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Test your basic knowledge |
AP Statistics Vocab
Start Test
Study First
Subjects
:
statistics
,
ap
Instructions:
Answer 50 questions in 15 minutes.
If you are not ready to take this test, you can
study here
.
Match each statement with the correct term.
Don't refresh. All questions and answers are randomly picked and ordered every time you load a test.
This is a study tool. The 3 wrong answers for each question are randomly chosen from answers to other questions. So, you might find at times the answers obvious, but you will see it re-enforces your understanding as you take the test each time.
1. A scatterplot shows an association that is this if there is little scatter around the underlying relationship
simulation
center
frequency table
strength
2. Gives a value in 'y-units per x-unit'; changes of one unit in x are associated with changes of b1 units in predicted values of y
slope
multistage sample
normal probability plot
parameter
3. A variable that is not explicitly part of a model but affects the way the variables in the model appear to be related
dotplot
standard deviation
lurking variable
simpson's paradox
4. Done to eliminate units; values can be compared and combined even if the original variables had different units and magnitudes
re-express data
standardizing
census
standardized value
5. The best defense against bias - in which each individual is given a fair - random chance of selection
randomization
confounded
systematic sample
placebo effect
6. The lower of this is the value with a quarter of the data below it; the upper of this has a quarter of the data above it
matched
population parameter
re-express data
quartile
7. An event is this if we know what outcomes could happen - but not which particular values will happen
retrospective study
random
histogram
variance
8. In a normal model - about 68% of values fall within 1 standard deviation of the mean - about 95% fall within 2 standard deviations of the mean - and about 99.7% fall within 3 standard deviations of the mean
frequency table
68-95-99.7 rule
shape
slope
9. A sampling design in which entire groups are chosen at random
voluntary response bias
bimodal
cluster sample
sampling variability
10. If data consist of two or more groups that have been thrown together - it is usually best to fit different linear models to each group than to try to fit a single model to all of the data
pie chart
subset
matched
population
11. Any individual associated with an experiment who is not aware of how subjects have been allocated to treatment groups
least squares
blinding
level
data
12. Systematically recorded information - whether numbers or labels - together with its context
bar chart
data
bias
model
13. Found by summing all the data values and dividing by the count
mean
sample size
sampling frame
response
14. These are hard to generate - but several websites offer an unlimited supply of equally likely random values
outlier
percentile
random numbers
scatterplots
15. Control - randomize - replicate - block
confounded
quantitative variable
principles of experimental design
matched
16. Tells how many standard deviations a value is from the mean; have a mean of zero and a standard deviation of one
random numbers
changing center and spread
simulation component
z-score
17. All experimental units have an equal chance of receiving any treatment
random
completely randomized design
experiment
undercoverage
18. The square of the correlation between y and x; gives the fraction of the variability of y accounted for by the least squares linear regression on x; an overall measure of how successful the regression is in linearly relating y to x
r2
simple random sample
uniform
outlier
19. Bias introduced to a sample when a large fraction of those sampled fails to respond
nonresponse bias
population parameter
normal percentile
outliers
20. Consists of the individuals who are conveniently available
convenience sample
retrospective study
response
z-score
21. Shows the relationship between two quantitative variables measured on the same cases
scatterplots
nonresponse bias
lurking variable
confounded
22. The parts of a distribution that typically trail off on either side; they can be characterized as long or short
rescaling
tails
percentile
placebo
23. A variable whose levels are controlled by the experimenter
unimodal
double-blind
factor
scatterplots
24. Displays the 5-number summary as a central box with whiskers that extend to the non-outlying data values
case
sampling frame
standardizing
boxplot
25. This criterion specifies the unique line that minimizes the variance of the residuals or - equivalently - the sum of the squared residuals
least squares
blinding
population
intercept
26. The sequence of several components representing events that we are pretending will take place
undercoverage
trial
tails
sampling variability
27. Any attempt to force a sample to resemble specified attributes of the population
matching
quantitative variable
bar chart
simulation component
28. A hump or local high point in the shape of the distribution of a variable; the apparent locations of these can change as the scale of a histogram is changed
mode
boxplot
r2
distribution
29. When averages are taken across different groups - they can appear to contradict the overall averages
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30. The natural tendency of randomly drawn samples to differ
ladder of powers
simulation
sampling variability
standardized value
31. A quantity or amount adopted as a standard of measurement - such as dollars - hours - or grams
spread
outlier
units
multimodal
32. The entire group of individuals or instances about whom we hope to learn
population
model
influential point
treatment
33. We do this by taking the logarithm - the square root - the reciprocal - or some other mathematical operation on all values in the data set
re-express data
representative
z-score
observational study
34. Manipulates factor levels to create treatments - randomly assigns subjects to these treatment levels - and then compares the responses of the subject groups across treatment levels
frequency table
experiment
treatment
nonresponse bias
35. This of sample size n is one in which each set of n elements in the population has an equal chance of selection
conditional distribution
undercoverage
normal model
simple random sample
36. Data points whose x-values are far from the mean of x are said to exert ____ on a linear model; with high enough ____ - residuals can appear to be deceptively small
leverage
lurking variable
block
dotplot
37. The distribution of either variable alone in a contingency table; the counts or percentages are the totals found in the margins (last row or column) of the table
sample size
prospective study
rescaling
marginal distribution
38. Doing this is equivalent to changing its units
histogram
changing center and spread
block
interquartile range
39. The experimental units assigned to a baseline treatment level - typically either the default treatment - which is well understood - or a null - placebo treatment
direction
control group
nonresponse bias
leverage
40. Uses adjacent bars to show the distribution of vales in a quantitative variable; each bar represents the frequency (or relative frequency) of values falling in an interval of values
influential point
spread
histogram
marginal distribution
41. Distributions with two modes
population parameter
case
bimodal
normal probability plot
42. A sample that consists of the entire population
single-blind
least squares
census
random assignment
43. Models random events by using random numbers to specify event outcomes with relative frequencies that correspond to the true real-world relative frequencies we are trying to model
simulation
scatterplots
area principle
sample survey
44. The specific values that the experimenter chooses for a factor
level
confounded
tails
blinding
45. Extreme values that don't appear to belong with the rest of the data
systematic sample
interquartile range
outliers
r2
46. A numerical measure of the direction and strength of a linear association
correlation
principles of experimental design
variable
response bias
47. Each predicted y-hat tends to be fewer standard deviations from its mean than its corresponding x was from its mean
convenience sample
pie chart
regression to the mean
standardizing
48. When an observed difference is too large for us to believe that is is likely to have occurred naturally
statistically significant
parameter
categorical variable
outlier
49. When doing this - consider their shape - center - and spread
bar chart
residuals
comparing distributions
response bias
50. A point that does not fit the overall pattern seen in the scatterplot
population
outlier
principles of experimental design
data