16 Flashcards

1
Q

Central limit theorem?

A

If you have independent random variables, then the sampling distribution, X bar_n, will approach a normal distribution with mean mu and variables (sigma)^2/n, AS sample size (n) increases

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2
Q

When you take the variance of the sampling distribution of the means of k values, then the variance of one value is the same as?

A

Variance of the mean of k values/k

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3
Q

The mean of the distribution of the means of k values is equal to?

A

The mean of 1 value.

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4
Q

If the original population is normal, then the central limit theorem works regardless of?

A

The sample size.

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5
Q

If the original distribution looks like a mountain from a histogram, no outliers or long tails, then?

A

You can get away when n >= 30 and treat the sample mean approximately normal

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6
Q

Conditions to guarantee that the central limit theorem always work?

A

•Finite mean,
•finite standard deviation,
•values are bounded (but some non bounded distributions can also work)

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7
Q

Sample proportions are approximately?

A

Normal

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8
Q

Sample variance?

A

The estimator of variance where the sum of standard deviations of X_i from the mean of X divided by one less than the sample size.

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9
Q

In a sample variance, if the original population is drawn as normal, then the estimator of sample variance is?

A

Something related to a chi^2 distribution

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10
Q

If you take a bunch of means of the estimator of sample variance (s^2), then you get?

A

Close to the actual variance since s^2 is unbiased for sigma^2

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11
Q

Which is biased, s^ ^2 or s^2?

A

s^ ^2 as it underestimates on average. This occurs when the sum of the squared deviations are divided by just n.

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12
Q

!!!Sample standard deviation?

A
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13
Q

Sample quantiles

A

Random sample size of n from population with quantiles Q_p, 0 < p < 1, then there are point estimators for Q_p as Q^_p.

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14
Q

In sample mean, the sample size n determines?

A

How many values to average where n = k.

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