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Conditional probability
In probability theory, a conditional
probability measures the
probability of an event given that
(by assumption, presumption,
assertion or evidence) another
event has occurred.
For example, the
probability that any
given person has a
cough on any given day
may be only 5%.
But if we know or
assume that the person
has a cold, then they
are much more likely to
be coughing.
The conditional
probability of coughing
given that you have a
cold might be a much
higher 75%.
If the event of interest is A and the
event B is known or assumed to
have occurred, "the conditional
probability of A given B", or "the
probability of A under the
condition B", is usually written as
P(A|B), or sometimes PB(A).
The concept of conditional probability is one of
the most fundamental and one of the most
important concepts in probability theory. But
conditional probabilities can be quite slippery
and require careful interpretation. For example,
there need not be a causal or temporal
relationship between A and B.
In general P(A|B)
is not equal to
P(B|A).
For example, if you have cancer
you might have a 90% chance of
testing positive for cancer, but if
you test positive for cancer you
might have only a 10% of actually
having cancer because cancer is
very rare.
Falsely equating the
two probabilities
causes various errors of
reasoning such as the
base rate fallacy.
Conditional
probabilities can be
correctly reversed
using Bayes' Theorem.
P(A|B) (the conditional probability
of A given B) may or may not be
equal to P(A) (the unconditional
probability of A). If P(A|B) = P(A), A
and B are said to be independent.