Statistics Exam 2

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leveneTest(write what goes in here)

(dependent variable, independent variable, center for Levene's test)

describeBY(write what goes in here)

(dependent variable, independent variable, fast = TRUE or FALSE)

Type II error

Beta

the power curve provides the probability of

correctly rejecting the null hypothesis

null hypothesis

no effect or difference between the two values

parameters

numerical characteristics of a population

if the null value falls outside of the interval, we

reject Ho

fast = TRUE

speed up

Bias

systematic (built-in) error that pushes an estimate away from its true value

The test statistic produced in an ANOVA is a ratio of two variances: ___.

the between group variance and the within group variance

type 1 error

the error of rejecting the true null hypothesis

In the analysis of variance procedure (ANOVA), "factor" refers to

the independent variable

the sample statistic s is the point estimator of

σ(standard deviation)

alternative hypothesis: true mean is not equal 70

2 tailed test

The ANOVA procedure is a statistical approach for determining whether or not the means of

3 or more populations are equal

What is the basic idea behind the null hypothesis for Levene's test?

At the population level, the variances for the groups are the same.

as n increases, what happens to the standard error of the mean

SE decreases

Suppose we follow up a statistically significant 5-group ANOVA with an Unadjusted Fisher's LSD test using an alpha of 0.05. We aren't interested in all possible pairwise comparisons; we are really only interested in 3 of them. How can we manipulate the output we generate to get p-values that only take 3 pairwise comparisons into account and get the most power out of the post-hoc analyses?

Take the p-values of the comparisons of interest and multiply them by 3 before comparing them to 0.05.

According to the structural model approach to ANOVA, what does αj represent?

The impact of the treatment factor, or how levels of the independent variable can contribute to measurement differences on observations.

If all else remains the same, what happens to a confidence interval if the sample standard deviation gets narrower?

The interval gets narrower.

as n increases, the sampling distribution of the sample mean approaches what distribution?

a normal distribution

Precision

an indicator of how similarly a quantity is measured over repeated instances

if the confidence interval goes from 95% to 90%, the confidence interval for mu

becomes narrower

in interval estimation, as the n becomes larger, the interval estimate

becomes narrower

as the df for a t distribution increases, the difference between the t distribution and the standard normal distribution

becomes smaller

Distribution of means

compilation of all sample means that come from a particular sample size

what is point estimation

data from the sample is used to estimate the population parameter

as n increases, the MOE

decreases

In the ANOVA, treatments refer to

different levels of a factor

hypothesis testing

evaluates the likelihood of obtaining a particular outcome in a statistical experiment when we have a prior idea about what should have happen

n increases, the CI

gets narrower

as the test statistic becomes larger, the p-value

gets smaller

describe()

gives us basic summary statistics about our variable of interest

if a hypothesis is rejected at the 5% level of significance, what will happen at the 1% level of significance?

it may be rejected or retained

the smaller the type I error, the _______ the type II error will be

larger

t.test(variable, alternative, null value, conf.level)

runs t test function

The required condition for using an ANOVA procedure on data from several populations is that the

sampled populations have equal variances

the probability of committing a type I error when the null hypothesis is true as an equality is

the level of significance

the p-value is a probability that measures the support for

the null hypothesis

the probability distribution of all possible values of the sample mean is

the sampling distribution of x bar

When s is used to estimate σ, the margin of error is computed by using

the t distribution

confidence intervals

they are built around point estimates to provides a suggested range of values that could represent the true population value of what has been measured

paired = TRUE

turns on dependent t-test

alternative = "two.sided"

two tailed t test with Ha

the level of significance is the maximum allowable probability of

type I error

var-equal = TRUE

use equal variances approach

if the level of significance of a hypothesis test is raised from .01 to .05, the probability of a type II error

will decrease

the sample mean is the point estimate of

μ


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