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Test your basic knowledge |
AP Statistics Vocab
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Subjects
:
statistics
,
ap
Instructions:
Answer 50 questions in 15 minutes.
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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. 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
influential point
quartile
68-95-99.7 rule
normal model
2. A normal model with a mean of 0 and a standard deviation of 1
interquartile range
matched
standard normal model
contingency table
3. Ideally tells who was measured - what was measured - how the data were collected - where the data were collected - and when and why the study was performed
mean
context
standardizing
random assignment
4. Found by summing all the data values and dividing by the count
model
sampling variability
mean
data table
5. The sequence of several components representing events that we are pretending will take place
randomization
regression to the mean
sampling variability
trial
6. A sample is this if the statistics computed from it accurately reflect the corresponding population parameters
simple random sample
form
representative
data
7. Bias introduced to a sample when a large fraction of those sampled fails to respond
nonresponse bias
double-blind
median
simulation component
8. This criterion specifies the unique line that minimizes the variance of the residuals or - equivalently - the sum of the squared residuals
least squares
spread
marginal distribution
response
9. In a retrospective or prospective study Subjects who are similar in ways not under study may be ____ and then compared with each other on the variables of interest
matched
slope
categorical variable
bar chart
10. Tells how many standard deviations a value is from the mean; have a mean of zero and a standard deviation of one
median
z-score
unimodal
data table
11. The specific values that the experimenter chooses for a factor
completely randomized design
placebo
level
randomization
12. A scatterplot shows an association that is this if there is little scatter around the underlying relationship
parameter
regression line
skewed
strength
13. The ____ we care about most is straight
placebo
blinding
form
predicted value
14. Graphs a dot for each case against a single axis
statistically significant
center
dotplot
influential point
15. The difference between the first and third quartiles
sampling frame
interquartile range
predicted value
standardized value
16. Any data point that stands away from the others; can be extraordinary by having a large residual or by having high leverage
outlier
frequency table
experiment
predicted value
17. Shows quantitative data values in a way that sketches the distribution of the data
stem-and-leaf display
nonresponse bias
histogram
frequency table
18. Multiplying each data value by a constant multiplies both the measures of position and the measures of spread by that constant
lurking variable
rescaling
frequency table
statistically significant
19. To describe this aspect of a distribution - look for single vs. multiple modes - and symmetry vs. skewness
systematic sample
shape
standard normal model
bias
20. Anything in a survey design that influences response
response bias
normal probability plot
random assignment
observational study
21. Holds information about the same characteristic for many cases
units
parameter
form
variable
22. Consists of the minimum and maximum - the quartiles Q1 and Q3 - and the median
response bias
5-number summary
simulation
leverage
23. 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
matching
5-number summary
histogram
census
24. A numerical measure of the direction and strength of a linear association
predicted value
shifting
randomization
correlation
25. Doing this is equivalent to changing its units
prospective study
changing center and spread
mode
68-95-99.7 rule
26. The linear equation y-hat = b0 + b1x that satisfies the least squares criterion
spread
random assignment
regression line
categorical variable
27. The sum of squared deviations from the mean - divided by the count minus one
normal percentile
completely randomized design
treatment
variance
28. An individual result of a component of a simulation
matched
sampling variability
timeplot
outcome
29. When an observed difference is too large for us to believe that is is likely to have occurred naturally
quartile
simple random sample
statistically significant
timeplot
30. Shows how a 'whole' divides into categories by showing a wedge of a circle whose area corresponds to the proportion in each category
sampling variability
treatment
normal probability plot
pie chart
31. When either those who could influence or evaluate the results is blinded
conditional distribution
sampling frame
re-express data
single-blind
32. Shows a bar representing the count of each category in a categorical variable
normal probability plot
bar chart
matching
confounded
33. Adding a constant to each data value adds the same constant to the mean - the median - and the quartiles - but does not change the standard deviation or IQR
outliers
mode
variance
shifting
34. Consists of the individuals who are conveniently available
contingency table
case
outliers
convenience sample
35. A list of individuals from whom the sample is drawn
tails
sampling frame
control group
variance
36. Distributions with more than two modes
outlier
multimodal
simulation component
stem-and-leaf display
37. 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
voluntary response bias
experiment
response variable
shifting
38. Bias introduced to a sample when individuals can choose on their own whether to participate in the sample
simulation
voluntary response bias
spread
placebo effect
39. This of sample size n is one in which each set of n elements in the population has an equal chance of selection
simple random sample
quantitative variable
sampling frame
confounded
40. A variable that is not explicitly part of a model but affects the way the variables in the model appear to be related
marginal distribution
prospective study
lurking variable
68-95-99.7 rule
41. Extreme values that don't appear to belong with the rest of the data
outliers
direction
observational study
boxplot
42. A distribution that's roughly flat
interquartile range
outlier
uniform
categorical variable
43. A numerically valued attribute of a model for a population
principles of experimental design
pie chart
mode
population parameter
44. When omitting a point from the data results in a very different regression model - the point is an ____
distribution
influential point
distribution
placebo
45. An observational study in which subjects are followed to observe future outcomes
prospective study
standard deviation
census
symmetric
46. A sampling design in which entire groups are chosen at random
prospective study
observational study
categorical variable
cluster sample
47. Any attempt to force a sample to resemble specified attributes of the population
double-blind
rescaling
bimodal
matching
48. Value found by subtracting the mean and dividing by the standard deviation
stem-and-leaf display
outlier
randomization
standardized value
49. Displays the 5-number summary as a central box with whiskers that extend to the non-outlying data values
blinding
response variable
boxplot
leverage
50. The parts of a distribution that typically trail off on either side; they can be characterized as long or short
extrapolation
categorical variable
tails
timeplot
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