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Test your basic knowledge |
CLEP General Mathematics: Probability And Statistics
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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
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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 the probability of an event - ignoring any information about other events. The marginal probability of A is written P(A). Contrast with conditional probability.
Law of Parsimony
Variability
Interval measurements
Marginal probability
2. There are four main levels of measurement used in statistics: Each of these have different degrees of usefulness in statistical research.
nominal - ordinal - interval - and ratio
A Random vector
Ratio measurements
Count data
3. Consists of a number of independent trials repeated under identical conditions. On each trial - there are two possible outcomes.
A probability distribution
Binomial experiment
Placebo effect
The standard deviation
4. Is a process of selecting observations to obtain knowledge about a population. There are many methods to choose on which sample to do the observations.
Sampling
Random variables
Inferential statistics
Probability
5. Is the probability of two events occurring together. The joint probability of A and B is written P(A and B) or P(A - B).
Sampling
Null hypothesis
the population mean
Joint probability
6. Samples are drawn from two different populations such that there is a matching of the first sample data drawn and a corresponding data value in the second sample data.
Null hypothesis
Bias
Dependent Selection
A Distribution function
7. Statistics involve methods of organizing - picturing - and summarizing information from samples or population.
Skewness
Descriptive
Treatment
Parameter - or 'statistical parameter'
8. Some commonly used symbols for sample statistics
the population mean
Simple random sample
A probability space
the sample mean - the sample variance s2 - the sample correlation coefficient r - the sample cumulants kr.
9. Where the null hypothesis fails to be rejected and an actual difference between populations is missed giving a 'false negative'.
An Elementary event
the population cumulants
f(z) - and its cdf by F(z).
Type II errors
10. (or multivariate random variable) is a vector whose components are random variables on the same probability space.
Cumulative distribution functions
A Random vector
The standard deviation
the sample or population mean
11. Is a parameter that indexes a family of probability distributions.
Type I errors & Type II errors
the population correlation
A Statistical parameter
the population cumulants
12. Is a measure of the asymmetry of the probability distribution of a real-valued random variable. Roughly speaking - a distribution has positive skew (right-skewed) if the higher tail is longer and negative skew (left-skewed) if the lower tail is longe
Bias
Joint distribution
Mutual independence
Skewness
13. Gives the probability of events in a probability space.
A Probability measure
Sample space
An experimental study
A Statistical parameter
14. A variable describes an individual by placing the individual into a category or a group.
Qualitative variable
expected value of X
A likelihood function
Inferential statistics
15. Is denoted by - pronounced 'x bar'.
An Elementary event
Confounded variables
Conditional probability
The arithmetic mean of a set of numbers x1 - x2 - ... - xn
16. Summarize the population data by describing what was observed in the sample numerically or graphically. Numerical descriptors include mean and standard deviation for continuous data types (like heights or weights) - while frequency and percentage are
the population variance
Prior probability
A random variable
Descriptive statistics
17. Is defined as the expected value of random variable (X -
P-value
Experimental and observational studies
The variance of a random variable
The Covariance between two random variables X and Y - with expected values E(X) =
18. (or atomic event) is an event with only one element. For example - when pulling a card out of a deck - 'getting the jack of spades' is an elementary event - while 'getting a king or an ace' is not.
Simulation
Seasonal effect
An Elementary event
covariance of X and Y
19. A group of individuals sharing some common features that might affect the treatment.
Statistics
Statistic
Independent Selection
Block
20. ?r
Parameter - or 'statistical parameter'
Conditional distribution
the population cumulants
Statistical adjustment
21. Are written in corresponding lower case letters. For example x1 - x2 - ... - xn could be a sample corresponding to the random variable X.
An Elementary event
quantitative variables
Simpson's Paradox
Particular realizations of a random variable
22. In number theory - scatter plots of data generated by a distribution function may be transformed with familiar tools used in statistics to reveal underlying patterns - which may then lead to
hypotheses
Correlation coefficient
Sampling frame
Individual
23. Can be - for example - the possible outcomes of a dice roll (but it is not assigned a value). The distribution function of a random variable gives the probability of different results. We can also derive the mean and variance of a random variable.
Inferential statistics
descriptive statistics
A random variable
Sampling Distribution
24. A list of individuals from which the sample is actually selected.
Independence or Statistical independence
categorical variables
Simulation
Sampling frame
25. When you have two or more competing models - choose the simpler of the two models.
Observational study
Inferential
Law of Parsimony
Posterior probability
26. (pdfs) and probability mass functions are denoted by lower case letters - e.g. f(x).
The median value
Sampling Distribution
Probability density functions
covariance of X and Y
27. There are two major types of causal statistical studies: In both types of studies - the effect of differences of an independent variable (or variables) on the behavior of the dependent variable are observed. The difference between the two types lies
Block
The sample space
experimental studies and observational studies.
Credence
28. Where the null hypothesis is falsely rejected giving a 'false positive'.
Ratio measurements
Block
Type I errors
Residuals
29. Failing to reject a false null hypothesis.
Type 2 Error
Average and arithmetic mean
A sampling distribution
Inferential
30. In the long run - as the sample size increases - the relative frequencies of outcomes approach to the theoretical probability.
A Random vector
Experimental and observational studies
Law of Large Numbers
Nominal measurements
31. (also called statistical variability) is a measure of how diverse some data is. It can be expressed by the variance or the standard deviation.
A probability density function
Valid measure
Likert scale
Statistical dispersion
32. 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}.
Bias
The sample space
P-value
Probability and statistics
33. (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
Law of Large Numbers
s-algebras
A likelihood function
The average - or arithmetic mean
34. Given two random variables X and Y - the joint distribution of X and Y is the probability distribution of X and Y together.
Ordinal measurements
An experimental study
Null hypothesis
Joint distribution
35. Have meaningful distances between measurements defined - but the zero value is arbitrary (as in the case with longitude and temperature measurements in Celsius or Fahrenheit)
Seasonal effect
Estimator
Independent Selection
Interval measurements
36. Some commonly used symbols for population parameters
hypothesis
descriptive statistics
the population mean
Valid measure
37. Uses patterns in the sample data to draw inferences about the population represented - accounting for randomness. These inferences may take the form of: answering yes/no questions about the data (hypothesis testing) - estimating numerical characteris
Dependent Selection
Inferential statistics
variance of X
An event
38. A measurement such that the random error is small
Kurtosis
The sample space
Simulation
Reliable measure
39. (cdfs) are denoted by upper case letters - e.g. F(x).
Count data
Cumulative distribution functions
Coefficient of determination
The sample space
40. Working from a null hypothesis two basic forms of error are recognized:
Type I errors & Type II errors
Correlation coefficient
Seasonal effect
A probability distribution
41. Have imprecise differences between consecutive values - but have a meaningful order to those values
Type 2 Error
Ordinal measurements
Interval measurements
Residuals
42. (or expectation) of a random variable is the sum of the probability of each possible outcome of the experiment multiplied by its payoff ('value'). Thus - it represents the average amount one 'expects' to win per bet if bets with identical odds are re
The Expected value
Law of Parsimony
Simulation
Divide the sum by the number of values.
43. 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
Ratio measurements
Binary data
Likert scale
A Distribution function
44. 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.
Conditional distribution
categorical variables
hypothesis
Statistical inference
45. To find the average - or arithmetic mean - of a set of numbers:
Statistical adjustment
Conditional probability
Divide the sum by the number of values.
Skewness
46. To prove the guiding theory further - these predictions are tested as well - as part of the scientific method. If the inference holds true - then the descriptive statistics of the new data increase the soundness of that
Cumulative distribution functions
the population correlation
An estimate of a parameter
hypothesis
47. Is one that explores the correlation between smoking and lung cancer. This type of study typically uses a survey to collect observations about the area of interest and then performs statistical analysis. In this case - the researchers would collect o
The median value
Estimator
A Statistical parameter
Observational study
48. Cov[X - Y] :
That value is the median value
Law of Large Numbers
covariance of X and Y
The sample space
49. Is data that can take only two values - usually represented by 0 and 1.
Type 2 Error
Binary data
Skewness
Placebo effect
50. Describes a characteristic of an individual to be measured or observed.
Sampling Distribution
Variable
The arithmetic mean of a set of numbers x1 - x2 - ... - xn
Law of Large Numbers