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Test your basic knowledge |
CLEP General Mathematics: Probability And Statistics
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Subjects
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clep
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math
Instructions:
Answer 50 questions in 15 minutes.
If you are not ready to take this test, you can
study here
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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. Is a typed measurement - it can be a boolean value - a real number - a vector (in which case it's also called a data vector) - etc.
A data point
Variable
The Range
Statistical inference
2. Var[X] :
variance of X
Descriptive
Lurking variable
A Random vector
3. In the long run - as the sample size increases - the relative frequencies of outcomes approach to the theoretical probability.
Variability
Type I errors & Type II errors
Law of Large Numbers
Confounded variables
4. Any specific experimental condition applied to the subjects
methods of least squares
Independent Selection
Treatment
A sample
5. Is the length of the smallest interval which contains all the data.
Count data
The Range
Statistical inference
Bias
6. Cov[X - Y] :
P-value
variance of X
Placebo effect
covariance of X and Y
7. Is its expected value. The mean (or sample mean of a data set is just the average value.
Sampling Distribution
the sample mean - the sample variance s2 - the sample correlation coefficient r - the sample cumulants kr.
The Range
The Mean of a random variable
8. Is a measure of the 'peakedness' of the probability distribution of a real-valued random variable. Higher kurtosis means more of the variance is due to infrequent extreme deviations - as opposed to frequent modestly sized deviations.
Law of Parsimony
Kurtosis
Statistical adjustment
Quantitative variable
9. Is data that can take only two values - usually represented by 0 and 1.
A random variable
Binary data
Qualitative variable
Prior probability
10. A subjective estimate of probability.
The sample space
Step 2 of a statistical experiment
Credence
Simple random sample
11. Is the set of possible outcomes of an experiment. For example - the sample space for rolling a six-sided die will be {1 - 2 - 3 - 4 - 5 - 6}.
The sample space
quantitative variables
The Expected value
Step 2 of a statistical experiment
12. Is inference about a population from a random sample drawn from it or - more generally - about a random process from its observed behavior during a finite period of time.
Statistical inference
Parameter
f(z) - and its cdf by F(z).
Binary data
13. Describes the spread in the values of the sample statistic when many samples are taken.
Inferential statistics
Binary data
A random variable
Variability
14. Rejecting a true null hypothesis.
hypothesis
Probability
Observational study
Type 1 Error
15. When there is an even number of values...
Kurtosis
Sampling frame
A random variable
That is the median value
16. The proportion of the explained variation by a linear regression model in the total variation.
Interval measurements
Ratio measurements
Coefficient of determination
Lurking variable
17. Descriptive statistics and inferential statistics (a.k.a. - predictive statistics) together comprise
applied statistics
Valid measure
Trend
The arithmetic mean of a set of numbers x1 - x2 - ... - xn
18. (e.g. ? - b) are commonly used to denote unknown parameters (population parameters).
Greek letters
Reliable measure
Outlier
A data set
19. When you have two or more competing models - choose the simpler of the two models.
Estimator
Descriptive
A probability density function
Law of Parsimony
20. (also called statistical variability) is a measure of how diverse some data is. It can be expressed by the variance or the standard deviation.
the sample mean - the sample variance s2 - the sample correlation coefficient r - the sample cumulants kr.
Statistical dispersion
expected value of X
Statistics
21. Have imprecise differences between consecutive values - but have a meaningful order to those values
Bias
Ordinal measurements
The average - or arithmetic mean
Reliable measure
22. A data value that falls outside the overall pattern of the graph.
Sampling
Conditional probability
Bias
Outlier
23. The objects described by a set of data: person (animal) - place - and - thing. (SUBJECTS)
Parameter - or 'statistical parameter'
expected value of X
Individual
Bias
24. To find the average - or arithmetic mean - of a set of numbers:
Divide the sum by the number of values.
A data point
Kurtosis
quantitative variables
25. Two variables such that their effects on the response variable cannot be distinguished from each other.
Conditional probability
Confounded variables
Step 3 of a statistical experiment
Interval measurements
26. A scale that represents an ordinal scale such as looks on a scale from 1 to 10.
Credence
Variable
A statistic
Likert scale
27. Statistical methods can be used for summarizing or describing a collection of data; this is called
Correlation coefficient
descriptive statistics
Binary data
A random variable
28. Patterns in the data may be modeled in a way that accounts for randomness and uncertainty in the observations - and are then used for drawing inferences about the process or population being studied; this is called
Parameter - or 'statistical parameter'
Individual
Divide the sum by the number of values.
inferential statistics
29. Given two jointly distributed random variables X and Y - the conditional probability distribution of Y given X (written 'Y | X') is the probability distribution of Y when X is known to be a particular value.
Conditional distribution
Bias
categorical variables
A sampling distribution
30. A numerical facsimilie or representation of a real-world phenomenon.
A sampling distribution
Sampling frame
hypothesis
Simulation
31. The collection of all possible outcomes in an experiment.
categorical variables
Posterior probability
Confounded variables
Sample space
32. (or just likelihood) is a conditional probability function considered a function of its second argument with its first argument held fixed. For example - imagine pulling a numbered ball with the number k from a bag of n balls - numbered 1 to n. Then
the population correlation
A likelihood function
Parameter - or 'statistical parameter'
Statistic
33. A variable that has an important effect on the response variable and the relationship among the variables in a study but is not one of the explanatory variables studied either because it is unknown or not measured.
A Random vector
hypotheses
Lurking variable
The Expected value
34. Is used to describe probability in a continuous probability distribution. For example - you can't say that the probability of a man being six feet tall is 20% - but you can say he has 20% of chances of being between five and six feet tall. Probabilit
hypothesis
Probability density
Atomic event
Step 1 of a statistical experiment
35. Have both a meaningful zero value and the distances between different measurements defined; they provide the greatest flexibility in statistical methods that can be used for analyzing the data
Average and arithmetic mean
Standard error
That value is the median value
Ratio measurements
36. Is the study of the collection - organization - analysis - and interpretation of data. It deals with all aspects of this - including the planning of data collection in terms of the design of surveys and experiments.
Valid measure
Statistics
Correlation
An Elementary event
37. Is a sample and the associated data points.
Estimator
Quantitative variable
A sample
A data set
38. Given two random variables X and Y - the joint distribution of X and Y is the probability distribution of X and Y together.
Joint distribution
Pairwise independence
Lurking variable
Divide the sum by the number of values.
39. Performing the experiment following the experimental protocol and analyzing the data following the experimental protocol. 4. Further examining the data set in secondary analyses - to suggest new hypotheses for future study. 5. Documenting and present
Inferential statistics
A sampling distribution
Step 3 of a statistical experiment
Outlier
40. A measurement such that the random error is small
observational study
Simpson's Paradox
Reliable measure
Joint probability
41. Another name for elementary event.
Nominal measurements
Step 1 of a statistical experiment
Atomic event
Step 3 of a statistical experiment
42. A consistent - repeated deviation of the sample statistic from the population parameter in the same direction when many samples are taken.
descriptive statistics
Descriptive
Bias
Step 1 of a statistical experiment
43. Is a set of entities about which statistical inferences are to be drawn - often based on random sampling. One can also talk about a population of measurements or values.
expected value of X
A data point
hypothesis
A population or statistical population
44. Is the probability of an event - ignoring any information about other events. The marginal probability of A is written P(A). Contrast with conditional probability.
Sample space
Sampling frame
Marginal probability
Variability
45. Is a subset of the sample space - to which a probability can be assigned. For example - on rolling a die - 'getting a five or a six' is an event (with a probability of one third if the die is fair).
variance of X
Bias
An event
A statistic
46. Are two related but separate academic disciplines. Statistical analysis often uses probability distributions - and the two topics are often studied together. However - probability theory contains much that is of mostly of mathematical interest and no
The variance of a random variable
Probability and statistics
Inferential statistics
Individual
47. (pdfs) and probability mass functions are denoted by lower case letters - e.g. f(x).
Correlation coefficient
Inferential statistics
Probability density functions
Cumulative distribution functions
48. Because variables conforming only to nominal or ordinal measurements cannot be reasonably measured numerically - sometimes they are grouped together as
Type II errors
f(z) - and its cdf by F(z).
Type I errors
categorical variables
49. Some commonly used symbols for population parameters
A likelihood function
That value is the median value
methods of least squares
the population mean
50. A common goal for a statistical research project is to investigate causality - and in particular to draw a conclusion on the effect of changes in the values of predictors or independent variables on dependent variables or response.
Experimental and observational studies
Joint distribution
Descriptive statistics
Sampling