Probability and Statistics
This discipline is an introduction to the study of probability, interpretation of data, and fundamental statistical problem solving. Mastery of this academic content will provide students with a solid foundation in probability and facility in processing statistical information.
1.0 Students
know the definition of the notion of independent
events and
can use the rules for addition, multiplication, and complementation to
solve
for probabilities of particular events in finite sample spaces.
2.0 Students
know the definition of conditional
probability and
use it to solve for probabilities in finite sample spaces.
3.0 Students
demonstrate an understanding of the notion of discrete
random variables by
using them to solve for the probabilities of outcomes,
such as the probability of the occurrence of five heads in 14 coin
tosses.
4.0 Students
are familiar with the standard distributions
(normal, binomial, and exponential) and can use them to solve for
events in
problems in which the distribution belongs to those families.
5.0 Students
determine the mean and the standard deviation of
a normally distributed random variable.
6.0 Students
know the definitions of the mean,
median, and
mode
of
a distribution of data and can compute each in
particular situations.
7.0 Students
compute the variance and the standard deviation
of a distribution of data.
8.0 Students
organize and describe distributions of data by
using a number of different methods, including frequency tables,
histograms,
standard line and bar graphs, stem-and-leaf displays, scatterplots, and
box-and-whisker plots.
Advanced Placement Probability and Statistics
This discipline is a technical and in-depth extension of probability and statistics. In particular, mastery of academic content for advanced placement gives students the background to succeed in the Advanced Placement examination in the subject.
1.0 Students
solve probability problems with finite sample
spaces by using the rules for addition, multiplication, and
complementation for
probability distributions and understand the simplifications that arise
with
independent events.
2.0 Students
know the definition of conditional
probability and
use it to solve for probabilities in finite sample spaces.
3.0 Students
demonstrate an understanding of the notion of discrete
random variables by
using this concept to solve for the probabilities of
outcomes, such as the probability of the occurrence of five or fewer
heads in
14 coin tosses.
4.0 Students
understand the notion of a continuous
random variable and
can interpret the probability of an outcome as the
area of a region under the graph of the probability density function
associated
with the random variable.
5.0 Students
know the definition of the mean
of a discrete random variable and
can determine the mean for a particular discrete
random variable.
6.0 Students
know the definition of the variance
of a discrete random variable and
can determine the variance for a particular discrete
random variable.
7.0 Students
demonstrate an understanding of the standard
distributions (normal, binomial, and exponential) and can use the
distributions
to solve for events in problems in which the distribution belongs to
thoe
families.
8.0 Students
determine the mean and the standard deviation of
a normally distributed random variable.
9.0 Students
know the central limit theorem and can use it to
obtain approximations for probabilities in problems of finite sample
spaces in
which the probabilities are distributed binomially.
10.0 Students
know the definitions of the mean,
median, and
mode
of distribution of
data and can compute each of them in particular
situations.
11.0 Students
compute the variance and the standard deviation
of a distribution of data.
12.0 Students
find the line of best fit to a given distribution
of data by using least squares regression.
13.0 Students
know what the correlation
coefficient of two variables means
and are familiar with the coefficient’s properties.
14.0 Students
organize and describe distributions of data by
using a number of different methods, including frequency tables,
histograms,
standard line graphs and bar graphs, stem-and-leaf displays,
scatterplots, and
box-and-whisker plots.
15.0 Students
are familiar with the notions of a statistic of a
distribution of values, of the sampling distribution of a statistic,
and of the
variability of a statistic.
16.0 Students
know basic facts concerning the relation between
the mean and the standard deviation of a sampling distribution and the
mean and
the standard deviation of the population distribution.
17.0 Students
determine confidence intervals for a simple
random sample from a normal distribution of data and determine the
sample size
required for a desired margin of error.
18.0 Students
determine the P-value
for a statistic for a simple random sample from a
normal distribution.
19.0 Students
are familiar with the chi-square
distribution and chi-square
test and understand their uses.