True & False Test
All bell-shaped symmetric curves are normal distributions for some mean and standard deviation
false
For the standard deviation of x-bar to be sigma over the square root of n, the population has to be normal
false
If all the values of the data are exactly the same, the mean equals 0
false
t-distributions always have a mean of 0 and a standard deviation of 1
false
the center of a confidence interval is the population parameter
false
A correlation of .75 indicates a relationship 3 times as linear as one with a correlation of .25
false
If the linear model is appropriate, the number of positive residuals will be the same as the numer of negative residuals
false
If the p-value is .015, then the probability that the null hypothesis is true is .015
false
If the sample has variance 0, the variance of the population is also zero. (variance is the standard deviation squared)
false
Increasing the probability of a Type II will increase the power of a hypothesis test, all else being the same
false
Sampling error can be eliminated only if a survey is both extremely well designed and extremely well conducted
false
a 90% confidence interval means that if 100 random samples are taken, 90 will have a confidence interval which indicates the population parameter
false
a correlation of 0.2 means that 20% of the points are highly correlated
false
a larger population size will decrease the length of the confidence interval
false
a smaller sample size will reduce the margin of error in a confidence interval
false
a useful approach to overcome bias in observational studies is to increase the sample size
false
distributions of t-statistics have less spread than the normal. They have less probability in the tails and more in the center than the normal
false
for a single list, outliers are defined starting at the median plus or minus 1.5 times the IQR
false
for the sampling distribution of p-hat to be approx normal, n has to be greater than or equal to 30
false
if a sample size is large enough, the necessarity for it to be a sRS is diminished
false
if bias is present in a sampling procedure, it can be overcome by dramatically increasing the sample size
false
if the p-value is less than the level of significance, then the null hypothesis is proven false
false
if the p-value of a test is .015, the probability that the Ho is true is 1.5%
false
if two events are mutually exclusive, the joint probability is the product of their probabilities
false
perfect correlation, that is, when the points lie exactly on a straight line, results in r
false
sample parameters are used to make inferences about population statistics
false
the law of large numbers says that when n is large enough, the sampling distribution of the sample mean is approximately normal even if the population is not normal.
false
the p-value of a hypothesis test taken when n=N is 0
false
the probability of a type II error will increase as the sample size n increases
false
the sampling distribution of p-hat has a standard deviation of square root of npq.
false
the variance of the set of a sample menas varies directly with the sample size and inversely with the population variance
false
tripling the sample size divides the size of the confidence interval by 3
false
when r=0, there is no relationship between x and y
false
when r=1, there is a perfect cause and effect relationship between the variables
false
when the null hypothesis is rejected. It is because it is not true.
false
you should always examine your data before picking a significance level or deciding on one or two-sided hypothesis test.
false
A distribution spread far to the right side is said to be right skewed
true
Bias has to do with the sampling distribution
true
In all normal distributions, the mean and median are equal
true
Sampling error is the difference between a population parameter and the value of the statistic, related to that parmeter, calculated from a sample
true
The IQR is more resistant to outliers than the range
true
a high confidence level can be obtained no matter the sample size
true
a smaller confidence level will reduce the margin of error
true
by controlling certain variables, blocking can make conclusions more specific in an experiment
true
choosing a significance level alpha sets the probability of a type I errer to exactly alpha
true
choosing a smaller level of significance results in a higher risk of type II error and a lower power
true
for a given population standard deviation, statistics from smaller samples have more variability
true
if all the values of the data are exactly the same, the standard deviation equals 0
true
if the standard deviation of a random variable is zero, it must be true that the random variable takes on only one value
true
in an experiment researchers decide how people are placed into different groups
true
increasing the significance levl will increase the power of a hyptohesis test, all else being the same
true
normal curves with different means are centered around different numbers
true
provided the populaiton is significantly larger than the sample size, the spread of a sampling distribution does not depend on the pop size
true
range of the sample is never greater than the range of the population
true
sampling error is usually smaller when the sample size is larger
true
t-distributions are bell-shaped and symmetric
true
tests of significance (hypothesis tests) are designed to measure the strength of evidence against Ho
true
the area under a normal curve is always equal to one, regardless of what the mean and standard deviation are
true
the area under the t-distribution is 1
true
the area under the z curve between 0 and 2 is half the area between -2 and +2
true
the central limit theorem says that when n is large enough, the sampling distribution of the sample mean is approximately normal even if the population is not normal.
true
the correlation and slope of the regression line have the same sign
true
the greater the degrees of freedom, the closer the t-distribution is to the z-distribution
true
the higher the df, the narrower the tails of the t-distribution
true
the p-value is a conditional probability
true
the p-value of a test is the probability of obtaining a results as extreme or more extreme assuming the null hypothesis is true
true
the sampling distribution of the sample mean is normal if the population is normal.
true
the square of the correlation measures the proportion of the y variability predictable from a linear relationship with x.
true
the standard deviation is never negative
true
the standard deviation of a distribution can never be negative
true
the standard deviation of the sampling distribution of sample means varies directly with the standard deviation of the population and inversely with the square root of sample size
true
while the range is affected by outliers, the IQR is usually not
true