5 |
Wade Rogers (DII) | Fordham | Maryland | 90 | 10 |
Mihir Shetty (UG) | Columbia B | Penn | 90 | 10 |
Kwame Aggrey (UG) | Rowan | Lehigh | 102 | 10 |
Ivy Chen (DII) | Princeton | Columbia A | 103 | 10 |