BNAD 277
there is interaction between factors A and B
Alternative hypothesis when using F test statistic: MSAB/MSE
normal
As DF increases, the Chi-square becomes more like this distribution:
test > critical value, p-value < alpha
For a chi square test, what are the conditions for rejecting Ho based on p-value approach and the critical value approach
the sum of all the observations and then dividing them by the total number of observations
In an ANOVA test, how do we calculate the grand mean
estimate
In inferential statistics, sample variance is an ___________ for population variance
SSTR/(c-1)
In one-way ANOVA, the MSTR is calculated as
randomized block design
In two-way ANOVA, if units within each block are randomly assigned to each of the treatments, then the design of the experiment is referred to as a
u1=u2=u3=u4
Null hypothesis to test whether or not there is a difference between treatments A, B, C and D. A sample of 8 observations has been randomly assigned to the 4 treatments:
N
The sum of expected frequencies in a goodness of fit test always equals
1
The sum of expected probabilities in a goodness of fit test is always
independent
The trials in a multi-nominal experiment must be
between
Treatment refers to
True
True or false: one way ANOVA analysis does not require that all means differ from one another
for any number or pairwise comparisons
Tukey's HSD method ensures that the probability of a type 1 error equals alpha
0
a skewness coefficient of what indicates that data are symmetric about its mean
the variability of stock return differs from 10%
an example of conducting statistical inference using the population variance would be when we want to examine whether
No because 0.0701 > .05
at the 5% significance level, can we conclude that the column means differ?
p=.089 and alpha= .05 what do you do
do not reject the null since p-value was greater than alpha
goodness of fit
for a multinomial experiment, this test is used to determine whether the sample proportions differ significantly from the hypothesized population proportions
do not reject the null
if p-value is greater than alpha
reject the null
if p-value is smaller than alpha
Reject the Null
if the confidence interval does not include "0" when the hypothesized value is "0" you must:
type 1 error increases as the number of pairwise comparisons increases
on disadvantage of Fisher's LSD method is the probability of committing a
p>.1
p-value where value of F is 1.7 with df's 2 and 5
1 (area)
the area under the chi squared distribution
as degrees of freedom get larger
the chi square distribution tends to the normal distribution as the
F distribution
the one way ANOVA test is based on what distribution
2
the test statistic for the jarque-bera test for normality follows the chi square distribution with df equal to
error
within refers to
chi squared distribution
Statistical inference concerning the population variance is based on the
F Distribution
Testing for the difference of two population variances is based on this distribution:
normal distribution
The chi square distribution is derived from this distribution
3 SSA + SSB + SSE
The number of components that make up the SST for a two-way ANOVA without interaction:
2
The number of qualitative variables in a test for independence
pi = ei / n
formula for pi, given ei and n:
you reject the null
if your test statistic is larger than your critical value
you do not reject the null
if your test statistic is smaller than your critical value
Sum of weighted sample variances of each treatment
in a one-way ANOVA, the error sum of squares (SSE) is the
variability
inference concerning the ratio of two population variances is used to compare relative
true
true or false: Tukey's honestly significant differences HSD method can accommodate unbalanced data
true
true or false: the formula for the confidence interval for the population variance is valid only when the random sample is drawn from a normally distributed population
true
true or false: the null hypothesis for the jarque-bera test consists of the joint hypothesis that the skewness and kurtosis coefficient are both equal to zero
compares population means based on two categorical variables or factors
two way ANOVA
3
ANOVA will be used in Ch. 13 when at least this many populations are under consideration
not so, or all population means are not equal
Alternative hypothesis for a two-way ANOVA without interaction
4, 45
An ANOVA procedure is applied to data obtained from 5 samples where each sample contains 10 observations. The DF's for the critical value of F are this
Mean Squared Error
MSE stands for:
columns
Typically factor A refers to rows or columns in a Two-way ANOVA:
population variance
We've been concerned with using inferential stats as it concerns a central measure of location, the mean. In chapter 11 we are concerned with inferential stats as it concerns this
T distribution
When you conduct a Fisher Confidence interval for the difference between two population means, we use which distribution
two possible outcomes
a binomial experiment is a series of N identical trials of a random experiment where each trial has
as peaked as the normal distribution
a kurtosis coefficient of zero means that the distribution is
two
a two-way anova test simultaneously examines the effect of how many factors on the population mean
5 or more
for the chi-square test of normality, the expected frequencies for each interval must be
reject the null and conclude that not all population means are equal
in ANOVA testing, if the ratio of the between-treatment variability to within-treatment variability is significatnly greater than 1, then we
two qualitative variables
the chi-square test of contingency table is a test of independence for
chi squared distribution
the confidence interval for the population standard deviation uses the
the value of the test statistic depends on how the data are grouped
the criticism of the goodness of fit test for normality is that
MSA/MSE
in a two-way ANOVA, the F statistic that determines whether significant difference exist between the factor A means is calculated as
MSB/MSB
in a two-way ANOVA, the F statistic that determines whether significant difference exist between the factor B means is calculated as
the variability between sample means
in one way ANOVA, between treatments variability is based on
between treatments variability and within treatments variability
in one-way ANOVA, two independent estimates of the common population variance, o^2, are estimated. these estimates are commonly referred to as
a weighted sum of the sample variances of each treatment
in one-way ANOVA, within treatments variability is based on
mean and standard deviation
in order to express the competing hypothesis for a goodness of fit test for normality, we specify the populations
2 or 3
in two-way ANOVA test, how many null hypotheses are tested?
4 SST=SSA + SSB + SSAB + SSE
in two-way ANOVA with interaction, we partition the total sum of squares into how many distinct components
3 SST = SSA + SSB + SSE
in two-way ANOVA without interaction, we partition the total sum of squares SST into how many distinct components
reduces
performing a one-way ANOVA test, instead of performing a series of two sample t-tests does what to the risk of incorrectly rejecting the null hypothesis
observed and expected frequencies
the goodness of fit in the goodness of fit test depends on
if difference exists between the means of three or more populations
we use ANOVA to determine
Ho: the data are normal Ha: the data are not normal
what is the null and alternative hypothesis for the goodness of fit test
Ho: S=0 and K=0
what is the null hypothesis for the Jarque-Bera test for normality
there is no interaction between factors A and B
which is a null hypothesis is applicable for a two-way ANOVA test with interaction