AP Stats Probability Vocab
Bernoulli Trial
a random experiment with exactly two possible outcomes, "success" and "failure", in which the probability of success is the same every time the experiment is conducted.
Continuous Random Variable
can take on any value within a range of values.
Discrete Random Variable
discrete variables can take on only certain values
Dependent events
he probability of one event occurring influences the likelihood of the other event.
Variance
measures how far each number in the set is from the mean
10% Condition
states that sample sizes should be no more than 10% of the population
Theoretical Probability
the number of ways that the event can occur, divided by the total number of outcomes.
Independent events
the probability that one event occurs in no way affects the probability of the other event occurring
Empirical Probability
the ratio of the number of outcomes in which a specified event occurs to the total number of trials, not in a theoretical sample space but in an actual experiment.
Complement Rule
the sum of the probabilities of an event and its complement must equal 1
Geometric Probability Model
a kind of discrete probability distribution that applies to Bernoulli trials when you try, and try, and try again until you get a success
Probability Model
a mathematical representation of a random phenomenon.
Expected Value
a predicted value of a variable, calculated as the sum of all possible values each multiplied by the probability of its occurrence.
Standard Deviation
a quantity calculated to indicate the extent of deviation for a group as a whole.
Normal Model
A probability distribution that plots all of its values in a symmetrical fashion and most of the results are situated around the probability's mean
Sample Space
A set of elements that represents all possible outcomes of a statistical experiment
Event
A subset of a sample space - one or more sample points .
Binomial Model
An experiment with a fixed number of independent trials, each of which can only have two possible outcomes.
Outcome
An individual result of a component of a simulation
Tree diagram
Diagram used to calculate the probability of outcomes occurring
Law of Large Numbers
The idea that the relative frequency of an event will converge on the probability of the event, as the number of trials increases
Conditional Probability
The probability that Event A occurs, given that Event B has occurred
Multiplication Rule
The probability that Events A and B both occur is equal to the probability that Event A occurs times the probability that Event B occurs, given that A has occurred.
Success/Failure Condition
The sample size must be large enough so that we can expect at least 10 "successes" and 10 "failures".
Trial
The sequence of several components representing events that we are pretending will take place
Mutually exclusive/disjoint events
Two events are disjoint if they cannot occur simultaneously.
Random variable
When the value of a variable is determined by a chance event
Addition Rule
When two events, A and B, are mutually exclusive, the probability that A or B will occur is the sum of the probability of each event